The diagnosis of major depressive disorder (MDD) urgently requires objective biomarkers for clinical translation. In this study, we established a multicenter cohort to date (N = 1,816; comprising 910 MDD patients and 906 healthy control subjects), using 23,608 standardized speech samples. Based on 6,373 acoustic-prosodic features, we develop a deep learning framework that employs a self-supervised architecture to leverage speech biomarkers. We perform a systematic comparative analysis among pretrained foundation models, including WavLM and HuBERT, and traditional acoustic features extracted from openSMILE. Model performance is evaluated using the area under the receiver operating characteristic curve (AUC), sensitivity, and specificity. Our framework achieves an AUC of 0.932 in internal validation (n = 333), significantly outperforming conventional methods, while maintaining efficacy in external validation (n = 160, AUC = 0.879). Self-supervised representations demonstrate robust diagnostic accuracy compared to other models. Leveraging the large speech biomarker dataset, our findings provide a rapid, cost-effective, and non-invasive approach for assisted depression assessment. A speech-based AI model detects depression from voice recordings with high accuracy. The deep learning model achieves 93% accuracy in internal validation and 88% in external validation, demonstrating potential as an objective screening tool.
Lin et al. (Mon,) studied this question.