An application of Markov chain modeling and semi-parametric regression for recurrent events in health data

Rizwan Suliankatchi Abdulkader, V. Deneshkumar, K. Senthamarai Kannan, Vijayakumar Koyilil, Â. Paes, T. Sebastian
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Abstract

Abstract Longitudinal studies are best suited to describe the evolution of particular health conditions over time. In this study, data on the occurrence and transition of cough among post-operative cardiac surgery patients was analyzed using semi-parametric regression models for recurrent events. Cough severity was recorded as no cough, mild cough and severe cough. Transition probability matrix was calculated for the various transitions and across different covariate categories. Also, mean first passage time (MFPT) was calculated using Markov principles and Monte-Carlo simulation. The Andersen-Gill (AG) and Prentice, Williams and Peterson (PWP) semi-parametric regression models were used to test the effect of covariates on the cough transition. Ninety percent of the patients developed cough on the first post-operative day. The probability of transitioning from no cough to severe cough was 8% but the probability of resolution was just 3%. The mean first passage time from no cough to severe cough was about 7.2 (95% CI 6.8–7.5) days and the resolution time was 13.7 (13.0–14.5) days. The MFPT varied widely across the covariate categories. The regression models did not reveal any major significant influences by the measured covariates and the models without covariates were not significantly different from the covariate models. Applying these statistical techniques can serve as effective tools to help medical decision makers to provide better, consistent, efficient and evidence-based healthcare services.
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马尔可夫链建模和半参数回归在健康数据中反复事件的应用
纵向研究最适合描述特定健康状况随时间的演变。在本研究中,使用复发事件的半参数回归模型分析心脏手术后患者咳嗽发生和转移的数据。咳嗽严重程度分为无咳嗽、轻微咳嗽和严重咳嗽。计算了不同协变量类别的各种转移的转移概率矩阵。利用马尔可夫原理和蒙特卡罗模拟计算平均首次通过时间(MFPT)。采用Andersen-Gill (AG)半参数回归模型和Prentice, Williams和Peterson (PWP)半参数回归模型检验协变量对咳嗽转变的影响。90%的患者在术后第一天出现咳嗽。从无咳嗽过渡到严重咳嗽的概率为8%,但缓解的概率仅为3%。从无咳嗽到严重咳嗽的平均首次通过时间约为7.2 (95% CI 6.8-7.5)天,缓解时间为13.7(13.0-14.5)天。MFPT在协变量类别中差异很大。回归模型未发现测量协变量对回归模型有显著影响,无协变量模型与协变量模型无显著差异。应用这些统计技术可以作为有效的工具,帮助医疗决策者提供更好、一致、高效和基于证据的医疗保健服务。
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