Cargando…

Using a statistical learning approach to identify sociodemographic and clinical predictors of response to clozapine

BACKGROUND: A proportion of people with treatment-resistant schizophrenia fail to show improvement on clozapine treatment. Knowledge of the sociodemographic and clinical factors predicting clozapine response may be useful in developing personalised approaches to treatment. METHODS: This retrospectiv...

Descripción completa

Detalles Bibliográficos
Autores principales: Fonseca de Freitas, Daniela, Kadra-Scalzo, Giouliana, Agbedjro, Deborah, Francis, Emma, Ridler, Isobel, Pritchard, Megan, Shetty, Hitesh, Segev, Aviv, Casetta, Cecilia, Smart, Sophie E, Downs, Johnny, Christensen, Søren Rahn, Bak, Nikolaj, Kinon, Bruce J, Stahl, Daniel, MacCabe, James H, Hayes, Richard D
Formato: Online Artículo Texto
Lenguaje:English
Publicado: SAGE Publications 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9066692/
https://www.ncbi.nlm.nih.gov/pubmed/35212240
http://dx.doi.org/10.1177/02698811221078746
_version_ 1784699847837745152
author Fonseca de Freitas, Daniela
Kadra-Scalzo, Giouliana
Agbedjro, Deborah
Francis, Emma
Ridler, Isobel
Pritchard, Megan
Shetty, Hitesh
Segev, Aviv
Casetta, Cecilia
Smart, Sophie E
Downs, Johnny
Christensen, Søren Rahn
Bak, Nikolaj
Kinon, Bruce J
Stahl, Daniel
MacCabe, James H
Hayes, Richard D
author_facet Fonseca de Freitas, Daniela
Kadra-Scalzo, Giouliana
Agbedjro, Deborah
Francis, Emma
Ridler, Isobel
Pritchard, Megan
Shetty, Hitesh
Segev, Aviv
Casetta, Cecilia
Smart, Sophie E
Downs, Johnny
Christensen, Søren Rahn
Bak, Nikolaj
Kinon, Bruce J
Stahl, Daniel
MacCabe, James H
Hayes, Richard D
author_sort Fonseca de Freitas, Daniela
collection PubMed
description BACKGROUND: A proportion of people with treatment-resistant schizophrenia fail to show improvement on clozapine treatment. Knowledge of the sociodemographic and clinical factors predicting clozapine response may be useful in developing personalised approaches to treatment. METHODS: This retrospective cohort study used data from the electronic health records of the South London and Maudsley (SLaM) hospital between 2007 and 2011. Using the Least Absolute Shrinkage and Selection Operator (LASSO) regression statistical learning approach, we examined 35 sociodemographic and clinical factors’ predictive ability of response to clozapine at 3 months of treatment. Response was assessed by the level of change in the severity of the symptoms using the Clinical Global Impression (CGI) scale. RESULTS: We identified 242 service-users with a treatment-resistant psychotic disorder who had their first trial of clozapine and continued the treatment for at least 3 months. The LASSO regression identified three predictors of response to clozapine: higher severity of illness at baseline, female gender and having a comorbid mood disorder. These factors are estimated to explain 18% of the variance in clozapine response. The model’s optimism-corrected calibration slope was 1.37, suggesting that the model will underfit when applied to new data. CONCLUSIONS: These findings suggest that women, people with a comorbid mood disorder and those who are most ill at baseline respond better to clozapine. However, the accuracy of the internally validated and recalibrated model was low. Therefore, future research should indicate whether a prediction model developed by including routinely collected data, in combination with biological information, presents adequate predictive ability to be applied in clinical settings.
format Online
Article
Text
id pubmed-9066692
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher SAGE Publications
record_format MEDLINE/PubMed
spelling pubmed-90666922022-05-04 Using a statistical learning approach to identify sociodemographic and clinical predictors of response to clozapine Fonseca de Freitas, Daniela Kadra-Scalzo, Giouliana Agbedjro, Deborah Francis, Emma Ridler, Isobel Pritchard, Megan Shetty, Hitesh Segev, Aviv Casetta, Cecilia Smart, Sophie E Downs, Johnny Christensen, Søren Rahn Bak, Nikolaj Kinon, Bruce J Stahl, Daniel MacCabe, James H Hayes, Richard D J Psychopharmacol Original Papers BACKGROUND: A proportion of people with treatment-resistant schizophrenia fail to show improvement on clozapine treatment. Knowledge of the sociodemographic and clinical factors predicting clozapine response may be useful in developing personalised approaches to treatment. METHODS: This retrospective cohort study used data from the electronic health records of the South London and Maudsley (SLaM) hospital between 2007 and 2011. Using the Least Absolute Shrinkage and Selection Operator (LASSO) regression statistical learning approach, we examined 35 sociodemographic and clinical factors’ predictive ability of response to clozapine at 3 months of treatment. Response was assessed by the level of change in the severity of the symptoms using the Clinical Global Impression (CGI) scale. RESULTS: We identified 242 service-users with a treatment-resistant psychotic disorder who had their first trial of clozapine and continued the treatment for at least 3 months. The LASSO regression identified three predictors of response to clozapine: higher severity of illness at baseline, female gender and having a comorbid mood disorder. These factors are estimated to explain 18% of the variance in clozapine response. The model’s optimism-corrected calibration slope was 1.37, suggesting that the model will underfit when applied to new data. CONCLUSIONS: These findings suggest that women, people with a comorbid mood disorder and those who are most ill at baseline respond better to clozapine. However, the accuracy of the internally validated and recalibrated model was low. Therefore, future research should indicate whether a prediction model developed by including routinely collected data, in combination with biological information, presents adequate predictive ability to be applied in clinical settings. SAGE Publications 2022-02-25 2022-04 /pmc/articles/PMC9066692/ /pubmed/35212240 http://dx.doi.org/10.1177/02698811221078746 Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/This article is distributed under the terms of the Creative Commons Attribution 4.0 License (https://creativecommons.org/licenses/by/4.0/) which permits any use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access pages (https://us.sagepub.com/en-us/nam/open-access-at-sage).
spellingShingle Original Papers
Fonseca de Freitas, Daniela
Kadra-Scalzo, Giouliana
Agbedjro, Deborah
Francis, Emma
Ridler, Isobel
Pritchard, Megan
Shetty, Hitesh
Segev, Aviv
Casetta, Cecilia
Smart, Sophie E
Downs, Johnny
Christensen, Søren Rahn
Bak, Nikolaj
Kinon, Bruce J
Stahl, Daniel
MacCabe, James H
Hayes, Richard D
Using a statistical learning approach to identify sociodemographic and clinical predictors of response to clozapine
title Using a statistical learning approach to identify sociodemographic and clinical predictors of response to clozapine
title_full Using a statistical learning approach to identify sociodemographic and clinical predictors of response to clozapine
title_fullStr Using a statistical learning approach to identify sociodemographic and clinical predictors of response to clozapine
title_full_unstemmed Using a statistical learning approach to identify sociodemographic and clinical predictors of response to clozapine
title_short Using a statistical learning approach to identify sociodemographic and clinical predictors of response to clozapine
title_sort using a statistical learning approach to identify sociodemographic and clinical predictors of response to clozapine
topic Original Papers
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9066692/
https://www.ncbi.nlm.nih.gov/pubmed/35212240
http://dx.doi.org/10.1177/02698811221078746
work_keys_str_mv AT fonsecadefreitasdaniela usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT kadrascalzogiouliana usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT agbedjrodeborah usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT francisemma usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT ridlerisobel usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT pritchardmegan usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT shettyhitesh usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT segevaviv usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT casettacecilia usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT smartsophiee usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT downsjohnny usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT christensensørenrahn usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT baknikolaj usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT kinonbrucej usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT stahldaniel usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT maccabejamesh usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine
AT hayesrichardd usingastatisticallearningapproachtoidentifysociodemographicandclinicalpredictorsofresponsetoclozapine