Dynamic Classification of Plasmodium vivax Malaria Recurrence: An Application of Classifying Unknown Cause of Failure in Competing Risks.

Journal of data science : JDS Pub Date : 2022-01-01 Epub Date: 2021-12-09 DOI:10.6339/21-jds1026
Yutong Liu, Feng-Chang Lin, Jessica T Lin, Quefeng Li
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引用次数: 1

Abstract

A standard competing risks set-up requires both time to event and cause of failure to be fully observable for all subjects. However, in application, the cause of failure may not always be observable, thus impeding the risk assessment. In some extreme cases, none of the causes of failure is observable. In the case of a recurrent episode of Plasmodium vivax malaria following treatment, the patient may have suffered a relapse from a previous infection or acquired a new infection from a mosquito bite. In this case, the time to relapse cannot be modeled when a competing risk, a new infection, is present. The efficacy of a treatment for preventing relapse from a previous infection may be underestimated when the true cause of infection cannot be classified. In this paper, we developed a novel method for classifying the latent cause of failure under a competing risks set-up, which uses not only time to event information but also transition likelihoods between covariates at the baseline and at the time of event occurrence. Our classifier shows superior performance under various scenarios in simulation experiments. The method was applied to Plasmodium vivax infection data to classify recurrent infections of malaria.

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间日疟原虫疟疾复发的动态分类:未知失败原因分类在竞争风险中的应用。
标准的竞争风险设置要求事件发生时间和失败原因对所有主体都是完全可观察到的。然而,在应用中,故障的原因可能并不总是可见的,从而阻碍了风险评估。在一些极端的情况下,没有一个失败的原因是可观察到的。在治疗后间日疟原虫疟疾复发的病例中,患者可能因先前感染而复发或因蚊虫叮咬而获得新的感染。在这种情况下,当存在竞争风险,即新的感染时,复发的时间无法建模。当无法确定感染的真正原因时,预防以前感染复发的治疗效果可能被低估。在本文中,我们开发了一种在竞争风险设置下对潜在故障原因进行分类的新方法,该方法不仅使用事件信息的时间,而且使用基线和事件发生时协变量之间的转换可能性。在仿真实验中,我们的分类器在各种场景下都表现出优异的性能。将该方法应用于间日疟原虫感染资料,对疟疾复发感染进行分类。
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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