Clinical-learning versus machine-learning for transdiagnostic prediction of psychosis onset in individuals at-risk

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作者
Paolo Fusar-Poli
Dominic Stringer
Alice M. S. Durieux
Grazia Rutigliano
Ilaria Bonoldi
Andrea De Micheli
Daniel Stahl
机构
[1] Institute of Psychiatry,Early Psychosis: Interventions and Clinical
[2] Psychology & Neuroscience,detection (EPIC) lab, Department of Psychosis Studies
[3] King’s College London,Department of Brain and Behavioural Sciences
[4] University of Pavia,OASIS service
[5] South London and Maudsley NHS Foundation Trust,Department of Biostatistics and Health Informatics
[6] National Institute of Health Research – Mental Health – Translational Research Collaboration – Early Psychosis Workstream,undefined
[7] Institute of Psychiatry,undefined
[8] Psychology & Neuroscience,undefined
[9] King’s College London,undefined
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Predicting the onset of psychosis in individuals at-risk is based on robust prognostic model building methods including a priori clinical knowledge (also termed clinical-learning) to preselect predictors or machine-learning methods to select predictors automatically. To date, there is no empirical research comparing the prognostic accuracy of these two methods for the prediction of psychosis onset. In a first experiment, no improved performance was observed when machine-learning methods (LASSO and RIDGE) were applied—using the same predictors—to an individualised, transdiagnostic, clinically based, risk calculator previously developed on the basis of clinical-learning (predictors: age, gender, age by gender, ethnicity, ICD-10 diagnostic spectrum), and externally validated twice. In a second experiment, two refined versions of the published model which expanded the granularity of the ICD-10 diagnosis were introduced: ICD-10 diagnostic categories and ICD-10 diagnostic subdivisions. Although these refined versions showed an increase in apparent performance, their external performance was similar to the original model. In a third experiment, the three refined models were analysed under machine-learning and clinical-learning with a variable event per variable ratio (EPV). The best performing model under low EPVs was obtained through machine-learning approaches. The development of prognostic models on the basis of a priori clinical knowledge, large samples and adequate events per variable is a robust clinical prediction method to forecast psychosis onset in patients at-risk, and is comparable to machine-learning methods, which are more difficult to interpret and implement. Machine-learning methods should be preferred for high dimensional data when no a priori knowledge is available.
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