Cargando…

A Deep Learning Approach for Predicting Antidepressant Response in Major Depression Using Clinical and Genetic Biomarkers

In the wake of recent advances in scientific research, personalized medicine using deep learning techniques represents a new paradigm. In this work, our goal was to establish deep learning models which distinguish responders from non-responders, and also to predict possible antidepressant treatment...

Descripción completa

Detalles Bibliográficos
Autores principales: Lin, Eugene, Kuo, Po-Hsiu, Liu, Yu-Li, Yu, Younger W.-Y., Yang, Albert C., Tsai, Shih-Jen
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6043864/
https://www.ncbi.nlm.nih.gov/pubmed/30034349
http://dx.doi.org/10.3389/fpsyt.2018.00290
_version_ 1783339366698975232
author Lin, Eugene
Kuo, Po-Hsiu
Liu, Yu-Li
Yu, Younger W.-Y.
Yang, Albert C.
Tsai, Shih-Jen
author_facet Lin, Eugene
Kuo, Po-Hsiu
Liu, Yu-Li
Yu, Younger W.-Y.
Yang, Albert C.
Tsai, Shih-Jen
author_sort Lin, Eugene
collection PubMed
description In the wake of recent advances in scientific research, personalized medicine using deep learning techniques represents a new paradigm. In this work, our goal was to establish deep learning models which distinguish responders from non-responders, and also to predict possible antidepressant treatment outcomes in major depressive disorder (MDD). To uncover relationships between the responsiveness of antidepressant treatment and biomarkers, we developed a deep learning prediction approach resulting from the analysis of genetic and clinical factors such as single nucleotide polymorphisms (SNPs), age, sex, baseline Hamilton Rating Scale for Depression score, depressive episodes, marital status, and suicide attempt status of MDD patients. The cohort consisted of 455 patients who were treated with selective serotonin reuptake inhibitors (treatment-response rate = 61.0%; remission rate = 33.0%). By using the SNP dataset that was original to a genome-wide association study, we selected 10 SNPs (including ABCA13 rs4917029, BNIP3 rs9419139, CACNA1E rs704329, EXOC4 rs6978272, GRIN2B rs7954376, LHFPL3 rs4352778, NELL1 rs2139423, NUAK1 rs2956406, PREX1 rs4810894, and SLIT3 rs139863958) which were associated with antidepressant treatment response. Furthermore, we pinpointed 10 SNPs (including ARNTL rs11022778, CAMK1D rs2724812, GABRB3 rs12904459, GRM8 rs35864549, NAALADL2 rs9878985, NCALD rs483986, PLA2G4A rs12046378, PROK2 rs73103153, RBFOX1 rs17134927, and ZNF536 rs77554113) in relation to remission. Then, we employed multilayer feedforward neural networks (MFNNs) containing 1–3 hidden layers and compared MFNN models with logistic regression models. Our analysis results revealed that the MFNN model with 2 hidden layers (area under the receiver operating characteristic curve (AUC) = 0.8228 ± 0.0571; sensitivity = 0.7546 ± 0.0619; specificity = 0.6922 ± 0.0765) performed maximally among predictive models to infer the complex relationship between antidepressant treatment response and biomarkers. In addition, the MFNN model with 3 hidden layers (AUC = 0.8060 ± 0.0722; sensitivity = 0.7732 ± 0.0583; specificity = 0.6623 ± 0.0853) achieved best among predictive models to predict remission. Our study indicates that the deep MFNN framework may provide a suitable method to establish a tool for distinguishing treatment responders from non-responders prior to antidepressant therapy.
format Online
Article
Text
id pubmed-6043864
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-60438642018-07-20 A Deep Learning Approach for Predicting Antidepressant Response in Major Depression Using Clinical and Genetic Biomarkers Lin, Eugene Kuo, Po-Hsiu Liu, Yu-Li Yu, Younger W.-Y. Yang, Albert C. Tsai, Shih-Jen Front Psychiatry Psychiatry In the wake of recent advances in scientific research, personalized medicine using deep learning techniques represents a new paradigm. In this work, our goal was to establish deep learning models which distinguish responders from non-responders, and also to predict possible antidepressant treatment outcomes in major depressive disorder (MDD). To uncover relationships between the responsiveness of antidepressant treatment and biomarkers, we developed a deep learning prediction approach resulting from the analysis of genetic and clinical factors such as single nucleotide polymorphisms (SNPs), age, sex, baseline Hamilton Rating Scale for Depression score, depressive episodes, marital status, and suicide attempt status of MDD patients. The cohort consisted of 455 patients who were treated with selective serotonin reuptake inhibitors (treatment-response rate = 61.0%; remission rate = 33.0%). By using the SNP dataset that was original to a genome-wide association study, we selected 10 SNPs (including ABCA13 rs4917029, BNIP3 rs9419139, CACNA1E rs704329, EXOC4 rs6978272, GRIN2B rs7954376, LHFPL3 rs4352778, NELL1 rs2139423, NUAK1 rs2956406, PREX1 rs4810894, and SLIT3 rs139863958) which were associated with antidepressant treatment response. Furthermore, we pinpointed 10 SNPs (including ARNTL rs11022778, CAMK1D rs2724812, GABRB3 rs12904459, GRM8 rs35864549, NAALADL2 rs9878985, NCALD rs483986, PLA2G4A rs12046378, PROK2 rs73103153, RBFOX1 rs17134927, and ZNF536 rs77554113) in relation to remission. Then, we employed multilayer feedforward neural networks (MFNNs) containing 1–3 hidden layers and compared MFNN models with logistic regression models. Our analysis results revealed that the MFNN model with 2 hidden layers (area under the receiver operating characteristic curve (AUC) = 0.8228 ± 0.0571; sensitivity = 0.7546 ± 0.0619; specificity = 0.6922 ± 0.0765) performed maximally among predictive models to infer the complex relationship between antidepressant treatment response and biomarkers. In addition, the MFNN model with 3 hidden layers (AUC = 0.8060 ± 0.0722; sensitivity = 0.7732 ± 0.0583; specificity = 0.6623 ± 0.0853) achieved best among predictive models to predict remission. Our study indicates that the deep MFNN framework may provide a suitable method to establish a tool for distinguishing treatment responders from non-responders prior to antidepressant therapy. Frontiers Media S.A. 2018-07-06 /pmc/articles/PMC6043864/ /pubmed/30034349 http://dx.doi.org/10.3389/fpsyt.2018.00290 Text en Copyright © 2018 Lin, Kuo, Liu, Yu, Yang and Tsai. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Psychiatry
Lin, Eugene
Kuo, Po-Hsiu
Liu, Yu-Li
Yu, Younger W.-Y.
Yang, Albert C.
Tsai, Shih-Jen
A Deep Learning Approach for Predicting Antidepressant Response in Major Depression Using Clinical and Genetic Biomarkers
title A Deep Learning Approach for Predicting Antidepressant Response in Major Depression Using Clinical and Genetic Biomarkers
title_full A Deep Learning Approach for Predicting Antidepressant Response in Major Depression Using Clinical and Genetic Biomarkers
title_fullStr A Deep Learning Approach for Predicting Antidepressant Response in Major Depression Using Clinical and Genetic Biomarkers
title_full_unstemmed A Deep Learning Approach for Predicting Antidepressant Response in Major Depression Using Clinical and Genetic Biomarkers
title_short A Deep Learning Approach for Predicting Antidepressant Response in Major Depression Using Clinical and Genetic Biomarkers
title_sort deep learning approach for predicting antidepressant response in major depression using clinical and genetic biomarkers
topic Psychiatry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6043864/
https://www.ncbi.nlm.nih.gov/pubmed/30034349
http://dx.doi.org/10.3389/fpsyt.2018.00290
work_keys_str_mv AT lineugene adeeplearningapproachforpredictingantidepressantresponseinmajordepressionusingclinicalandgeneticbiomarkers
AT kuopohsiu adeeplearningapproachforpredictingantidepressantresponseinmajordepressionusingclinicalandgeneticbiomarkers
AT liuyuli adeeplearningapproachforpredictingantidepressantresponseinmajordepressionusingclinicalandgeneticbiomarkers
AT yuyoungerwy adeeplearningapproachforpredictingantidepressantresponseinmajordepressionusingclinicalandgeneticbiomarkers
AT yangalbertc adeeplearningapproachforpredictingantidepressantresponseinmajordepressionusingclinicalandgeneticbiomarkers
AT tsaishihjen adeeplearningapproachforpredictingantidepressantresponseinmajordepressionusingclinicalandgeneticbiomarkers
AT lineugene deeplearningapproachforpredictingantidepressantresponseinmajordepressionusingclinicalandgeneticbiomarkers
AT kuopohsiu deeplearningapproachforpredictingantidepressantresponseinmajordepressionusingclinicalandgeneticbiomarkers
AT liuyuli deeplearningapproachforpredictingantidepressantresponseinmajordepressionusingclinicalandgeneticbiomarkers
AT yuyoungerwy deeplearningapproachforpredictingantidepressantresponseinmajordepressionusingclinicalandgeneticbiomarkers
AT yangalbertc deeplearningapproachforpredictingantidepressantresponseinmajordepressionusingclinicalandgeneticbiomarkers
AT tsaishihjen deeplearningapproachforpredictingantidepressantresponseinmajordepressionusingclinicalandgeneticbiomarkers