Prognostic Modeling Of Parkinson'S Disease Progression Using Early Longitudinal Patterns Of Change

MOVEMENT DISORDERS(2021)

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摘要
Incorporating longitudinal information of multiple clinical measures significantly enhances predictive performance of prognostic models. Furthermore, the proposed prognostic index enables clinicians to classify patients into different risk groups, which could be adaptively updated as new longitudinal information becomes available. Modeling of this type allows clinicians to utilize observational data sets that inform on disease natural history and specifically, for precision medicine, allows the insertion of a patient's clinical data to calculate prognostic estimates at the individual case level. © 2021 International Parkinson and Movement Disorder Society.
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关键词
PPMI,functional data analysis,joint modeling,personalized medicine,prediction
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