A flexible joint model for multiple longitudinal biomarkers and a time‐to‐event outcome: With applications to dynamic prediction using highly correlated biomarkers
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Publication:6068288
DOI10.1002/BIMJ.202000085zbMath1523.62152arXiv2107.00776OpenAlexW3181108780MaRDI QIDQ6068288
Shan-Peng Li, Robert M. Elashoff, Unnamed Author, Unnamed Author, Gang Li
Publication date: 15 December 2023
Published in: Biometrical Journal (Search for Journal in Brave)
Full work available at URL: https://arxiv.org/abs/2107.00776
longitudinal datacensoringjoint modeldynamic predictionreduced rank functional principle component model
Cites Work
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