Time-homogeneous Markov process for HIV/AIDS progression under a combination treatment therapy: cohort study, South Africa.

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Claris Shoko, Delson Chikobvu
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引用次数: 0

Abstract

Background: As HIV enters the human body, its main target is the CD4 cell which it turns into a factory that produces millions of other HIV particles. These HIV particles target new CD4 cells resulting in the progression of HIV infection to AIDS. A continuous depletion of CD4 cells results in opportunistic infections, for example tuberculosis (TB). The purpose of this study is to model and describe the progression of HIV/AIDS disease in an individual on antiretroviral therapy (ART) follow up using a continuous time homogeneous Markov process. A cohort of 319 HIV infected patients on ART follow up at a Wellness Clinic in Bela Bela, South Africa is used in this study. Though Markov models based on CD4 cell counts is a common approach in HIV/AIDS modelling, this paper is unique clinically in that tuberculosis (TB) co-infection is included as a covariate.

Methods: The method partitions the HIV infection period into five CD4-cell count intervals followed by the end points; death, and withdrawal from study. The effectiveness of treatment is analysed by comparing the forward transitions with the backward transitions. The effects of reaction to treatment, TB co-infection, gender and age on the transition rates are also examined. The developed models give very good fit to the data.

Results: The results show that the strongest predictor of transition from a state of CD4 cell count greater than 750 to a state of CD4 between 500 and 750 is a negative reaction to drug therapy. Development of TB during the course of treatment is the greatest predictor of transitions to states of lower CD4 cell count. Transitions from good states to bad states are higher on male patients than their female counterparts. Patients in the cohort spend a greater proportion of their total follow-up time in higher CD4 states.

Conclusion: From some of these findings we conclude that there is need to monitor adverse reaction to drugs more frequently, screen HIV/AIDS patients for any signs and symptoms of TB and check for factors that may explain gender differences further.

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综合疗法下艾滋病毒/艾滋病进展的时间均质马尔可夫过程:南非队列研究。
背景:当艾滋病病毒进入人体后,它的主要目标是 CD4 细胞,并将其变成一个工厂,生产出数以百万计的其他艾滋病病毒颗粒。这些艾滋病毒颗粒以新的 CD4 细胞为目标,导致艾滋病毒感染发展为艾滋病。CD4 细胞的持续耗竭会导致机会性感染,例如肺结核(TB)。本研究的目的是利用连续时间均质马尔可夫过程来模拟和描述接受抗逆转录病毒疗法(ART)随访的个体的艾滋病进展情况。本研究使用了南非贝拉贝拉健康诊所 319 名接受抗逆转录病毒疗法随访的艾滋病毒感染者的队列。虽然基于 CD4 细胞计数的马尔可夫模型是艾滋病建模的常用方法,但本文的独特之处在于将结核病(TB)合并感染作为协变量:方法:该方法将艾滋病毒感染期分为五个 CD4 细胞计数间隔期,然后是终点;死亡和退出研究。通过比较前向转换和后向转换来分析治疗效果。此外,还研究了对治疗的反应、肺结核合并感染、性别和年龄对转换率的影响。所建立的模型与数据非常吻合:结果表明,从 CD4 细胞计数大于 750 到 CD4 细胞计数介于 500 和 750 之间的状态转变的最强预测因素是对药物治疗的负面反应。在治疗过程中出现肺结核是预测 CD4 细胞计数下降的最大因素。男性患者从良好状态过渡到不良状态的比例高于女性患者。队列中的患者在总随访时间中处于较高 CD4 细胞数状态的比例更高:从这些发现中,我们得出结论:有必要更频繁地监测药物的不良反应,筛查艾滋病患者是否有结核病的体征和症状,并进一步检查可能解释性别差异的因素。
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来源期刊
Theoretical Biology and Medical Modelling
Theoretical Biology and Medical Modelling MATHEMATICAL & COMPUTATIONAL BIOLOGY-
自引率
0.00%
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0
审稿时长
6-12 weeks
期刊介绍: Theoretical Biology and Medical Modelling is an open access peer-reviewed journal adopting a broad definition of "biology" and focusing on theoretical ideas and models associated with developments in biology and medicine. Mathematicians, biologists and clinicians of various specialisms, philosophers and historians of science are all contributing to the emergence of novel concepts in an age of systems biology, bioinformatics and computer modelling. This is the field in which Theoretical Biology and Medical Modelling operates. We welcome submissions that are technically sound and offering either improved understanding in biology and medicine or progress in theory or method.
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