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How to Solve Clinical Challenges in Mood Disorders; Machine Learning Approaches Using Electrophysiological Markers

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Abstract
Differentiating between the diagnoses of mood disorders and other psychiatric disorders, and predicting treatment response in depression has long been a concern for clinicians. Machine learning (ML) is one part of artificial intelligence that focuses on instructing computers to mimic the cognitive abilities of the human brain through training. This study will review the research on the use of ML techniques to differentiate diagnoses and predict treatment responses in mood disorders based on electroencephalography (EEG) data. There have been several attempts to differentiate between the diagnoses of bipolar disorder and major depressive disorder , mood disorders, and other psychiatric disorders using ML techniques found on EEG markers. Previous studies have shown that accuracy varies depending on which EEG markers are used, the sample size, and the ML technique. Also, precise and improved ML approaches can be developed by adapting the various feature selection and validation methods that reflect each disease's characteristics. Although ML faces some limitations and challenges in solving for consistent and improved accuracy in the diagnosis and treatment of mood disorders, it has a great potential to understand mood disorders better and provide valuable tools to personalize both identification and treatment.
All Author(s)
Young Wook Song ; Ho Sung Lee ; Sungkean Kim ; Kibum Kim ; Bin-Na Kim ; Ji Sun Kim
Intsitutional Author(s)
이호성김지선
Issued Date
2024
Type
Article
Keyword
Bipolar disorderDiagnosisElectroencephalographyMachine learningMajor depressive disorderTreatment response
Publisher
대한정신약물학회
Korean College of Neuropsychopharmacology
ISSN
1738-1088 ; 2093-4327
Citation Title
Clinical psychopharmacology and neuroscience
Citation Volume
22
Citation Number
3
Citation Start Page
416
Citation End Page
430
Language(ISO)
eng
DOI
10.9758/cpn.24.1165
URI
http://schca-ir.schmc.ac.kr/handle/2022.oak/4659
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