Journal article
Prediction of transition from ultra-high risk to first-episode psychosis using a probabilistic model combining history, clinical assessment and fatty-acid biomarkers
SR Clark, BT Baune, KO Schubert, S Lavoie, S Smesny, SM Rice, MR Schäfer, F Benninger, M Feucht, CM Klier, PD McGorry, GP Amminger
Translational Psychiatry | SPRINGERNATURE | Published : 2016
DOI: 10.1038/tp.2016.170
Abstract
Current criteria identifying patients with ultra-high risk of psychosis (UHR) have low specificity, and less than one-third of UHR cases experience transition to psychosis within 3 years of initial assessment. We explored whether a Bayesian probabilistic multimodal model, combining baseline historical and clinical risk factors with biomarkers (oxidative stress, cell membrane fatty acids, resting quantitative electroencephalography (qEEG)), could improve this specificity. We analyzed data of a UHR cohort (n=40) with a 1-year transition rate of 28%. Positive and negative likelihood ratios were calculated for predictor variables with statistically significant receiver operating characteristic c..
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