心理干预
事件(粒子物理)
事件数据
医学
计算
计算机科学
老年学
数据科学
精神科
分析
量子力学
算法
物理
作者
Alexander Breskin,Andrew Edmonds,Stephen R. Cole,Daniel Westreich,Jennifer Cocohoba,Mardge H. Cohen,Seble Kassaye,Lisa R. Metsch,Anjali Sharma,Michelle S. Williams,Adaora A. Adimora
摘要
Abstract Background Parametric g-computation is an analytic technique that can be used to estimate the effects of exposures, treatments and interventions; it relies on a different set of assumptions than more commonly used inverse probability weighted estimators. Whereas prior work has demonstrated implementations for binary exposures and continuous outcomes, use of parametric g-computation has been limited due to difficulty in implementation in more typical complex scenarios. Methods We provide an easy-to-implement algorithm for parametric g-computation in the setting of a dynamic baseline intervention of a baseline exposure and a time-to-event outcome. To demonstrate the use of our algorithm, we apply it to estimate the effects of interventions to reduce area deprivation on the cumulative incidence of sexually transmitted infections (STIs: gonorrhea, chlamydia or trichomoniasis) among women living with HIV in the Women’s Interagency HIV Study. Results We found that reducing area deprivation by a maximum of 1 tertile for all women would lead to a 2.7% [95% confidence interval (CI): 0.1%, 4.3%] reduction in 4-year STI incidence, and reducing deprivation by a maximum of 2 tertiles would lead to a 4.3% (95% CI: 1.9%, 6.4%) reduction. Conclusions As analytic methods such as parametric g-computation become more accessible, epidemiologists will be able to estimate policy-relevant effects of interventions to better inform clinical and public health practice and policy.
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