Application of multivariate joint modeling of longitudinal biomarkers and time-to-event data to a rare kidney stone cohort.

Journal of clinical and translational science(2023)

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摘要
Multivariate joint modeling is more flexible than LOCF and may better reflect biological plausibility since biomarkers are not steady-state values between measurements. While LOCF is preferred to naïve methods not accounting for changes in biomarkers over time, results may not accurately reflect flexible relationships that can be captured with multivariate joint modeling.
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关键词
Joint models,biomarkers,kidney failure,primary hyperoxaluria,survival analysis
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