Computational framework to understand the clinical stages of COVID‐19 and visualization of time course for various treatment strategies

Author:

Sharma Surbhi1ORCID,Sarkar Rahuldeb23,Mitra Kishalay1,Giri Lopamudra1ORCID

Affiliation:

1. Department of Chemical Engineering Indian Institute of Technology Hyderabad, Kandi Sangareddy Telangana India

2. Departments of Respiratory Medicine and Critical Care Medway NHS Foundation Trust Gillingham Kent UK

3. Faculty of Life Sciences King's College London London UK

Abstract

AbstractCoronavirus disease 2019 is known to be regulated by multiple factors such as delayed immune response, impaired T cell activation, and elevated levels of proinflammatory cytokines. Clinical management of the disease remains challenging due to interplay of various factors as drug candidates may elicit different responses depending on the staging of the disease. In this context, we propose a computational framework which provides insights into the interaction between viral infection and immune response in lung epithelial cells, with an aim of predicting optimal treatment strategies based on infection severity. First, we formulate the model for visualizing the nonlinear dynamics during the disease progression considering the role of T cells, macrophages and proinflammatory cytokines. Here, we show that the model is capable of emulating the dynamic and static data trends of viral load, T cell, macrophage levels, interleukin (IL)‐6 and TNF‐α levels. Second, we demonstrate the ability of the framework to capture the dynamics corresponding to mild, moderate, severe, and critical condition. Our result shows that, at late phase (>15 days), severity of disease is directly proportional to pro‐inflammatory cytokine IL6 and tumor necrosis factor (TNF)‐α levels and inversely proportional to the number of T cells. Finally, the simulation framework was used to assess the effect of drug administration time as well as efficacy of single or multiple drugs on patients. The major contribution of the proposed framework is to utilize the infection progression model for clinical management and administration of drugs inhibiting virus replication and cytokine levels as well as immunosuppressant drugs at various stages of the disease.

Publisher

Wiley

Subject

Applied Microbiology and Biotechnology,Bioengineering,Biotechnology

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