Liu Tao, Hogan Joseph W, Wang Lisa, Zhang Shangxuan, Kantor Rami
Assistant Professor, Department of Biostatistics, Center for Statistical Sciences, Brown University School of Public Health, Providence, RI 02912.
Professor, Department of Biostatistics, Center for Statistical Sciences, Brown University School of Public Health, Providence, RI 02912.
J Am Stat Assoc. 2013 Jan 1;108(504):1173-1188. doi: 10.1080/01621459.2013.810149.
The World Health Organization (WHO) guidelines for monitoring the effectiveness of HIV treatment in resource-limited settings (RLS) are mostly based on clinical and immunological markers (e.g., CD4 cell counts). Recent research indicates that the guidelines are inadequate and can result in high error rates. Viral load (VL) is considered the "gold standard", yet its widespread use is limited by cost and infrastructure. In this paper, we propose a diagnostic algorithm that uses information from routinely-collected clinical and immunological markers to guide a selective use of VL testing for diagnosing HIV treatment failure, under the assumption that VL testing is available only at a certain portion of patient visits. Our algorithm identifies the patient sub-population, such that the use of limited VL testing on them minimizes a pre-defined risk (e.g., misdiagnosis error rate). Diagnostic properties of our proposal algorithm are assessed by simulations. For illustration, data from the Miriam Hospital Immunology Clinic (RI, USA) are analyzed.
世界卫生组织(WHO)针对资源有限环境(RLS)中监测HIV治疗效果的指南大多基于临床和免疫标志物(如CD4细胞计数)。近期研究表明这些指南并不完善,可能导致高错误率。病毒载量(VL)被视为“金标准”,但其广泛应用受到成本和基础设施的限制。在本文中,我们提出一种诊断算法,该算法利用常规收集的临床和免疫标志物信息,在假设仅在部分患者就诊时可进行VL检测的情况下,指导选择性地使用VL检测来诊断HIV治疗失败。我们的算法识别出患者亚群,以便对他们进行有限的VL检测能将预定义风险(如误诊错误率)降至最低。通过模拟评估我们提出的算法的诊断特性。为作说明,分析了美国罗德岛米里亚姆医院免疫诊所的数据。