著者
Tomohiro Shinozaki Etsuji Suzuki
出版者
Japan Epidemiological Association
雑誌
Journal of Epidemiology (ISSN:09175040)
巻号頁・発行日
vol.30, no.9, pp.377-389, 2020-09-05 (Released:2020-09-05)
参考文献数
84
被引用文献数
13 20

Epidemiologists are increasingly encountering complex longitudinal data, in which exposures and their confounders vary during follow-up. When a prior exposure affects the confounders of the subsequent exposures, estimating the effects of the time-varying exposures requires special statistical techniques, possibly with structural (ie, counterfactual) models for targeted effects, even if all confounders are accurately measured. Among the methods used to estimate such effects, which can be cast as a marginal structural model in a straightforward way, one popular approach is inverse probability weighting. Despite the seemingly intuitive theory and easy-to-implement software, misunderstandings (or “pitfalls”) remain. For example, one may mistakenly equate marginal structural models with inverse probability weighting, failing to distinguish a marginal structural model encoding the causal parameters of interest from a nuisance model for exposure probability, and thereby failing to separate the problems of variable selection and model specification for these distinct models. Assuming the causal parameters of interest are identified given the study design and measurements, we provide a step-by-step illustration of generalized computation of standardization (called the g-formula) and inverse probability weighting, as well as the specification of marginal structural models, particularly for time-varying exposures. We use a novel hypothetical example, which allows us access to typically hidden potential outcomes. This illustration provides steppingstones (or “tips”) to understand more concretely the estimation of the effects of complex time-varying exposures.

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【解説】痒い所に手が届く補足が散りばめられ、教育的な講義だと感じる。時間依存性治療の効果推定はTomo先生の論文で復習する。帰りのバスでは読み切れない。https://t.co/grfVU5xKOC
・Understanding Marginal Structural Models for Time-Varying Exposures: Pitfalls and Tips, Journal of Epidemiology, 2020 Volume 30 Issue 9 Pages 377-389 https://t.co/ix0Qo0rd0g
これはすごいSASコードも載っている。周辺構造モデル。MSM » Understanding Marginal Structural Models for Time-Varying Exposures: Pitfalls and Tips https://t.co/E51tCY7Tad
Most viewed on J-Stage: Understanding Marginal Structural Models for Time-Varying Exposures: Pitfalls and Tips Tomohiro Shinozaki, Etsuji Suzuki https://t.co/IOLa8hDpyC https://t.co/oHyGKaAiE1

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