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Predicting treatment-resistance from first-episode psychosis using routinely collected clinical information: development and external validation study

Authors :
Emanuele Osimo
Benjamin Perry
Pavan Mallikarjun
Megan Pritchard
Jonathan Lewis
Asia Katunda
Graham Murray
Jesus Perez
Peter Jones
Rudolf Cardinal
Oliver Howes
Rachel Upthegrove
Golam Khandaker
Publication Year :
2022
Publisher :
Research Square Platform LLC, 2022.

Abstract

Around a quarter of people who experience a first episode of psychosis (FEP) will develop treatment-resistant schizophrenia (TRS), but there are currently no established clinically useful methods to predict this from baseline. We aimed to explore the predictive potential for clozapine use as a proxy for TRS of routinely collected, objective biomedical predictors at FEP onset, and to externally validate the model in a separate clinical sample of people with FEP. We developed and externally validated two risk prediction models to predict up to 8-year risk of clozapine use from FEP using routinely recorded information including age, sex, ethnicity, triglycerides, alkaline phosphatase levels, and lymphocyte counts in forced-entry logistic regression models. We also produced a least-absolute shrinkage and selection operator (LASSO) based model, additionally including neutrophil count, smoking status, body mass index, and random glucose levels. The models were developed using data from two UK psychosis early intervention services (EIS) and externally validated in another UK EIS. Model performance was assessed via discrimination and calibration. We developed the models in 785 patients, and validated externally in 1,110 patients. Both models predicted clozapine use well at internal validation (forced-entry: C 0.70; 95%CI 0.63,0.76; LASSO: 0.69; 95%CI 0.63,0.77). At external validation, discrimination performance reduced (forced-entry: 0.63; 0.58,0.69; LASSO: 0.64; 0.58,0.69) but recovered after re-estimation of the lymphocyte predictor (C: 0.67; 0.62,0.73). Calibration plots showed good agreement between observed and predicted risk in the forced-entry model. We also present a decision-curve analysis and an online data visualisation tool. The use of routinely collected clinical information including blood-based biomarkers taken at FEP onset can help to predict the individual risk of clozapine use, and should be considered equally alongside other potentially useful information such as symptom scores in large-scale efforts to predict psychiatric outcomes.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........d96f0edb5a030bf2f6b192a6b32e26fa
Full Text :
https://doi.org/10.21203/rs.3.rs-1677052/v1