Individualized prediction of psychosis in subjects with an at-risk mental state.

Journal: Schizophrenia research
PMID:

Abstract

Early intervention strategies in psychosis would significantly benefit from the identification of reliable prognostic biomarkers. Pattern classification methods have shown the feasibility of an early diagnosis of psychosis onset both in clinical and familial high-risk populations. Here we were interested in replicating our previous classification findings using an independent cohort at clinical high risk for psychosis, drawn from the prospective FePsy (Fruherkennung von Psychosen) study. The same neuroanatomical-based pattern classification pipeline, consisting of a linear Support Vector Machine (SVM) and a Recursive Feature Selection (RFE) achieved 74% accuracy in predicting later onset of psychosis. The discriminative neuroanatomical pattern underlying this finding consisted of many brain areas across all four lobes and the cerebellum. These results provide proof-of-concept that the early diagnosis of psychosis is feasible using neuroanatomical-based pattern recognition.

Authors

  • Eleni Zarogianni
    Division of Psychiatry, School of Clinical Sciences, University of Edinburgh, The Royal Edinburgh Hospital, Morningside Park, UK. Electronic address: ezarogia@exseed.ed.ac.uk.
  • Amos J Storkey
    Institute for Adaptive and Neural Computation, University of Edinburgh, UK.
  • Stefan Borgwardt
    Department of Psychiatry, University of Basel, Basel, Switzerland.
  • Renata Smieskova
    Department of Psychiatry (UPK), University of Basel, Switzerland.
  • Erich Studerus
    a University of Basel Psychiatric Clinics, Center for Gender Research and Early Detection , Basel , Switzerland.
  • Anita Riecher-Rössler
    Department of Psychiatry, University of Basel, Basel, Switzerland.
  • Stephen M Lawrie
    Division of Psychiatry, School of Clinical Sciences, University of Edinburgh, The Royal Edinburgh Hospital, Morningside Park, UK.