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Predicting one-year outcome in first episode psychosis using machine learning

BACKGROUND: Early illness course correlates with long-term outcome in psychosis. Accurate prediction could allow more focused intervention. Earlier intervention corresponds to significantly better symptomatic and functional outcomes. Our study objective is to use routinely collected baseline demogra...

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Autores principales: Leighton, Samuel P., Krishnadas, Rajeev, Chung, Kelly, Blair, Alison, Brown, Susie, Clark, Suzy, Sowerbutts, Kathryn, Schwannauer, Matthias, Cavanagh, Jonathan, Gumley, Andrew I.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6405084/
https://www.ncbi.nlm.nih.gov/pubmed/30845268
http://dx.doi.org/10.1371/journal.pone.0212846
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author Leighton, Samuel P.
Krishnadas, Rajeev
Chung, Kelly
Blair, Alison
Brown, Susie
Clark, Suzy
Sowerbutts, Kathryn
Schwannauer, Matthias
Cavanagh, Jonathan
Gumley, Andrew I.
author_facet Leighton, Samuel P.
Krishnadas, Rajeev
Chung, Kelly
Blair, Alison
Brown, Susie
Clark, Suzy
Sowerbutts, Kathryn
Schwannauer, Matthias
Cavanagh, Jonathan
Gumley, Andrew I.
author_sort Leighton, Samuel P.
collection PubMed
description BACKGROUND: Early illness course correlates with long-term outcome in psychosis. Accurate prediction could allow more focused intervention. Earlier intervention corresponds to significantly better symptomatic and functional outcomes. Our study objective is to use routinely collected baseline demographic and clinical characteristics to predict employment, education or training (EET) status, and symptom remission in patients with first episode psychosis (FEP) at one-year. METHODS AND FINDINGS: 83 FEP patients were recruited from National Health Service (NHS) Glasgow between 2011 and 2014 to a 24-month prospective cohort study with regular assessment of demographic and psychometric measures. An external independent cohort of 79 FEP patients were recruited from NHS Glasgow and Edinburgh during a 12-month study between 2006 and 2009. Elastic net regularised logistic regression models were built to predict binary EET status, period and point remission outcomes at one-year on 83 Glasgow patients (training dataset). Models were externally validated on an independent dataset of 79 patients from Glasgow and Edinburgh (validation dataset). Only baseline predictors shared across both cohorts were made available for model training and validation. After excluding participants with missing outcomes, models were built on the training dataset for EET status, period and point remission outcomes and externally validated on the validation dataset. Models predicted EET status, period and point remission with receiver operating curve (ROC) area under the curve (AUC) performances of 0.876 (95%CI: 0.864, 0.887), 0.630 (95%CI: 0.612, 0.647) and 0.652 (95%CI: 0.635, 0.670) respectively. Positive predictors of EET included baseline EET and living with spouse/children. Negative predictors included higher PANSS suspiciousness, hostility and delusions scores. Positive predictors for symptom remission included living with spouse/children, and affective symptoms on the Positive and Negative Syndrome Scale (PANSS). Negative predictors of remission included passive social withdrawal symptoms on PANSS. A key limitation of this study is the small sample size (n) relative to the number of predictors (p), whereby p approaches n. The use of elastic net regularised regression rather than ordinary least squares regression helped circumvent this difficulty. Further, we did not have information for biological and additional social variables, such as nicotine dependence, which observational studies have linked to outcomes in psychosis. CONCLUSIONS AND RELEVANCE: Using advanced statistical machine learning techniques, we provide the first externally validated evidence, in a temporally and geographically independent cohort, for the ability to predict one-year EET status and symptom remission in individual FEP patients.
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spelling pubmed-64050842019-03-17 Predicting one-year outcome in first episode psychosis using machine learning Leighton, Samuel P. Krishnadas, Rajeev Chung, Kelly Blair, Alison Brown, Susie Clark, Suzy Sowerbutts, Kathryn Schwannauer, Matthias Cavanagh, Jonathan Gumley, Andrew I. PLoS One Research Article BACKGROUND: Early illness course correlates with long-term outcome in psychosis. Accurate prediction could allow more focused intervention. Earlier intervention corresponds to significantly better symptomatic and functional outcomes. Our study objective is to use routinely collected baseline demographic and clinical characteristics to predict employment, education or training (EET) status, and symptom remission in patients with first episode psychosis (FEP) at one-year. METHODS AND FINDINGS: 83 FEP patients were recruited from National Health Service (NHS) Glasgow between 2011 and 2014 to a 24-month prospective cohort study with regular assessment of demographic and psychometric measures. An external independent cohort of 79 FEP patients were recruited from NHS Glasgow and Edinburgh during a 12-month study between 2006 and 2009. Elastic net regularised logistic regression models were built to predict binary EET status, period and point remission outcomes at one-year on 83 Glasgow patients (training dataset). Models were externally validated on an independent dataset of 79 patients from Glasgow and Edinburgh (validation dataset). Only baseline predictors shared across both cohorts were made available for model training and validation. After excluding participants with missing outcomes, models were built on the training dataset for EET status, period and point remission outcomes and externally validated on the validation dataset. Models predicted EET status, period and point remission with receiver operating curve (ROC) area under the curve (AUC) performances of 0.876 (95%CI: 0.864, 0.887), 0.630 (95%CI: 0.612, 0.647) and 0.652 (95%CI: 0.635, 0.670) respectively. Positive predictors of EET included baseline EET and living with spouse/children. Negative predictors included higher PANSS suspiciousness, hostility and delusions scores. Positive predictors for symptom remission included living with spouse/children, and affective symptoms on the Positive and Negative Syndrome Scale (PANSS). Negative predictors of remission included passive social withdrawal symptoms on PANSS. A key limitation of this study is the small sample size (n) relative to the number of predictors (p), whereby p approaches n. The use of elastic net regularised regression rather than ordinary least squares regression helped circumvent this difficulty. Further, we did not have information for biological and additional social variables, such as nicotine dependence, which observational studies have linked to outcomes in psychosis. CONCLUSIONS AND RELEVANCE: Using advanced statistical machine learning techniques, we provide the first externally validated evidence, in a temporally and geographically independent cohort, for the ability to predict one-year EET status and symptom remission in individual FEP patients. Public Library of Science 2019-03-07 /pmc/articles/PMC6405084/ /pubmed/30845268 http://dx.doi.org/10.1371/journal.pone.0212846 Text en © 2019 Leighton et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Leighton, Samuel P.
Krishnadas, Rajeev
Chung, Kelly
Blair, Alison
Brown, Susie
Clark, Suzy
Sowerbutts, Kathryn
Schwannauer, Matthias
Cavanagh, Jonathan
Gumley, Andrew I.
Predicting one-year outcome in first episode psychosis using machine learning
title Predicting one-year outcome in first episode psychosis using machine learning
title_full Predicting one-year outcome in first episode psychosis using machine learning
title_fullStr Predicting one-year outcome in first episode psychosis using machine learning
title_full_unstemmed Predicting one-year outcome in first episode psychosis using machine learning
title_short Predicting one-year outcome in first episode psychosis using machine learning
title_sort predicting one-year outcome in first episode psychosis using machine learning
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6405084/
https://www.ncbi.nlm.nih.gov/pubmed/30845268
http://dx.doi.org/10.1371/journal.pone.0212846
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