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Use of Machine Learning for Predicting Escitalopram Treatment Outcome From Electroencephalography Recordings in Adult Patients With Depression

IMPORTANCE: Social and economic costs of depression are exacerbated by prolonged periods spent identifying treatments that would be effective for a particular patient. Thus, a tool that reliably predicts an individual patient’s response to treatment could significantly reduce the burden of depressio...

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Autores principales: Zhdanov, Andrey, Atluri, Sravya, Wong, Willy, Vaghei, Yasaman, Daskalakis, Zafiris J., Blumberger, Daniel M., Frey, Benicio N., Giacobbe, Peter, Lam, Raymond W., Milev, Roumen, Mueller, Daniel J., Turecki, Gustavo, Parikh, Sagar V., Rotzinger, Susan, Soares, Claudio N., Brenner, Colleen A., Vila-Rodriguez, Fidel, McAndrews, Mary Pat, Kleffner, Killian, Alonso-Prieto, Esther, Arnott, Stephen R., Foster, Jane A., Strother, Stephen C., Uher, Rudolf, Kennedy, Sidney H., Farzan, Faranak
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Association 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6991244/
https://www.ncbi.nlm.nih.gov/pubmed/31899530
http://dx.doi.org/10.1001/jamanetworkopen.2019.18377
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author Zhdanov, Andrey
Atluri, Sravya
Wong, Willy
Vaghei, Yasaman
Daskalakis, Zafiris J.
Blumberger, Daniel M.
Frey, Benicio N.
Giacobbe, Peter
Lam, Raymond W.
Milev, Roumen
Mueller, Daniel J.
Turecki, Gustavo
Parikh, Sagar V.
Rotzinger, Susan
Soares, Claudio N.
Brenner, Colleen A.
Vila-Rodriguez, Fidel
McAndrews, Mary Pat
Kleffner, Killian
Alonso-Prieto, Esther
Arnott, Stephen R.
Foster, Jane A.
Strother, Stephen C.
Uher, Rudolf
Kennedy, Sidney H.
Farzan, Faranak
author_facet Zhdanov, Andrey
Atluri, Sravya
Wong, Willy
Vaghei, Yasaman
Daskalakis, Zafiris J.
Blumberger, Daniel M.
Frey, Benicio N.
Giacobbe, Peter
Lam, Raymond W.
Milev, Roumen
Mueller, Daniel J.
Turecki, Gustavo
Parikh, Sagar V.
Rotzinger, Susan
Soares, Claudio N.
Brenner, Colleen A.
Vila-Rodriguez, Fidel
McAndrews, Mary Pat
Kleffner, Killian
Alonso-Prieto, Esther
Arnott, Stephen R.
Foster, Jane A.
Strother, Stephen C.
Uher, Rudolf
Kennedy, Sidney H.
Farzan, Faranak
author_sort Zhdanov, Andrey
collection PubMed
description IMPORTANCE: Social and economic costs of depression are exacerbated by prolonged periods spent identifying treatments that would be effective for a particular patient. Thus, a tool that reliably predicts an individual patient’s response to treatment could significantly reduce the burden of depression. OBJECTIVE: To estimate how accurately an outcome of escitalopram treatment can be predicted from electroencephalographic (EEG) data on patients with depression. DESIGN, SETTING, AND PARTICIPANTS: This prognostic study used a support vector machine classifier to predict treatment outcome using data from the first Canadian Biomarker Integration Network in Depression (CAN-BIND-1) study. The CAN-BIND-1 study comprised 180 patients (aged 18-60 years) diagnosed with major depressive disorder who had completed 8 weeks of treatment. Of this group, 122 patients had EEG data recorded before the treatment; 115 also had EEG data recorded after the first 2 weeks of treatment. INTERVENTIONS: All participants completed 8 weeks of open-label escitalopram (10-20 mg) treatment. MAIN OUTCOMES AND MEASURES: The ability of EEG data to predict treatment outcome, measured as accuracy, specificity, and sensitivity of the classifier at baseline and after the first 2 weeks of treatment. The treatment outcome was defined in terms of change in symptom severity, measured by the Montgomery-Åsberg Depression Rating Scale, before and after 8 weeks of treatment. A patient was designated as a responder if the Montgomery-Åsberg Depression Rating Scale score decreased by at least 50% during the 8 weeks and as a nonresponder if the score decrease was less than 50%. RESULTS: Of the 122 participants who completed a baseline EEG recording (mean [SD] age, 36.3 [12.7] years; 76 [62.3%] female), the classifier was able to identify responders with an estimated accuracy of 79.2% (sensitivity, 67.3%; specificity, 91.0%) when using only the baseline EEG data. For a subset of 115 participants who had additional EEG data recorded after the first 2 weeks of treatment, use of these data increased the accuracy to 82.4% (sensitivity, 79.2%; specificity, 85.5%). CONCLUSIONS AND RELEVANCE: These findings demonstrate the potential utility of EEG as a treatment planning tool for escitalopram therapy. Further development of the classification tools presented in this study holds the promise of expediting the search for optimal treatment for each patient.
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spelling pubmed-69912442020-02-11 Use of Machine Learning for Predicting Escitalopram Treatment Outcome From Electroencephalography Recordings in Adult Patients With Depression Zhdanov, Andrey Atluri, Sravya Wong, Willy Vaghei, Yasaman Daskalakis, Zafiris J. Blumberger, Daniel M. Frey, Benicio N. Giacobbe, Peter Lam, Raymond W. Milev, Roumen Mueller, Daniel J. Turecki, Gustavo Parikh, Sagar V. Rotzinger, Susan Soares, Claudio N. Brenner, Colleen A. Vila-Rodriguez, Fidel McAndrews, Mary Pat Kleffner, Killian Alonso-Prieto, Esther Arnott, Stephen R. Foster, Jane A. Strother, Stephen C. Uher, Rudolf Kennedy, Sidney H. Farzan, Faranak JAMA Netw Open Original Investigation IMPORTANCE: Social and economic costs of depression are exacerbated by prolonged periods spent identifying treatments that would be effective for a particular patient. Thus, a tool that reliably predicts an individual patient’s response to treatment could significantly reduce the burden of depression. OBJECTIVE: To estimate how accurately an outcome of escitalopram treatment can be predicted from electroencephalographic (EEG) data on patients with depression. DESIGN, SETTING, AND PARTICIPANTS: This prognostic study used a support vector machine classifier to predict treatment outcome using data from the first Canadian Biomarker Integration Network in Depression (CAN-BIND-1) study. The CAN-BIND-1 study comprised 180 patients (aged 18-60 years) diagnosed with major depressive disorder who had completed 8 weeks of treatment. Of this group, 122 patients had EEG data recorded before the treatment; 115 also had EEG data recorded after the first 2 weeks of treatment. INTERVENTIONS: All participants completed 8 weeks of open-label escitalopram (10-20 mg) treatment. MAIN OUTCOMES AND MEASURES: The ability of EEG data to predict treatment outcome, measured as accuracy, specificity, and sensitivity of the classifier at baseline and after the first 2 weeks of treatment. The treatment outcome was defined in terms of change in symptom severity, measured by the Montgomery-Åsberg Depression Rating Scale, before and after 8 weeks of treatment. A patient was designated as a responder if the Montgomery-Åsberg Depression Rating Scale score decreased by at least 50% during the 8 weeks and as a nonresponder if the score decrease was less than 50%. RESULTS: Of the 122 participants who completed a baseline EEG recording (mean [SD] age, 36.3 [12.7] years; 76 [62.3%] female), the classifier was able to identify responders with an estimated accuracy of 79.2% (sensitivity, 67.3%; specificity, 91.0%) when using only the baseline EEG data. For a subset of 115 participants who had additional EEG data recorded after the first 2 weeks of treatment, use of these data increased the accuracy to 82.4% (sensitivity, 79.2%; specificity, 85.5%). CONCLUSIONS AND RELEVANCE: These findings demonstrate the potential utility of EEG as a treatment planning tool for escitalopram therapy. Further development of the classification tools presented in this study holds the promise of expediting the search for optimal treatment for each patient. American Medical Association 2020-01-03 /pmc/articles/PMC6991244/ /pubmed/31899530 http://dx.doi.org/10.1001/jamanetworkopen.2019.18377 Text en Copyright 2020 Zhdanov A et al. JAMA Network Open. http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the CC-BY License.
spellingShingle Original Investigation
Zhdanov, Andrey
Atluri, Sravya
Wong, Willy
Vaghei, Yasaman
Daskalakis, Zafiris J.
Blumberger, Daniel M.
Frey, Benicio N.
Giacobbe, Peter
Lam, Raymond W.
Milev, Roumen
Mueller, Daniel J.
Turecki, Gustavo
Parikh, Sagar V.
Rotzinger, Susan
Soares, Claudio N.
Brenner, Colleen A.
Vila-Rodriguez, Fidel
McAndrews, Mary Pat
Kleffner, Killian
Alonso-Prieto, Esther
Arnott, Stephen R.
Foster, Jane A.
Strother, Stephen C.
Uher, Rudolf
Kennedy, Sidney H.
Farzan, Faranak
Use of Machine Learning for Predicting Escitalopram Treatment Outcome From Electroencephalography Recordings in Adult Patients With Depression
title Use of Machine Learning for Predicting Escitalopram Treatment Outcome From Electroencephalography Recordings in Adult Patients With Depression
title_full Use of Machine Learning for Predicting Escitalopram Treatment Outcome From Electroencephalography Recordings in Adult Patients With Depression
title_fullStr Use of Machine Learning for Predicting Escitalopram Treatment Outcome From Electroencephalography Recordings in Adult Patients With Depression
title_full_unstemmed Use of Machine Learning for Predicting Escitalopram Treatment Outcome From Electroencephalography Recordings in Adult Patients With Depression
title_short Use of Machine Learning for Predicting Escitalopram Treatment Outcome From Electroencephalography Recordings in Adult Patients With Depression
title_sort use of machine learning for predicting escitalopram treatment outcome from electroencephalography recordings in adult patients with depression
topic Original Investigation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6991244/
https://www.ncbi.nlm.nih.gov/pubmed/31899530
http://dx.doi.org/10.1001/jamanetworkopen.2019.18377
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