Targeted use of growth mixture modeling: a learning perspective.

Journal: Statistics in medicine
Published Date:

Abstract

From the statistical learning perspective, this paper shows a new direction for the use of growth mixture modeling (GMM), a method of identifying latent subpopulations that manifest heterogeneous outcome trajectories. In the proposed approach, we utilize the benefits of the conventional use of GMM for the purpose of generating potential candidate models based on empirical model fitting, which can be viewed as unsupervised learning. We then evaluate candidate GMM models on the basis of a direct measure of success; how well the trajectory types are predicted by clinically and demographically relevant baseline features, which can be viewed as supervised learning. We examine the proposed approach focusing on a particular utility of latent trajectory classes, as outcomes that can be used as valid prediction targets in clinical prognostic models. Our approach is illustrated using data from the Longitudinal Assessment of Manic Symptoms study. Copyright © 2016 John Wiley & Sons, Ltd.

Authors

  • Booil Jo
    Stanford University, Stanford, CA, U.S.A.
  • Robert L Findling
    Johns Hopkins University, Baltimore, MD, U.S.A.
  • Chen-Pin Wang
    University of Texas Health Science Center, San Antonio, TX, U.S.A.
  • Trevor J Hastie
    Stanford University, Stanford, CA, U.S.A.
  • Eric A Youngstrom
    University of North Carolina, Chapel Hill, NC, U.S.A.
  • L Eugene Arnold
    Ohio State University, Columbus, OH, U.S.A.
  • Mary A Fristad
    Ohio State University, Columbus, OH, U.S.A.
  • Sarah McCue Horwitz
    New York University, New York, NY, U.S.A.