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Implementing Precision Psychiatry: A Systematic Review of Individualized Prediction Models for Clinical Practice

期刊

SCHIZOPHRENIA BULLETIN
卷 47, 期 2, 页码 284-297

出版社

OXFORD UNIV PRESS
DOI: 10.1093/schbul/sbaa120

关键词

risk; prognosis; prediction; individualized; prevention; evidence; implementation; validation

资金

  1. King's College London Confidence in Concept award from the Medical Research Council [MC_PC_16048]
  2. Alicia Koplowitz Foundation
  3. Medical Research Council [P005918]
  4. National Institute for Health Research (NIHR) Biomedical Research Centre at South London
  5. Maudsley NHS Foundation Trust
  6. King's College London
  7. MRC [MC_PC_16048] Funding Source: UKRI

向作者/读者索取更多资源

The impact of precision psychiatry on clinical practice has not been systematically evaluated. Validated prediction models are available to support the diagnosis, prognosis, and treatment response prediction of psychiatric conditions, particularly psychosis. However, there is a lack of implementation research in real-world clinical practice.
Background: The impact of precision psychiatry for clinical practice has not been systematically appraised. This study aims to provide a comprehensive review of validated prediction models to estimate the individual risk of being affected with a condition (diagnostic), developing outcomes (prognostic), or responding to treatments (predictive) in mental disorders. Methods: PRISMA/RIGHT/ CHARMS-compliant systematic review of the Web of Science, Cochrane Central Register of Reviews, and Ovid/PsycINFO databases from inception until July 21, 2019 (PROSPERO CRD42019155713) to identify diagnostic/prognostic/predictive prediction studies that reported individualized estimates in psychiatry and that were internally or externally validated or implemented. Random effect meta-regression analyses addressed the impact of several factors on the accuracy of prediction models. Findings: Literature search identified 584 prediction modeling studies, of which 89 were included. 10.4% of the total studies included prediction models internally validated (n = 61), 4.6% models externally validated (n = 27), and 0.2% (n = 1) models considered for implementation. Across validated prediction modeling studies (n = 88), 18.2% were diagnostic, 68.2% prognostic, and 13.6% predictive. The most frequently investigated condition was psychosis (36.4%), and the most frequently employed predictors clinical (69.5%). Unimodal compared to multimodal models (beta = .29, P = .03) and diagnostic compared to prognostic (beta = .84, p < .0001) and predictive (beta = .87, P = .002) models were associated with increased accuracy. Interpretation: To date, several validated prediction models arc available to support the diagnosis and prognosis of psychiatric conditions, in particular, psychosis, or to predict treatment response. Advancements of knowledge are limited by the lack of implementation research in real-world clinical practice. A new generation of implementation research is required to address this translational gap.

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