RADIANCE: Reliable and interpretable depression detection from speech using transformer.

Comput Biol Med

Department of Computer Science and Engineering, Indian Institute of Technology Indore, Indore, 452020, Madhya Pradesh, India. Electronic address:

Published: December 2024

Depression is a common but severe mental disorder that adversely impacts the ability of an individual to function normally in their day-to-day life. A majority of depressed individuals remain undiagnosed due to factors such as social stigma and a shortage of healthcare professionals. Consequently, several Machine Learning and Deep Learning (DL) models based on speech have been proposed for automatic depression detection, with the latter generally outperforming the former. However, DL models are blackbox and offer no transparency. In contrast, healthcare professionals prefer models that provide interpretability besides being accurate. In this direction, we propose a method RADIANCE (Reliable AnD InterpretAble depressioN deteCtion transformErs). RADIANCE incorporates a novel FilterBank VIsion Transformer (FBViT) network, which provides the symptoms of depression as interpretable features. Additionally, we employ a novel loss function that handles the class imbalance issue in the datasets. It also incorporates a penalty term that addresses the hierarchy of misclassification errors. We also propose a reliability predictor based on low-level descriptors that provides a reliability score to indicate the trustworthiness of the prediction by FBViT. Furthermore, in contrast to the conventional averaging and majority pooling, RADIANCE consolidates predictions from multiple clips of the input audio by intricately weighing each prediction based on its reliability score, ensuring a more accurate overall prediction. RADIANCE outperforms the state-of-the-art depression detection methods, achieving an accuracy of 89.36%, 80.36%, and 94.44% over the DAIC-WOZ, E-DAIC, and CMDC datasets, respectively. Further, RADIANCE achieves MAE scores of 3.27 and 5.04 on the DAIC-WOZ and E-DAIC datasets, respectively.

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http://dx.doi.org/10.1016/j.compbiomed.2024.109325DOI Listing

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