在对有随访的流行病学或临床研究进行分析时,何时以及如何分割随访时间。

IF 3.7 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Masao Iwagami, Miho Ishimaru, Yoshinori Takeuchi, Tomohiro Shinozaki
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引用次数: 0

摘要

在有随访的流行病学或临床研究中,为进行统计分析而生成和处理的数据表通常是 "宽格式 "的--每个人只有一行。但是,根据研究的具体情况和目的,可能需要将其转换为 "长格式 "类型,即允许每个个体有多行。本教程阐明了建议研究人员分割随访时间以生成长格式数据表的典型情况。在此类应用中,主要的分析目的包括:(i) 根据特定的随访时间段,估计≥ 2 组之间的结果发生率或其比率;(ii) 检查暴露状态与随访时间之间的交互作用,以评估 Cox 模型中的比例危险假设;(iii) 出于描述性或预测性目的处理时变暴露;(iv) 估计时变暴露的因果效应,同时调整可能受过去暴露影响的时变混杂因素;以及 (v) 在自控病例系列分析中比较同一个体的不同时间段。本教程还讨论了如何在实际设置中根据目的分割随访时间,并提供了 Stata、R 和 SAS 中的示例代码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
When and how to split the follow-up time in the analysis of epidemiological or clinical studies with follow-ups.

In epidemiological or clinical studies with follow-ups, data tables generated and processed for statistical analysis are often of the "wide-format" type-consisting of one row per individual. However, depending on the situation and purpose of the study, they may need to be transformed into the "long-format" type-which allows for multiple rows per individual. This tutorial clarifies the typical situations wherein researchers are recommended to split follow-up times to generate long-format data tables. In such applications, the major analytical aims consist of (i) estimating the outcome incidence rates or their ratios between ≥ 2 groups, according to specific follow-up time periods; (ii) examining the interaction between the exposure status and follow-up time to assess the proportional hazards assumption in Cox models; (iii) dealing with time-varying exposures for descriptive or predictive purposes; (iv) estimating the causal effects of time-varying exposures while adjusting for time-varying confounders that may be affected by past exposures; and (v) comparing different time periods within the same individual in self-controlled case series analyses. This tutorial also discusses how to split follow-up times according to their purposes in practical settings, providing example codes in Stata, R, and SAS.

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来源期刊
Journal of Epidemiology
Journal of Epidemiology 医学-公共卫生、环境卫生与职业卫生
CiteScore
7.50
自引率
4.30%
发文量
172
审稿时长
6-12 weeks
期刊介绍: The Journal of Epidemiology is the official open access scientific journal of the Japan Epidemiological Association. The Journal publishes a broad range of original research on epidemiology as it relates to human health, and aims to promote communication among those engaged in the field of epidemiological research and those who use epidemiological findings.
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