Dynamic modeling of hospitalized COVID-19 patients reveals disease state–dependent risk factors

Author:

Soper Braden C1,Cadena Jose2,Nguyen Sam2,Chan Kwan Ho Ryan2,Kiszka Paul3,Womack Lucas3,Work Mark3,Duggan Joan M4,Haller Steven T4,Hanrahan Jennifer A4,Kennedy David J4,Mukundan Deepa5,Ray Priyadip2

Affiliation:

1. Computing Directorate, Lawrence Livermore National Laboratory, Livermore, California, USA

2. Engineering Directorate, Lawrence Livermore National Laboratory, Livermore, California, USA

3. Information Technology Services, ProMedica Health System, Inc, Toledo, Ohio, USA

4. Department of Medicine, University of Toledo College of Medicine and Life Sciences, Toledo, Ohio, USA

5. Department of Pediatrics, University of Toledo College of Medicine and Life Sciences, Toledo, Ohio, USA

Abstract

Abstract Objective The study sought to investigate the disease state–dependent risk profiles of patient demographics and medical comorbidities associated with adverse outcomes of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) infections. Materials and Methods A covariate-dependent, continuous-time hidden Markov model with 4 states (moderate, severe, discharged, and deceased) was used to model the dynamic progression of COVID-19 during the course of hospitalization. All model parameters were estimated using the electronic health records of 1362 patients from ProMedica Health System admitted between March 20, 2020 and December 29, 2020 with a positive nasopharyngeal PCR test for SARS-CoV-2. Demographic characteristics, comorbidities, vital signs, and laboratory test results were retrospectively evaluated to infer a patient’s clinical progression. Results The association between patient-level covariates and risk of progression was found to be disease state dependent. Specifically, while being male, being Black or having a medical comorbidity were all associated with an increased risk of progressing from the moderate disease state to the severe disease state, these same factors were associated with a decreased risk of progressing from the severe disease state to the deceased state. Discussion Recent studies have not included analyses of the temporal progression of COVID-19, making the current study a unique modeling-based approach to understand the dynamics of COVID-19 in hospitalized patients. Conclusion Dynamic risk stratification models have the potential to improve clinical outcomes not only in COVID-19, but also in a myriad of other acute and chronic diseases that, to date, have largely been assessed only by static modeling techniques.

Funder

Lawrence Livermore National Laboratory (LLNL) Laboratory Directed Research and Development (LDRD) Program

University of Toledo Women and Philanthropy Genetic Analysis Instrumentation Center

The University of Toledo Medical Research Society

David and Helen Boone Foundation Research Fund

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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