TY - JOUR
T1 - Using Electronic Health Records to Facilitate Precision Psychiatry
AU - Oliver, Dominic
AU - Arribas, Maite
AU - Perry, Benjamin I.
AU - Whiting, Daniel
AU - Blackman, Graham
AU - Krakowski, Kamil
AU - Seyedsalehi, Aida
AU - Osimo, Emanuele F.
AU - Griffiths, Siân Lowri
AU - Stahl, Daniel
AU - Cipriani, Andrea
AU - Fazel, Seena
AU - Fusar-Poli, Paolo
AU - McGuire, Philip
N1 - Publisher Copyright:
© 2024 Society of Biological Psychiatry
PY - 2024/2/24
Y1 - 2024/2/24
N2 - The use of clinical prediction models to produce individualized risk estimates can facilitate the implementation of precision psychiatry. As a source of data from large, clinically representative patient samples, electronic health records (EHRs) provide a platform to develop and validate clinical prediction models, as well as potentially implement them in routine clinical care. The current review describes promising use cases for the application of precision psychiatry to EHR data and considers their performance in terms of discrimination (ability to separate individuals with and without the outcome) and calibration (extent to which predicted risk estimates correspond to observed outcomes), as well as their potential clinical utility (weighing benefits and costs associated with the model compared to different approaches across different assumptions of the number needed to test). We review 4 externally validated clinical prediction models designed to predict psychosis onset, psychotic relapse, cardiometabolic morbidity, and suicide risk. We then discuss the prospects for clinically implementing these models and the potential added value of integrating data from evidence syntheses, standardized psychometric assessments, and biological data into EHRs. Clinical prediction models can utilize routinely collected EHR data in an innovative way, representing a unique opportunity to inform real-world clinical decision making. Combining data from other sources (e.g., meta-analyses) or enhancing EHR data with information from research studies (clinical and biomarker data) may enhance our abilities to improve the performance of clinical prediction models.
AB - The use of clinical prediction models to produce individualized risk estimates can facilitate the implementation of precision psychiatry. As a source of data from large, clinically representative patient samples, electronic health records (EHRs) provide a platform to develop and validate clinical prediction models, as well as potentially implement them in routine clinical care. The current review describes promising use cases for the application of precision psychiatry to EHR data and considers their performance in terms of discrimination (ability to separate individuals with and without the outcome) and calibration (extent to which predicted risk estimates correspond to observed outcomes), as well as their potential clinical utility (weighing benefits and costs associated with the model compared to different approaches across different assumptions of the number needed to test). We review 4 externally validated clinical prediction models designed to predict psychosis onset, psychotic relapse, cardiometabolic morbidity, and suicide risk. We then discuss the prospects for clinically implementing these models and the potential added value of integrating data from evidence syntheses, standardized psychometric assessments, and biological data into EHRs. Clinical prediction models can utilize routinely collected EHR data in an innovative way, representing a unique opportunity to inform real-world clinical decision making. Combining data from other sources (e.g., meta-analyses) or enhancing EHR data with information from research studies (clinical and biomarker data) may enhance our abilities to improve the performance of clinical prediction models.
KW - Electronic health records
KW - Implementation
KW - Precision psychiatry
KW - Prediction modeling
KW - Psychosis
KW - Suicide
UR - http://www.scopus.com/inward/record.url?scp=85190973363&partnerID=8YFLogxK
U2 - 10.1016/j.biopsych.2024.02.1006
DO - 10.1016/j.biopsych.2024.02.1006
M3 - Review article
C2 - 38408535
AN - SCOPUS:85190973363
SN - 0006-3223
JO - Biological Psychiatry
JF - Biological Psychiatry
ER -