Clustering based on adherence data.

Sylvia Kiwuwa-Muyingo, Hannu Oja, Sarah A Walker, Pauliina Ilmonen, Jonathan Levin, Jim Todd
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引用次数: 7

Abstract

Adherence to a medical treatment means the extent to which a patient follows the instructions or recommendations by health professionals. There are direct and indirect ways to measure adherence which have been used for clinical management and research. Typically adherence measures are monitored over a long follow-up or treatment period, and some measurements may be missing due to death or other reasons. A natural question then is how to describe adherence behavior over the whole period in a simple way. In the literature, measurements over a period are usually combined just by using averages like percentages of compliant days or percentages of doses taken. In the paper we adapt an approach where patient adherence measures are seen as a stochastic process. Repeated measures are then analyzed as a Markov chain with finite number of states rather than as independent and identically distributed observations, and the transition probabilities between the states are assumed to fully describe the behavior of a patient. The patients can then be clustered or classified using their estimated transition probabilities. These natural clusters can be used to describe the adherence of the patients, to find predictors for adherence, and to predict the future events. The new approach is illustrated and shown to be useful with a simple analysis of a data set from the DART (Development of AntiRetroviral Therapy in Africa) trial in Uganda and Zimbabwe.

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基于依从性数据的聚类。
坚持治疗是指病人遵守卫生专业人员的指示或建议的程度。有直接和间接的方法来衡量依从性,已用于临床管理和研究。通常,依从性措施是在长期随访或治疗期间监测的,有些措施可能因死亡或其他原因而缺失。那么一个自然的问题就是如何用一种简单的方式来描述整个时期的坚持行为。在文献中,一段时间内的测量通常只是通过使用平均值来组合,比如依从天数的百分比或服用剂量的百分比。在本文中,我们采用了一种方法,其中患者依从性措施被视为一个随机过程。然后将重复测量作为具有有限个数状态的马尔可夫链进行分析,而不是作为独立和同分布的观察,并且假设状态之间的转移概率以充分描述患者的行为。然后可以使用估计的转移概率对患者进行聚类或分类。这些自然聚类可以用来描述患者的依从性,找到依从性的预测因子,并预测未来的事件。通过对乌干达和津巴布韦开展的DART(非洲抗逆转录病毒疗法开发)试验的一组数据的简单分析,说明了这种新方法的有效性。
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