Clinical Application of Detecting COVID-19 Risks: A Natural Language Processing Approach
Abstract
:1. Background
- We develop a biomedical NER pipeline to identify clinical as well as non-clinical named entities from the COVID-19 texts. We attempt to consolidate and explain data science best practices through this pipeline, with numerous convenient features that can be used as it is or as a starting point for further customization and improvement.
- We develop a new dataset by curating a large number of scientific publications and case reports on COVID-19, and we scientifically parse the text from these scientific articles and prepare a dataset from it. We annotate a part of this dataset on biomedical-named entities to prepare a gold-standard dataset to train the NER pipeline. A portion of the gold-standard dataset is also reserved as a test set.
- We de-identify the patients’ personal information after identifying the named entities, thus adhering to the Health Insurance Portability and Accountability Act (HIPAA) [13].
- We demonstrate the efficacy and utility of this pipeline by comparing it with the state-of-the-art methods on public benchmark datasets. We also show the key findings related to COVID-19 in the analysis.
2. Previous Work
3. Materials and Methods
3.1. Data Cohort
- We specify the timeline between November 2021 and March 2022 for data collection.
- We specify English as the language to get the publications.
- We exclude many early-pandemic scientific articles, the intuition being that the disease symptoms and diagnosis, drugs and vaccination information were not clear during that time.
- We specify the population groups in adults: 19–44 years, middle-aged: 45–64 years, aged: 65+ years, during data collection.
3.2. Biomedical Named Entity Recognition Pipeline Structure
3.3. Evaluation
- -
- Micro-average F1 to measures the F1-score of aggregated contributions of all classes.
- -
- Macro-average F1that adds all the measures (Precision, Recall, or F-Measure) and divides with the number of labels, which is more like an average.
4. Results
4.1. Comparison with Baseline Methods
4.2. Pandemic Surveillance
5. Discussion
5.1. Implications in Healthcare
5.2. Transfer Learning
5.3. Limitations
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Benchmark Datasets | ||
---|---|---|
Corpus | Entity Types | Data Size |
NCBI-Disease [15] | Diseases | 793 PubMed abstracts |
BC5CDR [16] | Diseases | 1500 PubMed articles |
BC5CDR [16] | Chemicals | 1500 PubMed articles |
BC4CHEMD [17] | Chemicals | 10,000 PubMed abstracts |
BC2GM [18] | Gene/Proteins | 20,000 sentences |
JNLPBA [19] | Genes, proteins | 2404 abstracts |
i2b2-Clinical [20] | Problem, Treatment, and Test. | 426 discharge summaries |
I2b2 2012 [21] | Clinical (problems, tests, treatments, clinical departments, occurrences (admission, discharge) and evidence). | 310 discharge summaries |
Benchmark methods | ||
Method | Description | |
BiLSTM-CRF [22] | Bidirectional Long short-term memory (LSTM) and Conditional random field (CRF) architecture for NER. | |
BiLSTM-CNN-Char [23] | A hybrid LSTM and Convolutional Neural Network (CNN) architecture that learns both character-level and word-level features for the NER task. | |
BiLSTM-CRF-MTL [24] | A multi-task learning (MTL) framework with a BiLSTM-CRF model to collectively use the training data of different types of entities. | |
Att-BiLSTM-CRF [25], | Attention (Att) based BiLSTM model with a CRF layer for chemical NER task. | |
Doc-Att-BiLSTM-CRF [26] | Document (Doc)-level Attention (Att)-based BiLSTM-CRF network for disease NER task. | |
MCNN [27] | A multiple (M) label CNN-based network for disease NER from biomedical literature. | |
CollaboNet [28] | A collaboration of deep neural networks, i.e., BiLSTM-CRF with a single task model trained for each specific entity type. | |
SciBERT [29] | A pre-trained language model based on Bidirectional Encoder Representations from Transformers (BERT) pretrained on a large multi-domain corpus of scientific publications to improve performance on downstream scientific tasks including NER. | |
BioBERT [30] | A pre-trained biomedical language representation model based on BERT for biomedical text mining |
Entity Type | Entities |
---|---|
Clinical name entities | Admission (patient admission status), oncology (tumor/cancer), blood pressure, respiration (e.g., shortness of breath), dosage (amount of medicine/drug taken), vital signs, symptoms, kidney disease, temperature (body), diabetes, vaccine, time (days, weeks or so), obesity (status), BMI, height (of patient), heart disease, pulse, hypertension, drug name, cerebrovascular disease, disease, treatment, clinical department, weight (of patient), admission/discharge (from hospital), modifier (modifies the current state), external body part, test, strength, route, test result. |
Non-clinical entities | Name (of patient), location, date, relative date, duration, relationship status, social status, family history (family members, alone, with family, homeless), employment status, race/ethnicity, gender, social history, sexual orientation, diet (food type, nutrients, minerals), alcohol, smoking. |
Hyperparameter | Optimal Value (Values Used) |
---|---|
Learning rate | 1 × 10−3 (1 × 10−2, 1 × 10−3, 1 × 10−5, 2 × 10−5, 5 × 10−5, 3 × 10−4) |
Batch size | 64 (8, 16, 32, 64, 128) |
Epochs | 30 ({2, 3, …, 30}) |
LSTM state size | 200 (200, 250) |
Dropout rate | 0.5 ({0.3, 0.35, …, 0.7}) |
Optimizer | Adam |
CNN filters | 2 (2, 3, 4, 5) |
Hidden Size | 768 |
Embedding Size | 128 |
Max Seq Length | 512 |
Warmup Steps | 3000 |
Methods/ Dataset | Metric | NCBI | BC5CDR | BC2GM | JNLPBA | i2b2-Clinical | Our Dataset |
---|---|---|---|---|---|---|---|
BiLSTM-CRF | micro | 85.80 | 84.22 | 78.46 | 74.29 | 83.66 | 87.10 |
macro | 86.12 | 85.09 | 80.01 | 75.10 | 84.01 | 88.01 | |
BiLSTM-CRF-MTL | micro | 86.46 | 84.94 | 80.34 | 77.03 | 82.38 | 88.39 |
macro | 88.01 | 85.00 | 81.12 | 77.14 | 83.96 | 88.97 | |
CT-BERT | micro | 77.50 | 76.85 | 74.10 | 68.00 | 77.07 | 78.10 |
macro | 78.50 | 77.96 | 75.37 | 68.98 | 78.01 | 78.98 | |
SciBERT | micro | 82.88 | 82.94 | 84.08 | 75.77 | 78.19 | 80.95 |
macro | 83.32 | 83.13 | 85.84 | 77.01 | 79.10 | 81.14 | |
BioBERT-Base v1.0 | micro | 84.01 | 86.56 | 78.68 | 86.28 | 85.87 | 84.01 |
macro | 79.10 | 78.90 | 79.00 | 78.13 | 72.18 | 79.10 | |
BioBERT-Base v1.1 | micro | 88.52 | 87.15 | 79.39 | 76.16 | 86.27 | 88.52 |
macro | 85.89 | 87.10 | 87.18 | 75.45 | 87.78 | 85.89 | |
BioBERT-Base v1.2 | micro | 89.12 | 87.81 | 83.34 | 76.45 | 86.88 | 89.12 |
macro | 86.78 | 87.89 | 86.07 | 75.15 | 86.98 | 86.78 | |
Our approach | micro | 90.58 | 89.90 | 89.15 | 79.92 | 89.10 | 94.78 |
macro | 91.83 | 90.34 | 90.38 | 80.94 | 90.48 | 95.37 |
Model | Macro |
---|---|
BiLSTM-CNN-CRF | 94.18 ± 0.12 |
BiLSTM-CNN | 87.37 ± 0.02 |
Map-CNN-CRF | 80.55 ± 0.03 |
Map-CNN | 69.25 ± 0.04 |
Entity | TP | FP | FN | Prec | Recall | F1 |
---|---|---|---|---|---|---|
Disease | 818 | 98 | 112 | 0.89 | 0.88 | 0.89 |
Gender | 390 | 78 | 101 | 0.83 | 0.79 | 0.81 |
Employment | 234 | 29 | 132 | 0.89 | 0.64 | 0.74 |
Race_Ethnicity | 334 | 65 | 96 | 0.84 | 0.78 | 0.81 |
Smoking | 309 | 24 | 97 | 0.93 | 0.76 | 0.84 |
Psychological_Condition | 218 | 29 | 58 | 0.88 | 0.79 | 0.83 |
Death_Entity | 387 | 34 | 103 | 0.92 | 0.79 | 0.85 |
BMI | 146 | 12 | 29 | 0.92 | 0.83 | 0.88 |
Diabetes | 157 | 10 | 28 | 0.94 | 0.85 | 0.89 |
Macro-average | 2993 | 379 | 756 | 0.89 | 0.79 | 0.84 |
Micro-average | 2993 | 379 | 756 | 0.89 | 0.80 | 0.84 |
Drugs | Vaccine | Non-Medical Treatments |
---|---|---|
Hydroxychloroquine | Pfizer-BioNTech | Isolation |
Paxlovid | Moderna | Wear masks |
Actemra | AstraZeneca | Vaccination |
Immunomodulators | CoronaVac | Oxygen support |
Steroid | BBIBP-CorV | Medication |
Amoxicillin | Janssen | Hand sanitization |
Sentence | Begin | End | Chunks | Biomedical Entity | Confidence |
---|---|---|---|---|---|
0 | 2 | 12 | 73-year-old | Age | 1.00 |
0 | 14 | 18 | woman | Gender | 1.00 |
0 | 32 | 43 | Fever Clinic | Clinical Department | 0.98 |
0 | 52 | 65 | First Hospital | Clinical Department | 0.51 |
0 | 109 | 134 | Fever, temperature | Symptom | 0.80 |
0 | 156 | 160 | Cough | Symptom | 0.99 |
0 | 163 | 175 | Expectoration | Symptom | 1.00 |
0 | 178 | 196 | Shortness of breath | Symptom | 0.39 |
0 | 203 | 218 | General weakness | Symptom | 0.77 |
0 | 233 | 244 | Prior 5 days | Relative Date | 0.42 |
1 | 247 | 249 | She | Gender | 1.00 |
1 | 261 | 264 | Mild | Modifier | 0.90 |
1 | 266 | 273 | Diarrhea | Symptom | 1.00 |
1 | 280 | 289 | Stools/day | Symptom | 0.85 |
1 | 292 | 303 | 2 days prior | Relative Date | 0.68 |
1 | 322 | 329 | Hospital | Clinical Department | 1.00 |
1 | 386 | 402 | COVID-19 positive | Disease Syndrome | 0.90 |
1 | 436 | 454 | Healthcare provider | Employment | 0.94 |
2 | 486 | 494 | Cirrhosis | Disease Syndrome | 0.96 |
2 | 500 | 514 | Type 2 diabetes | Diabetes | 0.95 |
2 | 535 | 541 | Smoking | Smoking | 1.00 |
2 | 546 | 553 | Drinking | Alcohol | 0.93 |
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Bashir, S.R.; Raza, S.; Kocaman, V.; Qamar, U. Clinical Application of Detecting COVID-19 Risks: A Natural Language Processing Approach. Viruses 2022, 14, 2761. https://doi.org/10.3390/v14122761
Bashir SR, Raza S, Kocaman V, Qamar U. Clinical Application of Detecting COVID-19 Risks: A Natural Language Processing Approach. Viruses. 2022; 14(12):2761. https://doi.org/10.3390/v14122761
Chicago/Turabian StyleBashir, Syed Raza, Shaina Raza, Veysel Kocaman, and Urooj Qamar. 2022. "Clinical Application of Detecting COVID-19 Risks: A Natural Language Processing Approach" Viruses 14, no. 12: 2761. https://doi.org/10.3390/v14122761
APA StyleBashir, S. R., Raza, S., Kocaman, V., & Qamar, U. (2022). Clinical Application of Detecting COVID-19 Risks: A Natural Language Processing Approach. Viruses, 14(12), 2761. https://doi.org/10.3390/v14122761