Construction of longitudinal prediction targets using semisupervised learning

Booil Jo, Robert L. Findling, Trevor J. Hastie, Eric A. Youngstrom, Chen Pin Wang, L. Eugene Arnold, Mary A. Fristad, Thomas W. Frazier, Boris Birmaher, Mary K. Gill, Sarah Mc Cue Horwitz

Producción científica: Articlerevisión exhaustiva

6 Citas (Scopus)


In establishing prognostic models, often aided by machine learning methods, much effort is concentrated in identifying good predictors. However, the same level of rigor is often absent in improving the outcome side of the models. In this study, we focus on this rather neglected aspect of model development. We are particularly interested in the use of longitudinal information as a way of improving the outcome side of prognostic models. This involves optimally characterizing individuals’ outcome status, classifying them, and validating the formulated prediction targets. None of these tasks are straightforward, which may explain why longitudinal prediction targets are not commonly used in practice despite their compelling benefits. As a way of improving this situation, we explore the joint use of empirical model fitting, clinical insights, and cross-validation based on how well formulated targets are predicted by clinically relevant baseline characteristics (antecedent validators). The idea here is that all these methods are imperfect but can be used together to triangulate valid prediction targets. The proposed approach is illustrated using data from the longitudinal assessment of manic symptoms study.

Idioma originalEnglish (US)
Páginas (desde-hasta)2674-2693
Número de páginas20
PublicaciónStatistical Methods in Medical Research
EstadoPublished - sept 1 2018

ASJC Scopus subject areas

  • Health Information Management
  • Epidemiology
  • Statistics and Probability


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