Evaluating the impact of machine learning models on adult major depressive disorder using conventional treatment strategies: a systematic review approach
Abstract Background Major Depressive Disorder (MDD) is a leading cause of global disability often treated through a trial-and-error approach, yet treatment response to antidepressants remains highly variable, with remission rates below 50% after initial treatment. Predicting treatment outcomes throu...
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Springer
2025-07-01
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| Series: | Discover Public Health |
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| Online Access: | https://doi.org/10.1186/s12982-025-00816-y |
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| author | Nishant Yadav Anamika Gulati Varun Gulati Prashant Yadav |
| author_facet | Nishant Yadav Anamika Gulati Varun Gulati Prashant Yadav |
| author_sort | Nishant Yadav |
| collection | DOAJ |
| description | Abstract Background Major Depressive Disorder (MDD) is a leading cause of global disability often treated through a trial-and-error approach, yet treatment response to antidepressants remains highly variable, with remission rates below 50% after initial treatment. Predicting treatment outcomes through machine learning (ML) models offers promise, potentially enabling more personalized and effective interventions. However, methodology heterogeneity, varied sample sizes, and lack of external validation of these models limit their clinical use. Methods A comprehensive systematic review of 30 studies employing ML models for MDD treatment response prediction was conducted. The analysis included models such as Support Vector Machines (SVM), Random Forest (RF), Ensemble Models, Deep Learning, and Graph Neural Networks. Studies were selected based on predefined inclusion and exclusion criteria. Key factors evaluated included model performance, interpretability, dataset characteristics, and external validation. Results SVM models consistently demonstrated robust predictive performance across multiple studies (AUC 0.65–0.74) using clinical and symptom data, balancing accuracy and interpretability. EEG-based ML models achieved high accuracy (up to 88%) and are emerging as scalable, cost-effective tools for outpatient monitoring. Multi-omics and neuroimaging-based models showed promise in precision psychiatry but were limited by small sample sizes and generalizability challenges. Advanced models like Deep Learning and Graph Neural Networks provided valuable research insights but remain distant from clinical application. Conclusions ML models hold significant potential in enhancing the precision of antidepressant treatment selection in MDD. SVM and EEG-based ML models currently represent the most clinically viable approaches, while multi-omics, neuroimaging, and advanced deep learning models remain research-intensive. Future efforts should prioritise large-scale validation, model interpretability, and realistic implementation strategies to bridge the gap between research and clinical practice. |
| format | Article |
| id | doaj-art-87d19fabb1b14ec38963d348049eb8fe |
| institution | DOAJ |
| issn | 3005-0774 |
| language | English |
| publishDate | 2025-07-01 |
| publisher | Springer |
| record_format | Article |
| series | Discover Public Health |
| spelling | doaj-art-87d19fabb1b14ec38963d348049eb8fe2025-08-20T03:04:18ZengSpringerDiscover Public Health3005-07742025-07-0122111610.1186/s12982-025-00816-yEvaluating the impact of machine learning models on adult major depressive disorder using conventional treatment strategies: a systematic review approachNishant Yadav0Anamika Gulati1Varun Gulati2Prashant Yadav3Centre for Studies in Science Policy, Jawaharlal Nehru UniversityCentre for Studies in Science Policy, Jawaharlal Nehru UniversityDepartment of English, University of DelhiDepartment of Geography, Lords UniversityAbstract Background Major Depressive Disorder (MDD) is a leading cause of global disability often treated through a trial-and-error approach, yet treatment response to antidepressants remains highly variable, with remission rates below 50% after initial treatment. Predicting treatment outcomes through machine learning (ML) models offers promise, potentially enabling more personalized and effective interventions. However, methodology heterogeneity, varied sample sizes, and lack of external validation of these models limit their clinical use. Methods A comprehensive systematic review of 30 studies employing ML models for MDD treatment response prediction was conducted. The analysis included models such as Support Vector Machines (SVM), Random Forest (RF), Ensemble Models, Deep Learning, and Graph Neural Networks. Studies were selected based on predefined inclusion and exclusion criteria. Key factors evaluated included model performance, interpretability, dataset characteristics, and external validation. Results SVM models consistently demonstrated robust predictive performance across multiple studies (AUC 0.65–0.74) using clinical and symptom data, balancing accuracy and interpretability. EEG-based ML models achieved high accuracy (up to 88%) and are emerging as scalable, cost-effective tools for outpatient monitoring. Multi-omics and neuroimaging-based models showed promise in precision psychiatry but were limited by small sample sizes and generalizability challenges. Advanced models like Deep Learning and Graph Neural Networks provided valuable research insights but remain distant from clinical application. Conclusions ML models hold significant potential in enhancing the precision of antidepressant treatment selection in MDD. SVM and EEG-based ML models currently represent the most clinically viable approaches, while multi-omics, neuroimaging, and advanced deep learning models remain research-intensive. Future efforts should prioritise large-scale validation, model interpretability, and realistic implementation strategies to bridge the gap between research and clinical practice.https://doi.org/10.1186/s12982-025-00816-yMajor depressive disorder (MDD)Antidepressant response predictionMachine learningSupport vector machine (SVM)Precision psychiatry |
| spellingShingle | Nishant Yadav Anamika Gulati Varun Gulati Prashant Yadav Evaluating the impact of machine learning models on adult major depressive disorder using conventional treatment strategies: a systematic review approach Discover Public Health Major depressive disorder (MDD) Antidepressant response prediction Machine learning Support vector machine (SVM) Precision psychiatry |
| title | Evaluating the impact of machine learning models on adult major depressive disorder using conventional treatment strategies: a systematic review approach |
| title_full | Evaluating the impact of machine learning models on adult major depressive disorder using conventional treatment strategies: a systematic review approach |
| title_fullStr | Evaluating the impact of machine learning models on adult major depressive disorder using conventional treatment strategies: a systematic review approach |
| title_full_unstemmed | Evaluating the impact of machine learning models on adult major depressive disorder using conventional treatment strategies: a systematic review approach |
| title_short | Evaluating the impact of machine learning models on adult major depressive disorder using conventional treatment strategies: a systematic review approach |
| title_sort | evaluating the impact of machine learning models on adult major depressive disorder using conventional treatment strategies a systematic review approach |
| topic | Major depressive disorder (MDD) Antidepressant response prediction Machine learning Support vector machine (SVM) Precision psychiatry |
| url | https://doi.org/10.1186/s12982-025-00816-y |
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