Stacked ensemble machine learning approach for electroencephalography based major depressive disorder classification using temporal statistics

被引:0
|
作者
Ahmed, Nader Nisar [1 ]
Bhat, Tejas Kadengodlu [1 ]
Powar, Omkar S. [1 ]
机构
[1] Manipal Acad Higher Educ, Manipal Inst Technol, Dept Biomed Engn, Manipal, Karnataka, India
关键词
Major depressive disorder; depression; electroencephalography; stacked ensemble learning; machine learning; time domain; MONTGOMERY-ASBERG DEPRESSION; RATING-SCALE; EEG; INVENTORY; ALGORITHM; BDI;
D O I
10.1080/21642583.2024.2427028
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Major depressive disorder (MDD) is a serious and widespread mental health condition that remains challenging to diagnose accurately. Traditional psychological assessments, which can be subjective and sometimes unreliable, emphasize the need for more objective diagnostic tools. In this study, we present a machine learning (ML) model designed to diagnose depression by analysing statistical time-domain features extracted from Electroencephalography (EEG) data. The model is built using a stacked ensemble ML approach, incorporating nine-base estimators with various meta-classifiers. Through multiple trials, the model achieved an accuracy of 98.01%, with precision and recall rates of 97.78% and 96.61%, respectively with Adaptive Boosting (AdaBoost) as the meta-classifer. We also investigated the effects of data sampling and the number of base classifiers on the model's performance. The findings demonstrate that the stacked ensemble approach significantly enhances the accuracy of diagnosing MDD and that the proposed model outperforms the methods used in previous studies. This model offers a promising tool for psychologists and medical professionals to diagnose depression more reliably, potentially leading to better treatment outcomes for those affected by the disorder.
引用
收藏
页数:19
相关论文
共 50 条
  • [41] Characterization of major depressive disorder using a multiparametric classification approach based on high resolution structural images
    Qiu, Lihua
    Huang, Xiaoqi
    Zhang, Junran
    Wang, Yuqing
    Kuang, Weihong
    Li, Jing
    Wang, Xiuli
    Wang, Lijuan
    Yang, Xun
    Lui, Su
    Mechelli, Andrea
    Gong, Qiyong
    JOURNAL OF PSYCHIATRY & NEUROSCIENCE, 2014, 39 (02): : 78 - 86
  • [42] Stacked ensemble learning for facial gender classification using deep learning based features extraction
    Waris, Fazal
    Da, Feipeng
    Liu, Shanghuan
    CLUSTER COMPUTING-THE JOURNAL OF NETWORKS SOFTWARE TOOLS AND APPLICATIONS, 2024, 27 (08): : 11491 - 11513
  • [43] Prediction of repeated-dose intravenous ketamine response in major depressive disorder using the GWAS-based machine learning approach
    Bao, Zhiwei
    Zhao, Xinyi
    Li, Jingjing
    Zhang, Guanghua
    Wu, Hairong
    Ning, Yuping
    Li, Ming D.
    Yang, Zhongli
    JOURNAL OF PSYCHIATRIC RESEARCH, 2021, 138 : 284 - 290
  • [44] SPECTROSCOPY DATA CALIBRATION USING STACKED ENSEMBLE MACHINE LEARNING
    Olihin, Ahmud Wan
    Yuan, Chan Jin
    Hong, Wan Siu
    Pui, Liew Phing
    Ang, Chun Kit
    Hossain, Wafa
    Machmudah, Affiani
    IIUM ENGINEERING JOURNAL, 2024, 25 (01): : 208 - 224
  • [45] Revealing patterns in major depressive disorder with machine learning and networks
    Sallum, Loriz Francisco
    Alves, Caroline L.
    Toutain, Thaise G. L. de O.
    Porto, Joel Augusto Moura
    Thielemann, Christiane
    Rodrigues, Francisco A.
    CHAOS SOLITONS & FRACTALS, 2025, 194
  • [46] A Predictive Biomarker Model Using Quantitative Electroencephalography in Adolescent Major Depressive Disorder
    McVoy, Molly
    Chumachenko, Serhiy
    Briggs, Farren
    Kaffashi, Farhad
    Loparo, Kenneth
    JOURNAL OF CHILD AND ADOLESCENT PSYCHOPHARMACOLOGY, 2022, 32 (09) : 460 - 466
  • [47] Prediction of drug response in major depressive disorder using ensemble of transfer learning with convolutional neural network based on EEG
    Shahabi, Mohsen Sadat
    Shalbaf, Ahmad
    Maghsoudi, Arash
    BIOCYBERNETICS AND BIOMEDICAL ENGINEERING, 2021, 41 (03) : 946 - 959
  • [48] Identification of treatment-resistant major depressive disorder using a machine learning algorithm
    Semeniuta, Daniel
    Marci, Carl
    Bandaria, Jigar
    Zabinski, Joseph W.
    Paulus, Jessica K.
    Orsini, Lucinda
    Boussios, Costas
    PHARMACOEPIDEMIOLOGY AND DRUG SAFETY, 2023, 32 : 447 - 447
  • [49] An Empirical Analysis of Machine Learning Algorithms for Crime Prediction Using Stacked Generalization: An Ensemble Approach
    Kshatri, Sapna Singh
    Singh, Deepak
    Narain, Bhavana
    Bhatia, Surbhi
    Quasim, Mohammad Tabrez
    Sinha, G. R.
    IEEE ACCESS, 2021, 9 : 67488 - 67500
  • [50] Using machine-learning to predict sudden gains in treatment for major depressive disorder
    Aderka, Idan M.
    Kauffmann, Amitay
    Shalom, Jonathan G.
    Beard, Courtney
    Bjorgvinsson, Throstur
    BEHAVIOUR RESEARCH AND THERAPY, 2021, 144