Lee Hana, Hogan Joseph W, Genberg Becky L, Wu Xiaotian K, Musick Beverly S, Mwangi Ann, Braitstein Paula
Department of Biostatistics, Brown University, 121 S. Main Street, Providence, 02912, RI, USA.
Academic Model Providing Access to Healthcare (AMPATH), Eldoret, Kenya.
Stat Med. 2018 Jan 30;37(2):302-319. doi: 10.1002/sim.7502. Epub 2017 Nov 22.
The human immunodeficiency virus (HIV) care cascade is a conceptual model used to outline the benchmarks that reflects effectiveness of HIV care in the whole HIV care continuum. The models can be used to identify barriers contributing to poor outcomes along each benchmark in the cascade such as disengagement from care or death. Recently, the HIV care cascade has been widely applied to monitor progress towards HIV prevention and care goals in an attempt to develop strategies to improve health outcomes along the care continuum. Yet, there are challenges in quantifying successes and gaps in HIV care using the cascade models that are partly due to the lack of analytic approaches. The availability of large cohort data presents an opportunity to develop a coherent statistical framework for analysis of the HIV care cascade. Motivated by data from the Academic Model Providing Access to Healthcare, which has provided HIV care to nearly 200,000 individuals in Western Kenya since 2001, we developed a state transition framework that can characterize patient-level movements through the multiple stages of the HIV care cascade. We describe how to transform large observational data into an analyzable format. We then illustrate the state transition framework via multistate modeling to quantify dynamics in retention aspects of care. The proposed modeling approach identifies the transition probabilities of moving through each stage in the care cascade. In addition, this approach allows regression-based estimation to characterize effects of (time-varying) predictors of within and between state transitions such as retention, disengagement, re-entry into care, transfer-out, and mortality. Copyright © 2017 John Wiley & Sons, Ltd.
人类免疫缺陷病毒(HIV)照护级联是一种概念模型,用于勾勒反映整个HIV照护连续过程中HIV照护效果的基准。该模型可用于识别在级联中的每个基准上导致不良结果的障碍,如失访或死亡。最近,HIV照护级联已被广泛应用于监测在实现HIV预防和照护目标方面的进展情况,试图制定策略以改善整个照护连续过程中的健康结果。然而,使用级联模型来量化HIV照护中的成功与差距存在挑战,部分原因是缺乏分析方法。大型队列数据的可用性为开发一个连贯的统计框架以分析HIV照护级联提供了契机。受“提供医疗服务学术模型”数据的启发(该模型自2001年以来已为肯尼亚西部近20万人提供了HIV照护),我们开发了一个状态转换框架,该框架可以描述患者在HIV照护级联的多个阶段中的个体层面的动态变化。我们描述了如何将大型观测数据转换为可分析的格式。然后,我们通过多状态建模来说明状态转换框架,以量化照护留存方面的动态变化。所提出的建模方法确定了在照护级联中每个阶段的转换概率。此外,这种方法允许基于回归的估计来描述(随时间变化的)状态内和状态间转换的预测因素(如留存、失访、重新接受照护、转出和死亡)的影响。版权所有© 2017约翰·威利父子有限公司。