Journal article
Dynamic prediction of transition to psychosis using joint modelling
HP Yuen, A Mackinnon, J Hartmann, GP Amminger, C Markulev, S Lavoie, MR Schäfer, A Polari, N Mossaheb, M Schlögelhofer, S Smesny, IB Hickie, G Berger, EYH Chen, L de Haan, DH Nieman, M Nordentoft, A Riecher-Rössler, S Verma, A Thompson Show all
Schizophrenia Research | ELSEVIER SCIENCE BV | Published : 2018
Abstract
Considerable research has been conducted seeking risk factors and constructing prediction models for transition to psychosis in individuals at ultra-high risk (UHR). Nearly all such research has only employed baseline predictors, i.e. data collected at the baseline time point, even though longitudinal data on relevant measures such as psychopathology have often been collected at various time points. Dynamic prediction, which is the updating of prediction at a post-baseline assessment using baseline and longitudinal data accumulated up to that assessment, has not been utilized in the UHR context. This study explored the use of dynamic prediction and determined if it could enhance the predicti..
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Awarded by National Health and Medical Research Council
Funding Acknowledgements
Hok Pan Yuen received support through an Australian Government Research Training Program Scholarship. Jessica Hartmann was supported by a University of Melbourne McKenzie Fellowship. Barnaby Nelson was supported by an NHMRC (1137687) Senior Research Fellowship.