Classifying major depression patients and healthy controls using EEG, eye tracking and galvanic skin response data

被引:69
|
作者
Ding Xinfang [1 ]
Yue Xinxin [2 ]
Zheng Rui [3 ]
Bi Cheng [3 ]
Li Dai [3 ]
Yao Guizhong [2 ]
机构
[1] Capital Med Univ, Sch Med Humanities, Dept Med Psychol, Beijing, Peoples R China
[2] Peking Univ, Hosp 6, Beijing, Peoples R China
[3] Adai Technol Beijing Ltd Co, Beijing, Peoples R China
关键词
Depression; Machine learning; Electroencephalography; Eye tracking; Galvanic skin response; NONLINEAR FEATURES; BRAIN; ASYMMETRY; DISORDERS; COHERENCE; ATTENTION; CORTEX; ADULTS; VOLUME; STYLE;
D O I
10.1016/j.jad.2019.03.058
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Objective: Major depression disorder (MDD) is one of the most prevalent mental disorders worldwide. Diagnosing depression in the early stage is crucial to treatment process. However, due to depression's comorbid nature and the subjectivity in diagnosis, an early diagnosis could be challenging. Recently, machine learning approaches have been used to process Electroencephalography (EEG) and neuroimaging data to facilitate the diagnosis. In the present study, we used a multimodal machine learning approach involving EEG, eye tracking and galvanic skin response data as input to classify depression patients and healthy controls. Methods: One hundred and forty-four MDD depression patients and 204 matched healthy controls were recruited. They were required to watch a series of affective and neutral stimuli while EEG, eye tracking information and galvanic skin response were recorded via a set of low-cost, portable devices. Three machine learning algorithms including Random Forests, Logistic Regression and Support Vector Machine (SVM) were trained to build dichotomous classification model. Results: The results showed that the highest classification f1 score was obtained by Logistic Regression algorithms, with accuracy = 79.63%, precision = 76.67%, recall= 85.19% and f1 score= 80.70% Limitations: No hospitalized patients were available; only outpatients were included in the present study. The sample consisted mostly of young adult, and no elder patients were included. Conclusions: The machine learning approach can be a useful tool for classifying MDD patients and healthy controls and may help for diagnostic processes.
引用
收藏
页码:156 / 161
页数:6
相关论文
共 50 条
  • [21] EEG Predictors of Response in Patients with Major Depression Receiving rTMS
    Zarkowski, Paul
    Avery, David
    Borisovich, Andrei
    BIOLOGICAL PSYCHIATRY, 2010, 67 (09) : 232S - 232S
  • [22] Classifying flow cytometry data using Bayesian analysis helps to distinguish ALS patients from healthy controls
    Raeuber, Saskia
    Nelke, Christopher
    Schroeter, Christina B. B.
    Barman, Sumanta
    Pawlitzki, Marc
    Ingwersen, Jens
    Akguen, Katja
    Guenther, Rene
    Garza, Alejandra P. P.
    Marggraf, Michaela
    Dunay, Ildiko Rita
    Schreiber, Stefanie
    Vielhaber, Stefan
    Ziemssen, Tjalf
    Melzer, Nico
    Ruck, Tobias
    Meuth, Sven G. G.
    Herty, Michael
    FRONTIERS IN IMMUNOLOGY, 2023, 14
  • [23] Approach and avoidance learning in patients with major depression and healthy controls: relation to anhedonia
    Chase, H. W.
    Frank, M. J.
    Michael, A.
    Bullmore, E. T.
    Sahakian, B. J.
    Robbins, T. W.
    PSYCHOLOGICAL MEDICINE, 2010, 40 (03) : 433 - 440
  • [24] Mirtazapine increases cortical excitability in healthy controls and epilepsy patients with major depression
    Münchau, A
    Langosch, JM
    Gerschlager, W
    Rothwell, JC
    Orth, M
    Trimble, MR
    JOURNAL OF NEUROLOGY NEUROSURGERY AND PSYCHIATRY, 2005, 76 (04): : 527 - 533
  • [25] Using EEG to Predict Clinical Response to Electroconvulsive Therapy in Patients With Major Depression: A Comprehensive Review
    Simon, Louis
    Blay, Martin
    Galvao, Filipe
    Brunelin, Jerome
    FRONTIERS IN PSYCHIATRY, 2021, 12
  • [26] Emotion regulation in adolescents with major depression - Evidence from a combined EEG and eye-tracking study
    Feldmann, Lisa
    Zsigo, Carolin
    Mortl, Isabelle
    Bartling, Juergen
    Wachinger, Christian
    Oort, Frans
    Schulte-Koerne, Gerd
    Greimel, Ellen
    JOURNAL OF AFFECTIVE DISORDERS, 2023, 340 : 899 - 906
  • [27] Dex/CRH test cortisol response in outpatients with major depression and matched healthy controls
    Carpenter, Linda L.
    Ross, Nicole S.
    Tyrka, Audrey R.
    Anderson, George M.
    Kelly, Megan
    Price, Lawrence H.
    PSYCHONEUROENDOCRINOLOGY, 2009, 34 (08) : 1208 - 1213
  • [28] Toward Depression Recognition Using EEG and Eye Tracking: An Ensemble Classification Model CBEM
    Zhu, Jing
    Wang, Zihan
    Zeng, Shuai
    Li, Xiaowei
    Hu, Bin
    Zhang, Xin
    Xia, Chen
    Zhang, Lan
    Ding, Zhijie
    2019 IEEE INTERNATIONAL CONFERENCE ON BIOINFORMATICS AND BIOMEDICINE (BIBM), 2019, : 782 - 786
  • [29] Human-Robot Trust Assessment Using Motion Tracking & Galvanic Skin Response
    Hald, Kasper
    Rehmn, Matthias
    Moeslund, Thomas B.
    2020 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS), 2020, : 6282 - 6287
  • [30] Temperament and Character Profiles of Ankylosing Spondylitis Patients Compared to Major Depression Patients and Healthy Controls
    Tonuk, Sukru Burak
    Arisoy, Ozden
    Ozturk, Erhan Arif
    Boztas, Mehmet Hamid
    Sultanoglu, Tuba Erdem
    CLINICAL AND EXPERIMENTAL RHEUMATOLOGY, 2014, 32 (04) : S57 - S57