Using machine learning of clinical data to diagnose COVID-19: a systematic review and meta-analysis

Author:

Li Wei Tse,Ma Jiayan,Shende Neil,Castaneda Grant,Chakladar Jaideep,Tsai Joseph C.,Apostol Lauren,Honda Christine O.,Xu Jingyue,Wong Lindsay M.,Zhang Tianyi,Lee Abby,Gnanasekar Aditi,Honda Thomas K.,Kuo Selena Z.,Yu Michael Andrew,Chang Eric Y.,Rajasekaran Mahadevan “ Raj”,Ongkeko Weg M.ORCID

Abstract

Abstract Background The recent Coronavirus Disease 2019 (COVID-19) pandemic has placed severe stress on healthcare systems worldwide, which is amplified by the critical shortage of COVID-19 tests. Methods In this study, we propose to generate a more accurate diagnosis model of COVID-19 based on patient symptoms and routine test results by applying machine learning to reanalyzing COVID-19 data from 151 published studies. We aim to investigate correlations between clinical variables, cluster COVID-19 patients into subtypes, and generate a computational classification model for discriminating between COVID-19 patients and influenza patients based on clinical variables alone. Results We discovered several novel associations between clinical variables, including correlations between being male and having higher levels of serum lymphocytes and neutrophils. We found that COVID-19 patients could be clustered into subtypes based on serum levels of immune cells, gender, and reported symptoms. Finally, we trained an XGBoost model to achieve a sensitivity of 92.5% and a specificity of 97.9% in discriminating COVID-19 patients from influenza patients. Conclusions We demonstrated that computational methods trained on large clinical datasets could yield ever more accurate COVID-19 diagnostic models to mitigate the impact of lack of testing. We also presented previously unknown COVID-19 clinical variable correlations and clinical subgroups.

Funder

Office of the President, University of California

Publisher

Springer Science and Business Media LLC

Subject

Health Informatics,Health Policy,Computer Science Applications

Reference23 articles.

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