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Review

Revolutionizing Vaccine Development for COVID-19: A Review of AI-Based Approaches

by
Aritra Ghosh
*,
Maria M. Larrondo-Petrie
and
Mirjana Pavlovic
Department of Electrical Engineering and Computer Science, Florida Atlantic University, Boca Raton, FL 33431, USA
*
Author to whom correspondence should be addressed.
Information 2023, 14(12), 665; https://doi.org/10.3390/info14120665
Submission received: 7 November 2023 / Revised: 13 December 2023 / Accepted: 14 December 2023 / Published: 18 December 2023
(This article belongs to the Special Issue Multi-Modal Biomedical Data Science—Modeling and Analysis)

Abstract

:
The evolvement of COVID-19 vaccines is rapidly being revolutionized using artificial intelligence-based technologies. Small compounds, peptides, and epitopes are collected to develop new therapeutics. These substances can also guide artificial intelligence-based modeling, screening, or creation. Machine learning techniques are used to leverage pre-existing data for COVID-19 drug detection and vaccine advancement, while artificial intelligence-based models are used for these purposes. Models based on artificial intelligence are used to evaluate and recognize the best candidate targets for future therapeutic development. Artificial intelligence-based strategies can be used to address issues with the safety and efficacy of COVID-19 vaccine candidates, as well as issues with manufacturing, storage, and logistics. Because antigenic peptides are effective at eliciting immune responses, artificial intelligence algorithms can assist in identifying the most promising COVID-19 vaccine candidates. Following COVID-19 vaccination, the first phase of the vaccine-induced immune response occurs when major histocompatibility complex (MHC) class II molecules (typically bind peptides of 12–25 amino acids) recognize antigenic peptides. Therefore, AI-based models are used to identify the best COVID-19 vaccine candidates and ensure the efficacy and safety of vaccine-induced immune responses. This study explores the use of artificial intelligence-based approaches to address logistics, manufacturing, storage, safety, and effectiveness issues associated with several COVID-19 vaccine candidates. Additionally, we will evaluate potential targets for next-generation treatments and examine the role that artificial intelligence-based models can play in identifying the most promising COVID-19 vaccine candidates, while also considering the effectiveness of antigenic peptides in triggering immune responses. The aim of this project is to gain insights into how artificial intelligence-based approaches could revolutionize the development of COVID-19 vaccines and how they can be leveraged to address challenges associated with vaccine development. In this work, we highlight potential barriers and solutions and focus on recent improvements in using artificial intelligence to produce COVID-19 drugs and vaccines, as well as the prospects for intelligent training in COVID-19 treatment discovery.

1. Introduction

Millions of people have died because of the COVID-19 epidemic, and economies have been severely damaged. The creation of a secure and reliable vaccination is essential to stopping the virus’s spread and preserving human life. Artificial intelligence (AI) has shown great promise as a tool for streamlining the process and improving vaccination efficacy in the field of vaccine development. In this review, we will look at the methods that are being used, the future research prospects, and the potential benefits and drawbacks of AI-based methodologies for the development of the COVID-19 vaccine.
Artificial intelligence (AI) is the application of computer algorithms to tasks that normally require human intelligence, such as pattern recognition, learning, and decision making. AI can be used in vaccine development to evaluate large datasets, identify potential vaccine targets, and forecast the efficacy of vaccine candidates [1]. The potential benefits of AI-based approaches include faster development times, improved accuracy, and scalability. AI can also help to reduce costs and improve the safety of vaccines by identifying potential adverse effects before clinical trials.
AI-based strategies for COVID-19 vaccine development include in silico modeling for vaccine design and optimization, machine learning algorithms for predicting antigenic epitopes, and AI-based genetic sequencing and analysis [2]. Machine learning algorithms can analyze large viral protein datasets to determine which ones are most likely to elicit an immune response. In silico modeling can be used to design and optimize vaccine candidates based on their predicted efficacy and safety profiles. Genetic sequencing and analysis using AI-based tools can help to identify mutations in the virus that may affect vaccine efficacy and inform the design of new vaccines.
AI-based methods can help with the development of COVID-19 vaccines because they are scalable, accurate, and fast. AI can analyze large datasets much faster than humans, accurately identifying potential vaccine targets and efficiently scale up production. AI-based methods do have certain drawbacks, though, like the requirement for high-quality data and the possibility of biases in AI algorithms. For example, AI algorithms may be biased towards certain populations or may not account for all potential variables in vaccine development. Future research should focus on addressing these limitations and optimizing the use of AI-based approaches for vaccine development.
In conclusion, AI-based approaches offer new opportunities for revolutionizing vaccine development for COVID-19. These approaches can accelerate the process, improve accuracy, and reduce costs. To guarantee the security and effectiveness of vaccines, there are, nevertheless, certain restrictions that must be met. To mature safe and efficient vaccines for COVID-19 and other infectious diseases, future research should concentrate on maximizing the application of AI-based techniques and combining them with conventional vaccine development methodologies. This paper, however, offers a data science viewpoint on AI’s role in the pandemic response and suggests future directions for research and development.

2. Different AI-Based Algorithms for COVID-19 Vaccine Development

2.1. Network-Based Algorithms

Network-based algorithms have become increasingly essential in vaccine development. To predict possible epitopes, these algorithms employ methods like deep neural networks, gradient boosting decision trees, and artificial neural networks [3]. MARIA and NetMHCPan4 are two examples of these vaccine development algorithms [3]. SARS-CoV-2 T-cell and B-cell epitopes have been identified using network-based algorithms [3]. Vaxign-ML is a machine learning tool that uses network-based algorithms to rank non-structural proteins as potential SARS-CoV-2 vaccine candidates [3]. Machine learning models for the development of the COVID-19 vaccine have also used network-based algorithms [3]. These algorithms were used to identify stable binding SARS-CoV-2 epitopes with high prediction binding scores that can bind to HLA allotypes [3]. Using these techniques, researchers can gain a better understanding of the virus and create vaccines that are more effective at preventing its spread.
Network-based algorithms are a promising avenue for COVID-19 vaccine development. This is due to stochastic computational simulations demonstrating that network structure has a significant impact on disease spread [4]. As a result of using network-based algorithms, researchers can gain a better understanding of the COVID-19 spread process as well as prevention strategies. Simulations show that the “Ring of Vaccination” approach, for example, would vaccinate a large proportion of the population while preventing new COVID-19 waves [4]. Furthermore, the dynamics of the COVID-19 pandemic in various countries can be recapitulated using various network models [4]. Through the application of network-based algorithms in vaccine development, scientists can learn more about the transmission of COVID-19 and create vaccines that are more successful in halting the disease’s spread. Given the current pandemic, which has harmed millions of people globally and continues to pose a serious threat to public health, this is especially crucial.
One of the major challenges in developing a COVID-19 vaccine is the complex network structure of the virus and the human body. Several network-based algorithms have been proposed for drug and vaccine development [5], such as the novel network-based algorithm used in this study for drug discovery and development [6]. A multilayer network-based approach allows for simple, unambiguous modeling of complex systems, but it can be computationally intensive [7]. In addition, there is a global race to develop appropriate vaccines due to a dearth of potent medications and vaccines [4,5]. Traditional machine learning-based image classification algorithms can also be limited in their ability to aid in vaccine development [8]. Although several COVID-19 vaccines are now available, there is still a need for further research and clinical trials to develop a searchable drug repository and a better understanding of the disease. The development of new vaccines usually takes ten years; however, by enhancing our mechanistic and network-based understanding of disease, network-based algorithms may be able to shorten this time [9]. To investigate the efficacy of various vaccination approaches and stop fresh waves of COVID-19 infections, the epidemiological network model utilized in this work may prove to be a useful instrument [10]. However, there are still many issues that need to be resolved before network-based algorithms can significantly contribute to the creation of COVID-19 vaccines and treatments.

2.2. Expression-Based Algorithms

Expression-based algorithms are vital in vaccine development, as they optimize the immunogenicity and expression of the vaccine by enhancing the sequence to increase its efficacy and safety [11]. One expression-based technique that is frequently used in the development of mRNA vaccines to increase stability, safety, and efficacy is codon optimization [12]. The balance between host tRNA availability and codon usage frequency is adjusted to achieve this optimization, which improves translation efficiency and target antigen in vivo expression [12]. Additionally, if codon optimization is modified to account for the preference of skeletal muscle, intramuscular injections of mRNA vaccines can improve the immune response [12]. With just a few clicks, scientists can create a better sequence using a variety of online codon optimization tools and algorithms that are available for various research applications [12,13]. However, some of these optimization algorithms may have shortcomings, as seen with BioNTech and Moderna’s algorithms [12]. Expression-based algorithms can also be used to optimize mRNA sequences for production and expression in vaccine development [13]. For example, a baculovirus expression system and insect cells can be used to produce recombinant vaccines. Using the Sf9 insect cell expression system, this system was utilized to create the modified S protein found in the NVX-CoV2373 vaccine [11]. Recombinant S protein and RBD vaccines are made using expression-based algorithms, while protein subunit vaccines are likewise based on systemically expressed viral proteins or peptides using diverse cell-expressing systems [11]. Moreover, two residues (K986 and V987) can be changed to proline to stabilize the pre-fusion conformation of S protein [11]. Expression-based algorithms can also be used in quality control steps of vaccine development to ensure optimal expression and efficacy.
Developing a COVID-19 vaccine that is both safe and effective remains a major challenge. One vaccine based on the DNA platform and two vaccines based on the mRNA platform have currently been approved for widespread use [14]. Even though many DNA and mRNA vaccines against COVID-19 are in preclinical and clinical trials, the use of expression-based algorithms in vaccine development is still limited. Despite the use of machine learning, rational COVID-19 vaccine development is still dependent on understanding the fundamental host-coronavirus interactions and protective immune mechanisms. Vaccine development outcomes may differ depending on the experimental setting [15]. Through research, six proteins were discovered, including S protein and five non-structural proteins, which are adhesins and are crucial for host invasion and virus adhesion [15]. COVID-19 vaccine candidates were predicted using the reverse vaccinology tools Vaxign and Vaxign-ML [15]. The S, nsp3, and nsp8 proteins are expected to induce highly protective antigenicity; however, vaccine candidates developed using these proteins may suffer from safety issues and incomplete induction of protection [15]. The nsp3 protein was chosen for further study because it has not been examined in any coronavirus vaccine trials [15]. The MAC1 domain of the nsp3 protein has sequence homology with the human single ADP-ribosyltransferase PARP14, even though the entire virus as well as the S protein nucleocapsid are proteins and vaccine development against SARS and MERS tested membrane proteins [15]. Furthermore, viral adhesion proteins can activate T cells or cause autoreactions with self-antigens, reducing host reactivity to viruses [15]. Therefore, in addition to antigenicity, safety is also crucial for the development of COVID-19 vaccines [15]. Additionally, vaccination may pose safety risks that cannot be assessed by machine learning [15].
The development of COVID-19 vaccines, including those using expression-based algorithms, owes much to artificial intelligence and machine learning algorithms. Sharma noted that clinical trials developing COVID-19 vaccines and drugs benefit from the use of artificial intelligence-based models [16]. To rationally develop a COVID-19 vaccine, Ong explained how to apply reverse vaccinology and machine learning [15]. A vaccine created using an expression-based algorithm is Janssen’s COV-2-S vaccine, which uses a modified S protein of the Ad26 expression gene [11]. To develop a COVID-19 vaccine, Fang and colleagues developed a unique two-part vector system using taRNA containing a trans-replicon expression algorithm [12]. Furthermore, Magazino et al. studied the impact of vaccination on COVID-19 mortality using machine learning algorithms [17]. Amri et al. used an algorithm to compare the immunogenicity of full-length S-type and S1-type MERS-CoV vaccines to assess vaccine effectiveness [18]. Overall, these studies suggest that the development of COVID-19 vaccines, including those produced using expression-based algorithms, benefits from the application of artificial intelligence and machine learning algorithms.

2.3. Integrated Docking Simulation Algorithms

An effective method for anticipating how ligands will interact with target proteins is to use integrated docking simulation algorithms. These algorithms obtain precise predictions of molecular interactions by utilizing virtual screening and multiple docking tools [19]. Integrated docking simulation algorithms such as PatchDock can provide the dynamic characteristics of the designed system and complexes and guess the interactions between molecules by simulating the real molecular docking environment [20]. An algorithm called PatchDock is used to undo docked molecules to form protein–protein complexes. It can accurately predict global properties such as the formation of hydrogen bonds and the conformation of molecules forming complexes [20]. Glide, AD Vina, and rDock are some other built-in docking simulation algorithms [19]. These tools were used to analyze potential ligand candidates that can inhibit SARS-CoV-2 Mpro [19]. Protein–ligand structures with low docking scores interact with amino acid residues in Mpro, and the docking score values derived from these algorithms indicate the effectiveness of the ligand [19]. Ultimately, integrated docking simulation algorithms provide a valuable means of predicting protein–ligand interactions, which can be used to design more effective drugs for a wide variety of diseases.
Integrated docking simulation algorithms are a useful tool for COVID-19 vaccine research and development. Potential vaccine targets like the spike S-protein are found using these algorithms [21]. Molecular docking and modeling are two important parts of in silico research that can help develop multi-epitope vaccines [21]. Linkers are crucial for maintaining the stability of protein structures by establishing flexible conformations, protein folding, and segregation of functional domains [21]. Epitopes removed in candidate vaccine constructs were calculated using SARS-CoV2 proteins using helper T lymphocytes, cytotoxic T lymphocytes, and B cells. Vaccine candidates are produced by fusing peptide epitopes with linkers to simplify vaccine design [21]. Molecular docking technology was used to study the immune receptor binding affinity of putative vaccine candidates [21]. Using scoring functions, molecular docking programs are crucial for early-stage drug discovery efforts as they can predict binding affinities between proteins and ligands [22,23]. Scientists around the world are using these integrated docking simulation algorithms for drug discovery in response to the COVID-19 pandemic [22]. One algorithm that can achieve this is the HADDOCK server, which can cluster different vaccines into different structures and clusters by docking them with the ACE-2 receptor. The top cluster score, Z-score, and water-refined models can be used to illustrate the docking interactions between the h-ACE-2 protein complex and suggested multi-epitopic vaccines. The static interaction parameters between the construct vaccines and ACE-2 are shown in a table. In the process of developing a COVID-19 vaccine, integrated docking simulation algorithms like the HADDOCK server can be used to find possible medications for the disease’s treatment [21]. To improve the immune response, construct vaccines with high antigenicity were mixed with multi-epitope vaccines [21]. The broad-spectrum peptide-binding repertoires of various HLA alleles were determined using docking simulation algorithms [21]. Various vaccine constructs were then employed, combining distinct epitopes from the S1 and S2 domains of the spike SARS-CoV-2 protein.
When developing COVID-19 vaccines, the use of integrated docking simulation algorithms can be very advantageous. To predict the antigenic epitopes against SARS-CoV-2 for the creation of the vaccine, these algorithms have been used in several studies [24]. The dynamics of biological macromolecules in response to different stimuli, such as interactions with other molecules, are studied through molecular dynamics simulations, which incorporate Newton’s laws of motion [23]. Molecular docking and dynamics simulations can be used not only to predict antigenic epitopes but also to investigate the binding interactions between ligand and protein molecules [25]. By sifting through a sizable compound library, this approach can find drug leads and make it easier to design novel drug candidates for COVID-19 therapies [22]. Additionally, FDA-approved medications can be virtually screened for the SARS-CoV-2 virus using computational ligand-receptor binding modeling techniques, which could lead to the discovery of possible repurposing medications [19]. Furthermore, an integrative docking and simulation-based approach can also be used to develop epitope-based COVID-19 vaccines. The application of these algorithms can expedite the development of drugs and vaccines by reducing the time and cost associated with experimental studies and providing insights into molecular interactions that may not be possible to observe experimentally.

3. Exploring the Role of AI in COVID-19 Genomic Sequencing

The process of examining the virus’s nucleotide base set to ascertain its genetic composition is known as COVID-19 genomic sequencing. The COVID-19 genome sequences are always changing as the virus spreads to new areas. They are stored as FASTA format files that can be combined to create a corpus of distinct sequences [26]. A crucial step in the COVID-19 genome sequencing process is acquiring the genome sequences from GenBank. These sequences list the genes’ names followed by a nucleotide sequence [26]. After the genes field is removed, the entire genome sequence is a sequence of nucleotides [26]. Determining genome features can assist biomedical experts in forecasting the disease’s effects on the population, even though many aspects of COVID-19-related disease behavior remain unknown [27]. Numerous organizations worldwide have undertaken the laborious and resource-intensive process of COVID-19 genomic sequencing, which calls for specialized knowledge in the field [27]. Pattern mining methods and an algorithm to examine mutations in COVID-19 genome sequences are used in the analysis process [26]. Development of drugs and vaccines is aided by the COVID-19 genomic sequencing results [28]. Furthermore, the methods described in this paper can be applied to the analysis of other human viruses in addition to the SARS-CoV-2 virus [26].
AI is being used more and more to support COVID-19 genome sequencing. Predicting the subsequent nucleotide bases in COVID-19 genome sequences is one method AI can accomplish this. To determine whether the next nucleotide bases can be predicted, cutting-edge prediction models can be trained and applied to the corpus [26]. AI can also be used to analyze the genome sequences of viruses related to COVID-19, such as SARS, MERS, and Ebola. Crucial information regarding the nucleotide frequency and composition, tri-nucleotide compositions, amino acid count, genome sequence alignment, and DNA similarity of COVID-19 and related viruses can be obtained through comparative sequence analysis [27]. Machine learning-based classifiers, like Support Vector Machines (SVM), can be used to classify different genome sequences [27]. The positions and line numbers of nucleotide variations across genome sequences can also be found and stored by AI systems [26]. AI can also determine the COVID-19 genome sequence mutation rate, analyze COVID-19 genome sequence mutations, and compute COVID-19 genome mutation rates. To contain the COVID-19 pandemic, these capabilities may be useful in the development of therapeutic and preventive agents, such as vaccinations and drugs (including drug repurposing) [26,28]. AI-based systems can help with COVID-19 genomic sequencing by analyzing a variety of factors such as genome sequence length, nucleotide frequency in the DNA, tri-nucleotide composition, GC percentage (which indicates which genome sequence has the most stable DNA), amino acid count, similarity, or alignment between different genome sequences, and more [27]. Explainable AI (XAI) methods based on machine learning techniques can be used to process COVID-19 metagenomic next-generation sequencing (mNGS) samples. AI-based systems can help medical professionals diagnose COVID-19 by using genomic sequencing [29]. AI is thus critical to COVID-19 genomic sequencing, and it can assist scientists and medical professionals in understanding the virus’s genetic makeup and developing effective prophylactic and treatment plans.
AI can be extremely helpful in the fight against COVID-19 by assisting researchers in developing efficient cures. Artificial intelligence’s (AI) capacity to identify current medications that can be modified for COVID-19 treatment is one of the main advantages of employing AI in COVID-19 genomic sequencing [30]. Finding effective treatments and cutting down on the amount of time needed for drug discovery can be accelerated by screening billions of currently available drugs using computer simulations to see if they interact with or disrupt SARS-CoV-2 proteins [30]. Furthermore, AI is useful for determining the right drug combination to combat COVID-19 because it can link datasets faster than the human brain [30]. A list of medications that have been shortlisted can then be used to treat patients more effectively and hasten their recovery by putting them through trials to see which one works best against the viral proteins [30]. Strong medications for treating COVID-19 have been discovered using AI techniques, including salinomycin, boceprevir, homoharringtonine, tilorone, and chloroquine [30]. AI has the potential to be used in the creation of COVID-19 vaccines and drugs [28]. While the benefits of using AI for COVID-19 genomic sequencing were not discussed in the text [28], AI can be a helpful tool in the hunt for COVID-19 treatments.

4. Exploring the Role of AI in COVID-19 Drug Discovery

To expedite the drug development and discovery process, machine learning techniques are being employed in the rapidly expanding field of AI-assisted drug discovery. Numerous fields in healthcare, such as pharmacology, gene therapy, regenerative medicine, and newly emerging illnesses like COVID-19, can benefit greatly from the applications of AI. AI may hasten the identification of diseases, the development of new drugs, and personalized healthcare. AI tools, such as drug repurposing and potential antiviral drug molecule prediction, are used in COVID-19 drug development. Predicting medication efficacy, adverse effects, and inhibitor molecules for pathogenic agents is carried out using machine learning techniques and deep learning algorithms. In drug discovery with AI support, molecules are identified from billions of compound databases. It attempts to hit several targets, which might be more useful in preventing future drug resistance. AI-assisted drug discovery reduces expenses and failures in the latter phases of drug development by employing an in-silico method. The process uses a range of AI tools, such as neural networks, homology modeling, protein fold prediction, omics analytics, SMILES, LSTM models, etc., to identify potential lead molecules among thousands of compounds. For cross-validation of hits, the Autodock Vina scoring function is utilized, and web-based toxicity evaluation tools like Deep Tox, Lim Tox, Tox21, and admetSAR are used. When everything is considered, the field of AI-assisted drug discovery is exciting and has the potential to significantly increase the effectiveness of the drug discovery process.
While AI has not been used extensively in COVID-19 drug discovery, scientists are constantly looking for new applications for the technology. AI has the potential to create COVID-19 medications and enhance the efficacy of the current medical and healthcare systems during the pandemic. Vaishya et al. (2020) covered several noteworthy applications of AI for COVID-19, including the creation of medications [31]. In COVID-19 research, AI can help with vaccine design and estimate dosage adjustments as well as other clinical issues like early diagnosis, risk identification, and disease evolution prediction [32]. AI can also screen substances that might be used as adjuvants in COVID-19 vaccines [33]. Ligand-based AI technologies only consider the structures of the ligands when training models for COVID-19 drug design, whereas structure-based AI technologies also consider the protein target [32]. For COVID-19, conventional ligand-based techniques can be paired with knowledge mining methods to direct the development of experimental drugs [34]. AI is also capable of estimating drug repurposing against COVID-19 and determining the correlation between these drugs. AI methods like deep learning (DL) and generative topographic mapping (GTM) can be applied to COVID-19 drug repurposing in addition to finding new DAA agents [32,34]. In conclusion, more research should be conducted on the application of AI as it may be able to aid in the development of COVID-19 medication.
Even though AI has the potential to be useful in drug discovery, there are several obstacles in the way of using AI to find COVID-19 treatments. A challenge that exists is the scarcity of information and resources regarding the new virus. The identification of promising drug candidates against a variety of drug targets, including COVID-19-related targets, has been sped up with the use of computer-aided drug design [35]. Since COVID-19 is a relatively new disease, there is not much data available for AI models to reliably predict and identify potential treatments. This is because AI-based drug discovery pipelines need a lot of data to train their models. Furthermore, many research facilities may not have easy access to high-performance computing resources, which are frequently needed for AI models. The lack of diversity in the data used to train AI models for drug discovery presents another difficulty [34]. This implies that AI models might not always generate results that are impartial or that generalize well to new data. Furthermore, a major obstacle to the application of AI in COVID-19 drug discovery is the incomplete knowledge of the virus and its mechanisms of action [31]. Additionally, although AI has been applied to drug development and discovery in other medical fields, such as radiology [36], its application to COVID-19 drug discovery is still relatively new and unproven [37]. Therefore, to fully realize the potential benefits of AI in finding COVID-19 treatments that work, it is crucial to keep researching and addressing these issues.
Here is the list of ongoing research on COVID-19 drug discovery using several AI techniques (Table 1) [38].

5. Exploring the Role of AI in COVID-19 Vaccine Discovery

The development process for COVID-19 vaccines has been sped up thanks in large part to the application of AI. AI/ML tools have been used to predict vaccine candidates’ efficacy, identify potential COVID-19 vaccine targets, and support the design and optimization of vaccine candidates. Artificial neural networks, feed-forward neural networks, gradient boosting decision trees, and deep neural networks are a few examples of these tools. AI has also played a significant role in accelerating the development of vaccines by reducing the length of clinical trials and experimentation [53]. AI has several advantages when it comes to finding COVID-19 vaccines. These include the capacity to recognize COVID-19 genomic sequences [54], forecast putative epitopes for the development of a COVID-19 vaccine [55], and assist scientists and pharmaceutical companies in the discovery of COVID-19 medications by forecasting the SARS-CoV-2 protein structure [56]. AI/ML-based methods have also been used in drug discovery and vaccine development to combat COVID-19 [56]. Artificial intelligence (AI) tools such as MARIA, NetMHCPan4, and Vaxign-ML have been developed to identify T-cell and B-cell epitopes for the COVID-19 vaccine [56]. Using AI/ML techniques, non-structural proteins like nsp3 are found to be the most promising COVID-19 vaccine candidates [56]. Additionally, AI screening can assist in locating possible COVID-19 vaccine targets or drug candidates [56]. The AI-enabled IBM supercomputer SUMMIT can model trillions of small molecules and test them one after the other, speeding up the development of antivirals to help treat COVID-19. Additionally, AI algorithms can be trained on the CORD-19 dataset to identify generic medications that may be effective against COVID-19 [57]. However, several problems have limited the use of AI in COVID-19 diagnosis and prediction [43]. It is important to keep in mind that extensive clinical trials must be carried out prior to the authorization of medications and vaccinations developed using artificial intelligence [58]. On the other hand, AI-based technologies have significantly advanced COVID-19 vaccine research and have the potential to be broadly embraced and employed soon [56,58].
Artificial intelligence (AI) is being used extensively in drug and vaccine development as a vital tool in the fight against COVID-19 [59]. The use of AI/ML techniques has played a significant role in the identification of promising COVID-19 vaccine targets. These technologies can also help predict the efficacy of vaccine candidates, which will ultimately lead to the development of more efficacious vaccines [60]. The largest non-structural protein in SARS-CoV-2, nsp3, has been identified as a promising candidate for a vaccine [56]. AI has also been used to drive new approaches to drug discovery and public awareness because of its ability to mine data quickly and efficiently [57,61]. Artificial intelligence (AI)-based technologies such as machine learning (ML) and deep learning (DL) have been used to identify patterns in genomic sequencing, which has also aided in the development of COVID-19 vaccines and drugs [54]. These AI/ML algorithms have proven crucial in prognostication, COVID-19 treatment and vaccine development, and epidemic trajectory forecasting [58]. AI was also used to diagnose COVID-19 cases using a range of indicators and to predict the COVID-19 epidemic’s spread [55]. Using AI/ML algorithms in drug discovery, plasma therapy, vaccine development, and drug repurposing are some promising approaches to find a treatment for COVID-19 [62]. While there are many benefits to using AI, there are also issues that need to be resolved to ensure that it is used ethically and effectively in the research and development of vaccines.
AI has a lot of potential to help fight the ongoing COVID-19 pandemic, particularly in the areas of medication and vaccine development. In response to the urgent need to develop effective therapies, AI has been used successfully to accelerate the discovery process [59]. There are several advantages to using AI in this scenario, the most important of which is its ability to analyze massive amounts of data and identify patterns that are difficult for humans to notice. The efficient use of this technology has helped with COVID-19 surveillance, diagnosis, outcome prediction, drug discovery, and vaccine development [60]. Artificial intelligence has already established that Nsp3 is the most promising COVID-19 vaccine candidate [56]. The search for COVID-19 drugs and vaccines has made use of several AI techniques, such as computational biology, deep learning, and machine learning (ML) [54]. Artificial intelligence (AI) can also be used to simulate human intelligence and suggest suitable COVID-19 vaccine development [61]. It could be used, for instance, to repurpose existing drugs that might be helpful in the treatment of COVID-19 and analyze genomic sequencing data to identify promising candidates for vaccines [57]. Public health officials can now target interventions in high-risk areas by using AI to forecast epidemic trends and predict the spread of COVID-19 [55,58]. Consequently, AI offers a feasible approach for the development of vaccines and is a helpful tool in the fight against COVID-19.
For COVID-19, several AI-based vaccine design initiatives are already under development. Different strategies are being used by these programs to identify possible vaccine candidates. A few programs examine the virus’s internal structure. A list of the various AI-based COVID-19 vaccine design initiatives is currently under development.
  • EpiCC—an AI-powered platform developed by the U.S. Department of Defense (DoD) that uses machine learning to predict and design potential vaccine candidates based on the virus’s genetic structure. The platform was designed to speed up the process of developing vaccines for new viruses and has already been used to design potential vaccines for viruses such as Zika and Ebola. EpiCC is open-source and available for anyone to use. The platform is constantly being updated with new data, and the DoD is working on making it even more user-friendly [63].
  • COBRA—a computational method for optimizing broadly reactive epitopes for vaccines by using AI-optimization algorithms to create a cocktail of peptides that can elicit a strong immune response. The goal of COBRA is to create a vaccine that is effective against a wide range of pathogens, making it ideal for use in outbreak situations. A group of researchers from the University of Tokyo created COBRA. The group analyzed a database of peptides using machine learning to determine which ones are most likely to trigger a robust immune response. They then combined a number of these peptides to create a vaccine. So far, COBRA has been tested on mice and human cell lines. The results have been promising, and the team is now working on a clinical trial that will test the vaccine on humans [64].
  • Exscalate4CoV—a supercomputing platform created by Dompé Farmaceutici with funding from the European Union that empowers smart, in-silico drug design for potential COVID-19 treatment using AI and machine learning. The platform’s goal is to speed up finding possible medications that might be used to treat COVID-19. It accomplishes this by searching a database of available medications for ones that might be effective against the virus using supercomputer power. Although the platform is still in its early stages of development, it has already been used to find several possible medications that might be used to treat COVID-19 [65].
  • Nucleic Acid Programmed Immunity (NAPi)—a DNA vaccine platform that employs AI-based predictive algorithms to identify the optimal target antigens to elicit a strong immune response against SARS-CoV-2. The premise behind the platform is that the immune system can be trained to recognize and eradicate a pathogen by using its DNA. NAPi uses predictive algorithms to identify antigens that are the best targets for inducing an immune response against a particular pathogen. NAPi identified a set of SARS-CoV-2 antigens that should mount a strong defense against the virus. The NAPi platform is currently in its early phases [66].
  • Iktos—a novel artificial intelligence technique that forecasts the ideal chemical structures of compounds that may be employed as prospective SARS-CoV-2 vaccines using machine learning. Several pharmaceutical companies, including Eli Lilly and Sanofi, have partnered with Iktos to develop new vaccine candidates. Iktos’ technology could potentially speed up the development of a vaccine by months or even years, and it is hoped that it will help to get a vaccine to the market sooner rather than later [67].
Here is the list of ongoing research on COVID-19 vaccine discovery using several AI techniques (Table 2) [38].

6. AI-Assisted Data Collection for COVID Vaccine Development

There are several obstacles associated with using traditional data collection techniques for the COVID vaccine development. The cost associated with these approaches is one of the biggest challenges. It can take several years to create an effective vaccine against a particular virus using the traditional method of vaccine development, which is expensive and time-consuming [80]. Nonetheless, some scientists are racing to develop COVID-19 vaccines due to the pressing need and the worsening global situation [80]. Verifying mistakes and anomalies that inevitably arise while gathering millions of data points presents another difficulty. For scientists, this can be an intimidating task that causes a major delay in the development process [80]. Fortunately, computational methods can expedite the creation of vaccines. By using computational techniques like artificial intelligence (AI) and machine learning to predict how a vaccine will interact with the human immune system, vaccine development can be expedited and made more accurate [80]. In conclusion, conventional data collection techniques are necessary for the development of the COVID vaccine, but they are not without difficulties. Nevertheless, some of these obstacles can be addressed and the development process accelerated with the use of computational techniques.
Following the COVID-19 pandemic, BenevolentAI, a London-based AI-enabled drug discovery company, used their AI-enhanced knowledge graph to identify possible treatment drugs [81]. This process involved integrating multiple data sources covering drugs, diseases, genes, biological mechanisms, and drug targets using the machine-read literature [81]. The knowledge graph has been enhanced by AI algorithms that identify relationships between biomedical concepts to describe confidence, causality, and fill in knowledge gaps [81]. The researchers at BenevolentAI employed an interactive and iterative methodology to identify possible drugs, fusing their expertise and interactive resources with biomedical relationships produced by AI and extracted from the recent coronavirus literature [81]. They focused on creating a drug to combat the “cytokine storm” that causes early COVID-19-related mortality [81]. The search was directed towards the mechanisms and proteins of the host that mediate viral infection of cells, instead of searching for viral replication [81]. They concluded that the CME pathway is most likely the way that the SARS-CoV-2 virus enters the body by using their knowledge graph and enriched proteins of the CME pathway (such as AAK1, CLTC, GAK, EPS15, and AP2M1) in the pink endocytosis cluster of PPIs in Figure 1 [81]. The human biology-focused BenevolentAI knowledge graph was employed by researchers to identify drugs that target host proteins that the virus has corrupted [81]. They also found the virus interactome and added it to the knowledge graph to find anti-inflammatory medications that could lessen the cytokine storm and have antiviral properties [81]. AI has accelerated the development of vaccines by collecting and analyzing data more quickly.
There are many benefits to using AI for data collection in the COVID vaccine development process. The guarantee of data quality with the least amount of human interaction is one such benefit. Data analysis was carried out using machine learning (ML) techniques, and the results were available in 22 h [80]. Artificial intelligence (AI) has been used by the pharmaceutical industry in a variety of ways during vaccine development and trials. For example, Pfizer employed AI to find signals among millions of data points [80]. Additionally, by repurposing current medications, screening targets as vaccines, and identifying compounds that may be used as adjuvants for vaccines, AI-based methods can be used to find new drugs and vaccines [82]. Furthermore, S protein, nsp3, 3CL-pro, and nsp8–10 are examples of possible vaccine candidates that AI can help predict [80,82]. This could significantly speed up the COVID vaccine development process. By examining the whole SARS-CoV-2 proteome to find epitope hotspots for vaccine formulations, AI techniques can also investigate COVID-19 vaccine development [82]. It is well known that AI can help in the process of finding COVID vaccine candidates [80]. All things considered, there are several benefits to using AI for data collection in the COVID vaccine development process that could greatly accelerate the search for effective vaccines while upholding standards for data quality [80].

7. Enhancing Post-Marketing Vaccine Surveillance through AI: A Paradigm Shift in Data Analysis

Post-marketing surveillance plays a crucial role in monitoring vaccine safety and efficacy after their approval and widespread use. The exponential growth in data volume poses a significant challenge to comprehensively analyze and extract meaningful insights. To address these challenges, artificial intelligence (AI) has emerged as a powerful tool, offering advanced computational techniques that can leverage large-scale datasets. This essay explores the use of AI for post-marketing vaccine data analysis, showcasing its potential to revolutionize public health monitoring and improve the understanding of vaccine outcomes [83].
  • Understanding Post-Marketing Vaccine Surveillance
Post-marketing surveillance involves monitoring vaccine safety in real-world settings. Unlike clinical trials that focus on selected populations, post-marketing surveillance assesses the broader population, enabling the identification of rare or long-term adverse events. Traditionally, this surveillance relied heavily on passive reporting systems and manual analysis, limiting real-time monitoring and comprehensive data comprehension.
b.
AI-Driven Analytics: A Game Changer
AI enhances post-marketing vaccine surveillance through powerful algorithms that can seamlessly analyze vast amounts of structured and unstructured data. This technology automates the identification of patterns, trends, and potential adverse events, enabling rapid detection and outcome assessment, ultimately improving patient safety.
c.
Data Integration and Harmonization
AI algorithms can efficiently integrate data from various sources, including electronic health records, social media platforms, and public health agencies, to create a comprehensive dataset. By harmonizing these heterogeneous data sources, AI enables a holistic analysis, identifying factors associated with vaccine safety and efficacy more accurately.
d.
Real-Time Monitoring and Early Alert Systems
AI-driven post-marketing vaccine surveillance facilitates the identification of potential adverse events in real-time. By continuously analyzing large datasets, algorithms can detect subtle patterns or signals that may not be evident through traditional surveillance methods. Consequently, early alert systems can be developed to proactively inform public health authorities and initiate timely interventions if needed.
e.
Enhanced Signal Detection and Validation
AI algorithms excel in detecting signals from complex and high-dimensional datasets. By utilizing machine learning techniques like deep learning, these algorithms can detect subtle but important associations between vaccination and adverse events that might go unnoticed using traditional methodologies. Furthermore, AI enables automated validation mechanisms, reducing human biases and improving the accuracy of signal identification.
f.
Quantifying and Visualizing Complex Vaccine Data
AI algorithms can efficiently quantify vaccine attributes and patient-specific variables from large datasets. This allows for the determination of vaccine coverage, identification of high-risk populations, and evaluation of potential confounding factors. Additionally, AI-powered data visualization techniques facilitate the exploration of complex data patterns, enabling stakeholders to comprehend and communicate vaccine-related insights more effectively.
g.
Enhanced Safety Signal Prioritization
Prioritizing safety signals is critical in post-marketing vaccine surveillance. AI algorithms can prioritize signals based on their statistical significance, magnitude, and clinical relevance, paving the way for a more efficient allocation of resources to manage potential adverse events. By streamlining the identification and prioritization process, AI helps public health agencies make evidence-based decisions promptly.
h.
Improved Benefit-Risk Assessment
Effective vaccine surveillance necessitates a robust benefit-risk assessment. AI’s ability to extract valuable insights from data allows for accurate evaluations of post-vaccination outcomes. By comprehensively analyzing population-level data, AI algorithms can assess both the efficacy and safety profiles, providing decision-makers with a holistic view of the benefits and potential risks associated with specific vaccines or vaccination strategies.
i.
Challenges and Ethical Considerations
Deploying AI in post-marketing vaccine surveillance also introduces challenges and ethical considerations. Data privacy and security, algorithm transparency, and interpretability should be carefully addressed to ensure public trust and privacy protection. Additionally, recurrent algorithmic biases and potential for data overfitting must be mitigated to guarantee reliable and unbiased results.
The use of AI for post-marketing vaccine surveillance holds tremendous potential for revolutionizing public health monitoring and accelerating our understanding of vaccine safety and efficacy. By harnessing the power of AI-driven analytics, we can overcome the limitations of traditional surveillance methods, enabling real-time monitoring, early detection of adverse events, and informed decision making. However, comprehensive ethical frameworks must be developed to address the challenges associated with data privacy and algorithmic transparency, ensuring the responsible and equitable use of AI in post-marketing vaccine surveillance [83].

8. The Challenges Faced by AI in the Global Market for COVID Vaccines

The need for an effective vaccination and problems with the supply chain are just two of the obstacles that the global market for COVID vaccines must overcome. For some of these problems, artificial intelligence (AI) has been suggested as a possible remedy. AI systems can be used to help address COVID-19-related problems and lessen the difficulties faced by vaccine supply chains [84,85]. When it comes to creating a vaccine to combat a pathogen, however, current AI and IoT methods have drawbacks and difficulties [86]. Research has suggested combining blockchain technology with AI-specific tactics to combat COVID-19 to address these issues [87]. A significant obstacle presented by COVID-19 is ensuring equitable vaccination coverage. This will necessitate evaluating various vaccination scenarios and developing roll-out plans that consider local and national realities, particularly in Africa where there are substantial logistical challenges. It is critical to divide the difficulties related to vaccine distribution during the COVID-19 pandemic by taking data privacy, the economy, and other factors into account [88]. Additionally, to address problems related to the improvement of clinical vaccines to avoid COVID-19, current AI and IoT approaches must be improved. Developing AI systems that can forecast coronavirus infection, create medications and vaccines, and recognize probable COVID-19 symptoms are some of these challenges [89]. While the global market for COVID-19 vaccines faces many obstacles, artificial intelligence (AI) can help. However, it’s critical to acknowledge these obstacles and seek to overcome them.
The COVID-19 epidemic has presented difficulties in all facets of life, including the creation and dissemination of vaccines. The use of artificial intelligence (AI) systems is one approach to overcoming these obstacles. The demand and acceptance of COVID-19 vaccines can be predicted using AI, which is important for vaccine development and distribution [90]. To reduce logistical difficulties, artificial intelligence (AI) can also be utilized to optimize the COVID-19 vaccine supply chain [84]. AI systems do, however, have certain drawbacks and difficulties, such as data privacy issues and creating AI models that are successful and efficient in identifying coronavirus infections and developing medications and vaccines [86,89]. Furthermore, distributing vaccines fairly is a significant argument during the COVID-19 endemic and must be handled while taking local and national realities into account [88]. To determine various vaccination scenarios and rollout strategies that can overcome them, logistical challenges in Africa need to be evaluated [91]. Ultimately, to support the creation and allocation of the COVID-19 vaccine, the pandemic has also exposed serious shortcomings in basic services like cleaning, delivery, and social distancing [92]. Despite these obstacles, AI has the potential to completely transform the production and distribution of vaccines. However, to meet the COVID-19 pandemic’s challenges, AI systems must be designed in a way that is ethical, efficient, and operational.

9. The Limitations of AI Techniques in Developing COVID-19 Vaccines

AI has its limitations when it comes to forecasting the safety and effectiveness of vaccines, even though it can be a useful tool in vaccine development. The scarcity of data is one of the main obstacles. The COVID-19 pandemic has highlighted this issue because there is no enough data to train artificial intelligence (AI) models that can accurately diagnose and predict COVID-19 [93]. Moreover, although AI can facilitate the development of vaccines, rigorous clinical trials are still required prior to the authorization of drugs and vaccinations developed with AI [93]. This is because, to be validated, AI-generated hypotheses need to be tested in real-world situations. Furthermore, the caliber of the training data affects the caliber of AI models. Training data bias can lead to inaccurate diagnoses and predictions. Ensuring that AI models are trained on a variety of representative data sets is essential to preventing biases. In conclusion, while AI can be a helpful tool in the development of vaccines, it’s important to recognize its limitations and rely on extensive clinical trials to evaluate the safety and effectiveness of vaccinations.
Since SARS-CoV-2 is still a relatively new virus, and the field of study is still in its infancy, there are currently insufficient data to support the development of vaccines against it [94]. Transfer learning is a strategy that can be used to address the problem of insufficient data by leveraging previously acquired knowledge [94]. Furthermore, deep learning is crucial for the development of treatments for SARS-CoV-2, enabling a timely and accurate response to the virus, despite the challenge of limited data [94]. The prediction of potential coronavirus epitopes for vaccine development has also been carried out using AI-based techniques. In the case of spike epitope prediction, for instance, the Long Short-Term Memory (LSTM) network has shown promising results [94]. Similarly, SARS-CoV-2 T-cell epitopes have been identified using supervised neural network-driven tools [94]. Furthermore, Crossman et al. generated spike sequences that may serve as targets for vaccine development using deep-learning RNN [94]. On the other hand, data scarcity remains a significant barrier to the creation of an AI-based COVID-19 vaccine. However, there is great potential for using AI and deep learning techniques to speed up the development of SARS-CoV-2 vaccines and effective treatments.

10. Prediction Accuracy Made by AI in Designing COVID-19 Vaccines

Artificial intelligence (AI) was used in the COVID-19 drug discovery and vaccine development process; however, it is unclear how accurate the AI predictions were at the time the COVID-19 vaccines were developed [95]. A study, however, predicted potential targets for the COVID-19 vaccine, which could lead to vaccine development [95]. Furthermore, several studies have proposed the use of artificial intelligence to predict the public’s COVID-19 vaccination trend. In one study, data were trained on five different classifiers to forecast vaccination trends, and the results were evaluated using area under the curve, logarithmic loss, precision, recall, and the F1 measure [96]. The study’s findings indicated that, while the possibility of a side effect is very small and infrequent, vaccinations may have some negative effects on the human body [96]. The voting classifier was used to combine the results of each classifier to provide a cumulative accuracy result [96]. The study’s goal was to categorize public trends regarding COVID-19 vaccination to help policymakers make informed decisions about vaccine distribution and administration [96]. More research is needed to determine the accuracy of AI forecasts in the development of COVID-19 vaccines.

11. Ethical Considerations of Using AI in Vaccine Development

The emergence of artificial intelligence (AI) has revolutionized various fields, including healthcare and pharmaceuticals. In vaccine development, AI has the potential to accelerate the discovery process by predicting antigens and developing efficient vaccine candidates. However, the ethical implications of utilizing AI in this critical domain must be carefully examined. This chapter explores the ethical considerations surrounding the use of AI in vaccine development, considering concerns such as data privacy, bias, transparency, accountability, and potential societal implications [97].
  • Data Privacy and Informed Consent:
One crucial ethical consideration of using AI in vaccine development pertains to data privacy and informed consent. AI algorithms heavily rely on vast amounts of data, which may include personal health records and genetic information. Therefore, it is paramount to ensure that individuals’ data is adequately protected and that their informed consent is obtained for appropriate data usage. Privacy regulations and standardized informed consent protocols should be established, and AI models should be constructed in a way that minimizes the risk of re-identification.
b.
Ensuring Algorithmic Fairness and Bias:
AI algorithms used in vaccine development may inadvertently perpetuate biases present in training datasets, especially if data are primarily obtained from certain populations. Biased algorithms perpetuate existing disparities in healthcare access and outcomes, which is unacceptable from an ethical standpoint. Consequently, developers must actively work towards mitigating bias in AI models, ensuring algorithmic fairness and equitable vaccine distribution across diverse populations.
c.
Transparency and Explainability:
The opacity of AI algorithms can raise concerns regarding transparency and explainability. In vaccine development, transparency is vital for ensuring public trust. While some AI models are considered “black box,” efforts should be made to build explainable algorithms, allowing researchers and regulatory bodies to understand how decisions are made. Transparent AI systems will inspire confidence, enable independent scrutiny, and facilitate accountability by ensuring that decisions are ethically grounded.
d.
Intellectual Property and Access:
Considering intellectual property rights with AI-integrated vaccine development is essential. Pharmaceutical companies investing in AI platforms often seek to protect their proprietary algorithms and datasets, which may create barriers to information and resource sharing. To avoid compromising equitable vaccine access, it is crucial to find a balance between protecting intellectual property and fostering collaborations that promote global health and equal access to vaccines.
e.
Accountability and Liability:
As AI systems become more autonomous, concerns about accountability and liability arise. Developers need to consider who should be held responsible in cases of AI-associated errors or adverse events. Establishing clear lines of accountability, liability, and strict regulatory oversight frameworks is necessary. Clarity regarding the roles and responsibilities of AI developers, researchers, and regulatory bodies will mitigate ethical concerns and ensure that decisions made using AI are held to appropriate standards.
f.
Societal Implications and Unequal Distribution:
While AI in vaccine development offers great potential, it may exacerbate existing inequalities if not implemented thoughtfully. The unequal distribution of AI technologies may widen disparities in healthcare access, as poor regions or countries may be left behind. Striving for ethical AI adoption in vaccine development includes ensuring equitable access to AI resources, enabling underserved populations to reap the benefits of emerging technologies and reducing health disparities globally.
g.
Human Oversight and Autonomy:
Maintaining human oversight and ensuring that AI systems augment human decision making rather than replace it is crucial. Making critical decisions solely based on AI algorithms could dismiss the human component of ethical judgment. Researchers should prioritize AI systems that support informed decision making by healthcare professionals and respect patient autonomy, refraining from overreliance on AI, especially in complex ethical dilemmas related to vaccine development.
h.
Regulatory Frameworks and Standardizations:
Developing clear regulatory frameworks specific to AI in vaccine development is essential. Regulatory bodies should collaborate with researchers and developers to establish standards, guidelines, and ethical protocols governing the use of AI. Such frameworks should ensure that AI-supported vaccine development adheres to ethical principles, promotes safety, respects individual rights, and maintains public trust in healthcare systems.
i.
Ongoing Monitoring, Evaluation, and Adaptation:
Ethical considerations in AI and vaccine development should not be static; rather, they require ongoing monitoring, evaluation, and adaptation. As technology evolves rapidly, ethical frameworks must adapt to incorporate emerging issues. Continuous monitoring of AI system performance, evaluation of ethical impact, and prompt adjustments to guidelines will ensure that AI in vaccine development aligns with societal values and remains ethically sound.
The ethical considerations surrounding the utilization of AI in vaccine development are multifaceted and demand careful analysis [97].

12. Conclusions and Future Directions

Artificial intelligence (AI) is being researched rapidly for use in the COVID-19 vaccination. The development of several AI/ML-based methods has accelerated the COVID-19 vaccine research process. Prachar et al., for example, used a feed-forward neural network to identify 174 SARS-CoV-2 epitopes with high prediction binding scores and the ability to stably bind to 11 HLA allotypes [98]. Non-structural protein 3 (nsp3) has been identified as the most promising COVID-19 vaccine candidate. In addition, AI/ML models use a variety of techniques to predict putative epitopes. One such tool is Vaxign-ML, an ML tool based on XGBoost that is used to rank non-structural proteins as potential SARS-CoV-2 vaccine candidates [97]. The review article discussed the advantages, disadvantages, and long-term consequences of using AI in the COVID-19 vaccine development process [99]. AI systems have proven invaluable in the COVID-19 pandemic, speeding up the development of new drugs, repurposing old ones, and developing vaccines. Using machine learning algorithms, computational analysis was able to interpret experimental data and provide structural and molecular insights into SARS-CoV2 viruses. Furthermore, it can predict viral components that may elicit protective immune responses [100]. AI has also accelerated the development of the COVID-19 vaccine, assisting in the identification of mutations that would allow the vaccine to be developed and allowing the virus to be decoded in just 48 h [101]. However, in addition to AI, rigorous “wet” laboratory testing, animal and human trials, and regulatory approval are required to ensure vaccine safety, efficacy, and approval [100]. To summarize, the use of artificial intelligence (AI) in vaccine development speeds up the process, improves accuracy, and broadens our understanding of infectious diseases, all of which contribute to improved global health and life expectancy [100].
All things considered, it can be said that the pandemic’s ultimate state is defined by regulated infection levels, viral occurrences that are like seasonal influenza in most countries, and the possibility of endemic virus presence in the populace [102]. In the meantime, image diagnostics is one task where artificial intelligence (AI) has shown promise in the fight against COVID-19 [102]. This paper, however, offers a data science viewpoint on AI’s role in the pandemic response and suggests future directions for research and development. The next part of the paper explores the future potential of AI in the development of personalized vaccines, highlighting the intelligence.
  • Understanding Personalized Vaccines
Personalized vaccines are tailored to an individual’s unique genetic, immune, and environmental characteristics. These vaccines have the potential to improve efficacy and, increase effectiveness against specific diseases, and reduce adverse effects. AI’s advanced algorithms and machine learning capabilities enable the analysis of complex data sets to identify the most suitable vaccine candidates for everyone [103].
b.
Leveraging Big Data and Machine Learning
The most significant advantage of AI is its ability to process and analyze vast amounts of data. By leveraging big data and applying machine learning algorithms, AI can identify correlations between genetic profiles, epidemiological data, and vaccine responses. This allows for the prediction of immune responses, potential adverse reactions, and the most effective vaccines for demographics [104].
c.
Enhancing the Vaccine Development Process
Traditional vaccine development is a time-consuming and costly process. AI can expedite this process by aiding in the identification of potential antigens and the assessment of their immunogenicity. The utilization of predictive models can significantly reduce trial and error, resulting in faster development and testing of vaccines.
d.
Precision Medicine and AI
The integration of AI in the development of personalized vaccines aligns with the principles of precision medicine. By considering an individual’s unique genetic and environmental factors, vaccines can be tailored to address specific vulnerabilities. This approach maximizes the benefits while minimizing the risks associated with mass vaccination programs [105].
e.
AI-Enabled Immunogenomics
AI’s potential in the field of immunogenomics, which studies the immune system’s varied genetic components, is immense. AI algorithms can analyze genomic data to identify genes associated with vaccine efficacy and safety. This knowledge can then be utilized to design individualized vaccine regimens, providing stronger and more enduring immune responses [106].
f.
Overcoming Vaccine Hesitancy
Vaccine hesitancy poses a significant challenge in public health. AI has the potential to address this issue by providing personalized information and recommendations tailored to individuals’ concerns and beliefs. By analyzing social media data, AI can identify public opinions and address misinformation, leading to increased vaccine acceptance rates [107].
g.
Vaccine Adverse Event Surveillance
The intelligent processing capability of AI enables the real-time monitoring and surveillance of vaccine safety. By analyzing vast amounts of patient data, AI algorithms can swiftly identify any potential adverse events following immunization. This allows for quick response and interventions, enhancing overall vaccine safety [108].
h.
AI Empowering Healthcare Professionals
AI empowers healthcare professionals by augmenting their decision-making capabilities in vaccine development and administration. Advanced AI algorithms can assist in prioritizing vaccine production, optimizing resource allocation, and creating personalized vaccine schedules. This partnership between AI and healthcare professionals enables the efficient and effective adoption of personalized vaccines [109].
i.
Ethical Considerations
While the potential of AI in personalized vaccine development is vast, ethical considerations must be carefully addressed. Issues regarding privacy, consent, and data security must be addressed to ensure the responsible and equitable use of AI in healthcare. Transparency and clear guidelines will be essential to gain public trust and protect individual rights.
The future potential of AI in the development of personalized vaccines is immense. With its ability to process big data, perform complex analyses, and provide personalized recommendations, AI can revolutionize vaccine development and administration. By harnessing AI’s intelligence, the healthcare industry can guarantee safer and more effective immunization strategies, improving public health outcomes for individuals and communities. In particular, the authors suggest using a temporal step approach to examine how AI perceives and affects healthcare systems and society [102]. Even though there is still a lot of room for research to improve AI support during the current pandemic [102], the advancements made so far show how AI can benefit society and healthcare systems in the future.

Author Contributions

Conceptualization, A.G. and M.P.; methodology, M.M.L.-P.; software, M.M.L.-P.; validation, M.M.L.-P., A.G. and M.P.; formal analysis, A.G.; investigation, A.G.; resources, A.G.; data curation, M.M.L.-P.; writing—original draft preparation, A.G.; writing—review and editing, M.P.; visualization, A.G.; supervision, M.P. and M.M.L.-P.; project administration, M.P. and M.M.L.-P.; funding acquisition, Nil. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Ethics approval and consent to participate.

Data Availability Statement

Data is available upon request.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. The PPI network was chosen based on the knowledge graph query “SARS-CoV-2 AND Endocytosis”. Differently colored clusters represent different pathways and processes (e.g., cytokine signaling in green and orange, and endocytosis in pink). Every node represents a protein, and the edges show which protein–protein interactions are enhancing (green) or inhibiting (red). Pink modules make up CME [81].
Figure 1. The PPI network was chosen based on the knowledge graph query “SARS-CoV-2 AND Endocytosis”. Differently colored clusters represent different pathways and processes (e.g., cytokine signaling in green and orange, and endocytosis in pink). Every node represents a protein, and the edges show which protein–protein interactions are enhancing (green) or inhibiting (red). Pink modules make up CME [81].
Information 14 00665 g001
Table 1. COVID-19 drug discovery using several AI techniques.
Table 1. COVID-19 drug discovery using several AI techniques.
ResearchAI MethodologyClinical Benefits
Zhavoronkov et al. (2020) [39]Generative Deep LearningFind cost and time effective drug compounds.
Tang et al. (2020) [40]Advanced Deep Q-Learning Network (ADQN-FBDD)There are 47 lead compounds known to target the SARS-CoV2 3C-like main protease.
Gao et al. (2020) [41]Generative network complex (GNC) powered by AICreate 15 possible medications.
Hofmarcher et al. (2020)
Hofmarcher et al. (2020) [42]
Deep neural network protocol; ChemAIMake minuscule components that inhibit SARS-CoV-2.
Zhang et al. (2020) [43]DFCNN, or Dense Fully Convolutional Neural NetworkA list of available chemical ligands and peptide medications was provided.
Beck et al. (2020) [44]Molecule Transformer-Drug Target Interaction (MT-DTI)Ascertain the drug’s relationship to the target. A list of antiviral drugs was present.
Ge et al. (2020) [45]Algorithms for network-based knowledge mining that combine statistical analysis and machine learning within an integrated framework and have experimental validationPARP1 inhibitors have been shown to have antiviral effects against SARS-CoV-2.
Hu et al. (2020) [46]Pre-trained multi-task deep modelCut down on the time and money spent looking for a cure.
Zhou et al. (2020) [47]Repurposing an integrative antiviral drug via a pharmacologically based network medicine platform.A total of sixteen possible medications were identified as candidate drugs.
Zeng et al. (2020) [48]A network-DL methodology with a graph named CoV-KGE. It has been discovered that a cloud provider has 41 repurposing medications.
Gysi et al. (2020) [49]A comprehensive graph neural network.Defining 81 drug repurposing candidates using in vitro data.
Wang et al. (2020) [50]Ontology-based side-effect prediction framework (OSPF).Seven TCM have high safety indicators (SI of greater than 0.8).
Abdel-Basset et al. (2020) [51]DeepH-DTA: Developed an HGAT model to learn topological information from compound molecules and a bidirectional ConvLSTM layer to model spatial sequence information in SMILES sequences of drug data.Determine a medication’s affinity score with respect to the amino acid sequences of SARS-CoV-2.
Demirci et al. (2020) [52]ML-based miRNA prediction analysis.Explore the SARS-CoV-2 infection mechanism.
Table 2. COVID-19 vaccine discovery using several AI techniques.
Table 2. COVID-19 vaccine discovery using several AI techniques.
ResearchAI MethodologyClinical Benefits
Abdelmageed et al. (2020) [68]Bioinformatics databases and tools (ACT v18.0, VaxiJen v3.0 Software, and the comparative genomic method).Epitope vaccines were developed using protein E as an antigenic site.
Sarkar et al. (2020) [69]Molecular docking analysis, reverse vaccinology, and immune informatics.There are now three known epitope-based subunit vaccines.
Fast et al. (2020) [70]Computational methodology.Locating multiple SARS-CoV-2 epitopes to develop potential vaccinations.
Ong et al. (2020) [71]ML and reverse vaccinologyNotably, there is a good chance that numerous nonstructural proteins will one day be turned into vaccines.
Rahman et al. (2020) [72]Combined with comparative genomics and immuno-informatics methodology.To target the S, M, and E proteins, a chimeric peptide vaccine called CoV-RMEN was developed. It is based on multiple epitopes.
Susithra Priyadarshni et al. (2021) [73]In silico approach. Molecular docking analysis.Development of multi-epitope vaccine candidates that specifically target the non-mutated immunogenic regions of the surface glycoprotein and coat protein of SARS-CoV-2.
Russo et al. (2021) [74]A combined bioinformatics pipeline that brings together different programs’ predictive capabilities.Calculate the expected effectiveness of established immunization programs against SARS-CoV-2.
Liu et al. (2020) [75]OptiVax searches a variety of viral or tumor proteins for all peptide fragments that might be suitable candidates for vaccination.This method increases the presentation likelihood of a diverse set of vaccine peptides based on the target human population’s HLA haplotype distribution and predicted epitope drift.
A supplementary tool called EvalVax was created at MIT and predicts vaccination coverage while enabling others to assess various vaccine formulations.
Report by Ayushman Baruah [76]TCS used generative and predictive models based on deep neural networks to design small compounds that can block the 3CL protease from the ground up. The resultant tiny components were sorted and tested against the SARS-3CL CoV-2 binding site’s protease structure.They concluded that 31 possible components were strong candidates for production and testing against SARS-CoV-2 based on the screening results and further investigation.
Bali et al. (2022) [77]Instead of concentrating mostly on drugs that might directly impact the virus, BenevolentAI investigated ways to prevent the virus from infecting human cells via biological mechanisms.Look for approved drugs that may slow the progression of COVID-19, reduce the “cytokine storm”, and lessen the inflammation the illness causes.
Exscientia press release (2020) [78]Exscientia, a UK-based company, and Diamond Light Source and Calibr, a US division of Scripps Research, screened a set of 15,000 clinically ready molecules using new biosensor platforms.Finding any existing drugs that can be modified to protect people is the first goal.
Kaushik et al. (2020) [79]The seven compounds that exhibit as potential COVID-19 inhibitors were discovered by the Hong Kong-based pharmaceutical research company Insilco Medicine. For testing purposes, two of the compounds have already been synthesized.Utilized VR to optimize novel AI-created COVID-19 medications.
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Ghosh, A.; Larrondo-Petrie, M.M.; Pavlovic, M. Revolutionizing Vaccine Development for COVID-19: A Review of AI-Based Approaches. Information 2023, 14, 665. https://doi.org/10.3390/info14120665

AMA Style

Ghosh A, Larrondo-Petrie MM, Pavlovic M. Revolutionizing Vaccine Development for COVID-19: A Review of AI-Based Approaches. Information. 2023; 14(12):665. https://doi.org/10.3390/info14120665

Chicago/Turabian Style

Ghosh, Aritra, Maria M. Larrondo-Petrie, and Mirjana Pavlovic. 2023. "Revolutionizing Vaccine Development for COVID-19: A Review of AI-Based Approaches" Information 14, no. 12: 665. https://doi.org/10.3390/info14120665

APA Style

Ghosh, A., Larrondo-Petrie, M. M., & Pavlovic, M. (2023). Revolutionizing Vaccine Development for COVID-19: A Review of AI-Based Approaches. Information, 14(12), 665. https://doi.org/10.3390/info14120665

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