Artificial Intelligence-Based Methods for Precision Cardiovascular Medicine
Abstract
:1. Introduction
- PM branches (applications): What types of PM clinical applications are addressed using AI-based models for CVDs?
- CVD types: For what type of CVDs are AI-powered PM models implemented?
- AI models: What AI algorithms are most commonly applied for different PM applications in CVDs?
- Data sources: What are the medical data modalities used for each model? What are the most commonly used datasets?
2. Methods
2.1. Search Strategy
2.1.1. Search Sources
2.1.2. Search Terms
2.2. Search Eligibility Criteria
2.3. Study Selection
2.4. Data Extraction
2.5. Data Synthesis
3. Results
3.1. Search Results
3.2. Demographics of the Studies
3.3. Cardiovascular Disease Branch
3.4. Precision Medicine Branch
3.4.1. Prediction
- Early prediction—In these 14 articles, 3 studies conducted early detection [25,30,35]. One study was conducted to develop a platform that can detect arrhythmias in real-time using the electrocardiogram (ECG) signal from the patient’s records. As a gradual optimization process, the artificial bee colony (ABC) technique detects and classifies different ECG signals using least-square twin support vector machines (LSTSVMs). As a result of this study, the algorithm achieved a high accuracy and sensitivity rate, indicating that it was a success and will aid in detecting arrhythmias early [35]. Another study reported on determining the pretest probability of coronary artery disease (CAD) and how to continue further in the diagnostic and therapeutic process [25]. The modality data collected from EHR are clinical, pathological, familial, pharmacological history, and lifestyle habits, besides the proteomics omics data. Combining these two modalities of data showed that a panel of 50 proteins outperforms the clinical risk model in predicting the risk of myocardial infarction, and a Gradient boosting classifier algorithm was applied for this study [25]. Fan et al. [30] constructed and evaluated an individual’s Cardiorenal Syndrome Type 1 (CRS1) risk nomogram for patients with Acute heart failure (AHF). Demographic and clinical data were collected from the patient’s EHR, and a logistic regression model was applied for this study.
- Mortality prediction—For mortality prediction, four studies were reported in the literature [19,21,40,46]. Vignoli et al. [46] presented a study aimed to characterize the metabolomic fingerprint of acute MI using nuclear magnetic resonance spectroscopy on serum samples from patients and assess the potential significance of metabolomics in the predictive classification of acute MI patients. Multivariate statistics were used to build a predictive model for death within two years of a cardiovascular event. Finally, a prognostic risk model predicted death with a sensitivity of 76.9 per cent, a specificity of 79.5 per cent, and an accuracy of 78.2%, with an area under the receiver operating characteristic curve of 85% [46]. In [40], medical records were examined to evaluate the potential risk for patients undergoing transcatheter aortic valve implantation (TAVI). An extreme gradient boosting (XGBoost) model was utilized to investigate the impact of feature selection on the model’s performance. The authors compared machine learning models for all-cause mortality with traditional risk scores. Their results indicated that the machine learning model outperformed traditional risk scores and improved patient selection for all-cause mortality in the hospital. Medical records were consulted for the following information: patient’s demographics and medical conditions, results of tests and imaging studies such as electrocardiograms and echocardiograms, and reports from CT scans and MRIs [40]. Models for all-cause mortality were compared to risk scores that were used before new models were developed. An extreme gradient boosting (XGBoost) model was used to examine the effect of feature selection on performance. Lastly, the outcome of this study showed that machine learning was finally able to obtain significantly better results. Furthermore, it improved patient selection compared to older risk scores for "all-cause death" in the hospital [40]. A study evaluated the impact of age on percutaneous coronary intervention in a large, random sample of patients (PCI) [21]. Therefore, demographic data, clinical data, and procedural characteristics were collected from the patient’s EHR, and multivariate Cox regression analyses were applied. In [19], patients with coronary heart disease were evaluated using a variety of machine and deep learning models to predict five-year mortality rates. These models are the support vector machine, decision tree, random forest, gradient boosting, neural network, and logistic regression. Demographic and physical features, comorbid conditions, medication, laboratory biomarkers, and electrophysiological results were among the data modalities acquired from EHR in this study. Furthermore, only age, dyslipidaemia, prior cerebrovascular disease, and random forest score remained statistically significant in multivariate modelling, confirming their independence from the other factors [19].
- Disease prediction—Six studies were carried out [20,22,23,31,32,44] for disease prediction. Precision medicine was utilized in one study to discover risk polymorphisms in hypertension in African Americans that altered left ventricular mass linked with body surface area (LVMI) as a measure of cardiovascular disease risk by using a convolutional neural model [44]. Participants’ demographic information, past medical history, current medical condition, laboratory results, and CMR results are collected to evaluate LVMI [44]. The results showed that feature learning and representation produced better results than others [44]. One study [23] used machine learning approaches random forest model to develop a similar panel to predict incident coronary heart disease. Data from demographics, clinical and genetic data, and epigenetics were used in this study. This study reported a novel precision medicine tool based on DNA that is capable of capturing complicated genetic and environmental risk variables for CHD [23]. Another study gathered predictor factors from the EHR, knowing that they were routinely documented and accessible during the period examined [32]. The study used a regularized logistic regression model to predict 30-day readmission risks for heart failure, and the results can be used to determine patient risk for readmission and to guide clinicians in delivering precise health interventions. A study argued by Broers et al. [22] reported that patients with cardiac problems could improve their prognosis by altering lifestyle factors. Hence, the data modalities that were collected from EHR were demographic data and environmental lifestyle data, e.g., physical activity and sleep tracking. An analysis of the trajectories of outcome variables was performed using a locally weighted error sum of squares (LOESS). Predictors of both progress and deterioration in outcome measures were discovered using the linear mixed-effects regression technique [22]. A study was conducted to establish a foundation for more accurate, individualized risk assessment in individuals with chronic heart failure [31]. The data modalities were from EHR (demographics, clinical data, blood test, ECG) and echocardiography data and all these variables were entered into the multivariable Cox regression model [31]. Cine cardiac magnetic resonance (Cine-CMR) images are used for clinical diagnosis to differentiate between myocardial infarction (MI) and viable tissues/normal cases, where the support vector machine and logistic regression were applied in this study to predict coronary heart diseases [20].
- Dose prediction—Only one study was reported for dose prediction [24]. This study used demographics, clinical characteristics, and medical therapy as input data for regression models based on machine learning methods (random forest, boosted trees, linear regression, and optimal regression tree) [24]. The experimental results showed that data-driven models for customized coronary artery disease (CAD) management using electronic health records significantly improved health outcomes relative to the standard of care. In total, 81.5% AUC for each treatment has been achieved based on medical history and clinical examination results.
3.4.2. Diagnosis
3.4.3. Phenotyping
3.4.4. Risk Stratification
3.5. Artificial Intelligence Algorithms
S. No | AI-Based Models | References |
---|---|---|
1. | Logistic Regression | [19,20,24,27,30,32,33,38,46,48] |
2. | Random forest | [19,23,24,33,40,42,43,46] |
3. | Support Vector Machine | [19,20,33,35,40,42,43] |
4. | Neural Network | [19,26,33,42,44] |
5. | Clustering (Hierarchical clustering) | [36,41] |
6. | Cox regression | [21,22,31,34] |
7. | Gradient boosting | [19,25,33] |
8. | Decision Tree | [19,42] |
9. | Locally Weighted Error Sum of Squares (LOESS) | [22] |
10. | Tensor-Factorization | [28] |
3.6. Datasets
4. Discussion
4.1. Principal Findings
4.2. Practical and Research Implications
Strengths and Limitations
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Informed Consent Statement
Conflicts of Interest
References
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Characteristics | Number of Studies Included |
---|---|
Publication type | |
Journals | n = 26 |
Conference | n = 1 |
Books | n = 1 |
Country | |
United States of America | n = 16 |
United Kingdom | n = 5 |
China | n = 3 |
Netherlands | n = 2 |
Amsterdam, Australia, Belarus, France, Germany, Iran, India, Italy, Slovenia, Switzerland | n = 1 |
Year of publication | |
2020 | n = 5 |
2021 | n = 5 |
2022 | n = 1 |
2018 | n = 5 |
2019 | n = 2 |
2017 | n = 6 |
2016 | n = 2 |
Sample size | |
<1000 | n= 16 |
1000–20,000 | n= 7 |
>20,000 | n= 4 |
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Mohsen, F.; Al-Saadi, B.; Abdi, N.; Khan, S.; Shah, Z. Artificial Intelligence-Based Methods for Precision Cardiovascular Medicine. J. Pers. Med. 2023, 13, 1268. https://doi.org/10.3390/jpm13081268
Mohsen F, Al-Saadi B, Abdi N, Khan S, Shah Z. Artificial Intelligence-Based Methods for Precision Cardiovascular Medicine. Journal of Personalized Medicine. 2023; 13(8):1268. https://doi.org/10.3390/jpm13081268
Chicago/Turabian StyleMohsen, Farida, Balqees Al-Saadi, Nima Abdi, Sulaiman Khan, and Zubair Shah. 2023. "Artificial Intelligence-Based Methods for Precision Cardiovascular Medicine" Journal of Personalized Medicine 13, no. 8: 1268. https://doi.org/10.3390/jpm13081268
APA StyleMohsen, F., Al-Saadi, B., Abdi, N., Khan, S., & Shah, Z. (2023). Artificial Intelligence-Based Methods for Precision Cardiovascular Medicine. Journal of Personalized Medicine, 13(8), 1268. https://doi.org/10.3390/jpm13081268