Multi-feature concatenation and multi-classifier stacking: an interpretable and generalizable machine learning method for MDD discrimination with rsfMRI
Yunsong Luo, Wenyu Chen, Ling Zhan, Jiang Qiu, Tao Jia

TL;DR
This paper introduces MFMC, a machine learning approach combining multi-feature concatenation and classifier stacking, achieving high accuracy and interpretability for MDD diagnosis using rsfMRI data from multiple sites.
Contribution
The study presents a novel multi-feature concatenation and stacking method that improves accuracy, generalizability, and interpretability in MDD classification with rsfMRI.
Findings
Achieved 96.9% accuracy in MDD discrimination.
Validated generalizability across independent sites.
Identified key brain regions and features contributing to classification.
Abstract
Major depressive disorder is a serious and heterogeneous psychiatric disorder that needs accurate diagnosis. Resting-state functional MRI (rsfMRI), which captures multiple perspectives on brain structure, function, and connectivity, is increasingly applied in the diagnosis and pathological research of mental diseases. Different machine learning algorithms are then developed to exploit the rich information in rsfMRI and discriminate MDD patients from normal controls. Despite recent advances reported, the discrimination accuracy has room for further improvement. The generalizability and interpretability of the method are not sufficiently addressed either. Here, we propose a machine learning method (MFMC) for MDD discrimination by concatenating multiple features and stacking multiple classifiers. MFMC is tested on the REST-meta-MDD data set that contains 2428 subjects collected from 25…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Advanced MRI Techniques and Applications · Advanced Neuroimaging Techniques and Applications
