Estimating Covariate-adjusted Survival Curve in Distributed Data Environment using Data Collaboration Quasi-Experiment
Estimating Covariate-adjusted Survival Curve in Distributed Data Environment using Data Collaboration Quasi-Experiment
In recent years, there has been an increasing demand for privacy-preserving survival analysis using integrated observational data from multiple institutions and data sources. In particular, estimating survival curves adjusted for covariates that account for confounding factors is essential for evaluating the effectiveness of medical treatments. While high-precision estimation of survival curves requires the collection of large amounts of individual-level data, sharing such data is challenging due to privacy concerns and, even if sharing were possible, the communication costs between institutions would be enormous. To address these challenges, this study proposes and evaluates a novel method that leverages an extended data collaboration quasi-experiment, to estimate covariate-adjusted survival curves.
Akira Imakura、Tetsuya Sakurai、Yukihiko Okada、Tomoru Nakayama、Akihiro Toyoda、Yuji Kawamata
医学研究方法医药卫生理论
Akira Imakura,Tetsuya Sakurai,Yukihiko Okada,Tomoru Nakayama,Akihiro Toyoda,Yuji Kawamata.Estimating Covariate-adjusted Survival Curve in Distributed Data Environment using Data Collaboration Quasi-Experiment[EB/OL].(2025-05-09)[2025-06-05].https://arxiv.org/abs/2505.06035.点此复制
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