Prediction of Survival of HIV/AIDS Patients from Various Sources of Data Using AFT Models

Markos Abiso Erango, A. Goshu
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引用次数: 2

Abstract

The aim of this paper is to predict and compare the survival of HIV/AIDS patients under ART follow-up in three different hospitals in Ethiopia. Three data sets with total1304 patients were considered.Three parametric accelerated failure time distributions: lognormal, loglogistic and Weibull are used to analyze, predict and compare survival probabilities of the patients. The results indicate that the empirical hazard rates of the three data sets reveal maximal peaks. The patients from Arba Minch hospital seems to have highest event intensity. The AFT loglogistic model is selected to best fit to each of the data sets.Different covariates except TB infection status are found to affect patients' survival at each of the hospitals. Patients with TB infection at baseline tend to have shorter survival time as compare to one with no TB infection, with significant differences of survive time between the two groups. Patients under follow-up at Shashemene hospital tend have consistently highest survival probabilities in both TB positive and negative groups. Patients from Bale Robe hospital tend to have longest survival time, while those from Arba Minch hospital have shortest survival time.Patients with bedridden status have the shortest survival time.The AFT-loglogistic is recommended in modelling time-to-event data considered in this study. The results are unique to each hospital implying that patients' care and intervention needs to be specific.
利用AFT模型从各种数据来源预测HIV/AIDS患者的生存
本文的目的是预测和比较在埃塞俄比亚三家不同医院接受抗逆转录病毒治疗的艾滋病毒/艾滋病患者的生存率。三个数据集共1304例患者。三种参数加速失效时间分布:对数正态分布、逻辑分布和威布尔分布用于分析、预测和比较患者的生存概率。结果表明,3个数据集的经验危险率均出现最大峰值。Arba Minch医院的患者似乎具有最高的事件强度。选择AFT物流模型以最适合每个数据集。除结核感染状况外,不同的协变量影响患者在各医院的生存。基线时有结核感染的患者的生存时间往往比无结核感染的患者短,两组患者的生存时间有显著差异。在沙什梅内医院接受随访的患者,无论是结核病阳性组还是阴性组,生存率始终最高。Bale Robe医院的患者生存时间最长,Arba Minch医院的患者生存时间最短。卧床病人的生存时间最短。在本研究中,建议采用aft - logistic模型对事件时间数据进行建模。每个医院的结果都是独特的,这意味着患者的护理和干预需要是具体的。
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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