Exploratory Boosted Feature Selection and Neural Network Framework for Depression Classification

Depression is a burdensome psychiatric disease common in low and middle income countries causing disability, morbidity and mortality in late life. In this study, we demonstrate a novel approach for detection of depression using clinical data obtained from the on-going Mysore Studies of Natal effects...

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Main Authors: Vanishri Arun, Murali Krishna, B.V. Arunkumar, S.K. Padma, V. Shyam
Format: Article
Language:English
Published: Universidad Internacional de La Rioja (UNIR) 2018-12-01
Series:International Journal of Interactive Multimedia and Artificial Intelligence
Subjects:
Online Access:http://www.ijimai.org/journal/node/2646
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spelling doaj-7e25d708422f4b68a43743286ed0574b2020-11-25T01:01:53ZengUniversidad Internacional de La Rioja (UNIR)International Journal of Interactive Multimedia and Artificial Intelligence1989-16601989-16602018-12-0153617110.9781/ijimai.2018.10.001ijimai.2018.10.001Exploratory Boosted Feature Selection and Neural Network Framework for Depression ClassificationVanishri ArunMurali KrishnaB.V. ArunkumarS.K. PadmaV. ShyamDepression is a burdensome psychiatric disease common in low and middle income countries causing disability, morbidity and mortality in late life. In this study, we demonstrate a novel approach for detection of depression using clinical data obtained from the on-going Mysore Studies of Natal effects on Ageing and Health (MYNAH), in South India where the members have undergone a comprehensive assessment for cognitive function, mental health and cardiometabolic disorders. The proposed model is developed using machine learning approach for classification of depression using Meta-Cognitive Neural Network (McNN) classifier with Projection-based learning (PBL) to address the self-regulating principles like how, what and when to learn. XGBoost is used for feature selection on the available data of assessments with improved confidence. To improve the efficiency of McNN-PBL classifier the best parameters are found using Particle Swarm Optimization (PSO) algorithm. The results indicate that the McNNPBL classifier selects appropriate records to learn and remove repetitive records which improve the generalization performance. The study helps the clinician to identify the best parameters to analyze the patient.http://www.ijimai.org/journal/node/2646DepressionMYNAH CohortNeural NetworkParticle Swarm OptimizationProjection-based LearningXGBoost
collection DOAJ
language English
format Article
sources DOAJ
author Vanishri Arun
Murali Krishna
B.V. Arunkumar
S.K. Padma
V. Shyam
spellingShingle Vanishri Arun
Murali Krishna
B.V. Arunkumar
S.K. Padma
V. Shyam
Exploratory Boosted Feature Selection and Neural Network Framework for Depression Classification
International Journal of Interactive Multimedia and Artificial Intelligence
Depression
MYNAH Cohort
Neural Network
Particle Swarm Optimization
Projection-based Learning
XGBoost
author_facet Vanishri Arun
Murali Krishna
B.V. Arunkumar
S.K. Padma
V. Shyam
author_sort Vanishri Arun
title Exploratory Boosted Feature Selection and Neural Network Framework for Depression Classification
title_short Exploratory Boosted Feature Selection and Neural Network Framework for Depression Classification
title_full Exploratory Boosted Feature Selection and Neural Network Framework for Depression Classification
title_fullStr Exploratory Boosted Feature Selection and Neural Network Framework for Depression Classification
title_full_unstemmed Exploratory Boosted Feature Selection and Neural Network Framework for Depression Classification
title_sort exploratory boosted feature selection and neural network framework for depression classification
publisher Universidad Internacional de La Rioja (UNIR)
series International Journal of Interactive Multimedia and Artificial Intelligence
issn 1989-1660
1989-1660
publishDate 2018-12-01
description Depression is a burdensome psychiatric disease common in low and middle income countries causing disability, morbidity and mortality in late life. In this study, we demonstrate a novel approach for detection of depression using clinical data obtained from the on-going Mysore Studies of Natal effects on Ageing and Health (MYNAH), in South India where the members have undergone a comprehensive assessment for cognitive function, mental health and cardiometabolic disorders. The proposed model is developed using machine learning approach for classification of depression using Meta-Cognitive Neural Network (McNN) classifier with Projection-based learning (PBL) to address the self-regulating principles like how, what and when to learn. XGBoost is used for feature selection on the available data of assessments with improved confidence. To improve the efficiency of McNN-PBL classifier the best parameters are found using Particle Swarm Optimization (PSO) algorithm. The results indicate that the McNNPBL classifier selects appropriate records to learn and remove repetitive records which improve the generalization performance. The study helps the clinician to identify the best parameters to analyze the patient.
topic Depression
MYNAH Cohort
Neural Network
Particle Swarm Optimization
Projection-based Learning
XGBoost
url http://www.ijimai.org/journal/node/2646
work_keys_str_mv AT vanishriarun exploratoryboostedfeatureselectionandneuralnetworkframeworkfordepressionclassification
AT muralikrishna exploratoryboostedfeatureselectionandneuralnetworkframeworkfordepressionclassification
AT bvarunkumar exploratoryboostedfeatureselectionandneuralnetworkframeworkfordepressionclassification
AT skpadma exploratoryboostedfeatureselectionandneuralnetworkframeworkfordepressionclassification
AT vshyam exploratoryboostedfeatureselectionandneuralnetworkframeworkfordepressionclassification
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