Analyzing COVID-19 progression with Markov multistage models: insights from a Korean cohort.

Frank Aimee Rodrigue Ndagijimana, Taesung Park
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Abstract

Background: Understanding the progression and recovery process of COVID-19 is crucial for guiding public health strategies and developing targeted interventions. This longitudinal cohort study aims to elucidate the dynamics of COVID-19 severity progression and evaluate the impact of underlying health conditions on these transitions, providing critical insights for more effective disease management.

Methods: Data from 4549 COVID-19 patients admitted to Seoul National University Boramae Medical Center between February 5th, 2020, and October 30th, 2021, were analyzed using a 5-state continuous-time Markov multistate model. The model estimated instantaneous transition rates between different levels of COVID-19 severity, predicted probabilities of state transitions, and determined hazard ratios associated with underlying comorbidities.

Results: The analysis revealed that most patients stabilized in their initial state, with 72.2% of patients with moderate symptoms remaining moderate. Patients with hypertension had a 67.6% higher risk of progressing from moderate to severe, while those with diabetes had an 89.9% higher risk of deteriorating from severe to critical. Although transition rates to death were low early in hospitalization, these comorbidities significantly increased the likelihood of worsening conditions.

Conclusion: This study highlights the utility of continuous-time Markov multistate models in assessing COVID-19 severity progression among hospitalized patients. The findings indicate that patients are more likely to recover than to experience worsening conditions. However, hypertension and diabetes significantly increase the risk of severe outcomes, underscoring the importance of managing these conditions in COVID-19 patients.

用马尔可夫多阶段模型分析COVID-19进展:来自韩国队列的见解
背景:了解COVID-19的进展和恢复过程对于指导公共卫生战略和制定有针对性的干预措施至关重要。这项纵向队列研究旨在阐明COVID-19严重程度进展的动态,并评估潜在健康状况对这些转变的影响,为更有效的疾病管理提供关键见解。方法:采用5状态连续时间马尔可夫多状态模型对2020年2月5日至2021年10月30日在首尔国立大学博拉梅医学中心收治的4549例COVID-19患者的数据进行分析。该模型估计了不同级别COVID-19严重程度之间的瞬时转换率,预测了状态转换的概率,并确定了与潜在合并症相关的风险比。结果:分析显示,大多数患者稳定在初始状态,72.2%的中度症状患者保持中度。高血压患者从中度进展到重度的风险高出67.6%,而糖尿病患者从重度恶化到危重的风险高出89.9%。虽然住院早期的死亡率很低,但这些合并症显著增加了病情恶化的可能性。结论:本研究强调了连续时间马尔可夫多状态模型在评估住院患者COVID-19严重程度进展中的实用性。研究结果表明,患者更有可能康复,而不是经历病情恶化。然而,高血压和糖尿病显著增加了发生严重后果的风险,这凸显了在COVID-19患者中管理这些疾病的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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