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An Interpretable Machine Learning Framework for Accurate Severe vs Non-severe COVID-19 Clinical Type Classification
Yuanfang Chen; Liu Ouyang; Sheng Bao; Qian Li; Lei Han; Hengdong Zhang; Baoli Zhu; Ming Xu; Jie Liu; Yaorong Ge; Shi Chen.
Afiliação
  • Yuanfang Chen; Institute of HIV/AIDS/STI Prevention and Control, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing 210009, China
  • Liu Ouyang; Department of Orthopaedics, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan 430022, China
  • Sheng Bao; Department of Computer Science, Iowa State University, USA
  • Qian Li; Department of Pediatrics, Affiliated Kunshan Hospital of Jiangsu University, Kunshan 215300, China
  • Lei Han; Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing 210009, China
  • Hengdong Zhang; Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing 210009, China
  • Baoli Zhu; Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing 210009, China
  • Ming Xu; Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing 210009, China
  • Jie Liu; Department of Radiology, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan 430022, China
  • Yaorong Ge; Department of Software and Information Systems, UNC Charlotte, Charlotte, NC 28223, USA
  • Shi Chen; Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC 28262, USA
Preprint em Inglês | medRxiv | ID: ppmedrxiv-20105841
ABSTRACT
Effectively and efficiently diagnosing COVID-19 patients with accurate clinical type is essential to achieve optimal outcomes for the patients as well as reducing the risk of overloading the healthcare system. Currently, severe and non-severe COVID-19 types are differentiated by only a few clinical features, which do not comprehensively characterize complicated pathological, physiological, and immunological responses to SARS-CoV-2 invasion in different types. In this study, we recruited 214 confirmed COVID-19 patients in non-severe and 148 in severe type, from Wuhan, China. The patients comorbidity and symptoms (26 features), and blood biochemistry (26 features) upon admission were acquired as two input modalities. Exploratory analyses demonstrated that these features differed substantially between two clinical types. Machine learning random forest (RF) models using features in each modality were developed and validated to classify COVID-19 clinical types. Using comorbidity/symptom and biochemistry as input independently, RF models achieved >90% and >95% predictive accuracy, respectively. Input features importance based on Gini impurity were further evaluated and top five features from each modality were identified (age, hypertension, cardiovascular disease, gender, diabetes; D-Dimer, hsTNI, neutrophil, IL-6, and LDH). Combining top 10 multimodal features, RF model achieved >99% predictive accuracy. These findings shed light on how the human body reacts to SARS-CoV-2 invasion as a unity and provide insights on effectively evaluating COVID-19 patients severity and developing treatment plans accordingly. We suggest that symptoms and comorbidities can be used as an initial screening tool for triaging, while biochemistry and features combined are applied when accuracy is the priority. One Sentence SummaryWe trained and validated machine learning random forest (RF) models to predict COVID-19 severity based on 26 comorbidity/symptom features and 26 biochemistry features from a cohort of 214 non-severe and 148 severe type COVID-19 patients, identified top features from both feature modalities to differentiate clinical types, and achieved predictive accuracy of >90%, >95%, and >99% when comorbidity/symptom, biochemistry, and combined top features were used as input, respectively.
Licença
cc_by_nc_nd
Texto completo: Disponível Coleções: Preprints Base de dados: medRxiv Tipo de estudo: Cohort_studies / Experimental_studies / Estudo observacional / Estudo prognóstico / Rct Idioma: Inglês Ano de publicação: 2020 Tipo de documento: Preprint
Texto completo: Disponível Coleções: Preprints Base de dados: medRxiv Tipo de estudo: Cohort_studies / Experimental_studies / Estudo observacional / Estudo prognóstico / Rct Idioma: Inglês Ano de publicação: 2020 Tipo de documento: Preprint
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