Data Collection for Automatic Depression Identification in Spanish Speakers Using Deep Learning Algorithms: Protocol for a Case-Control Study
Luis F Brenes, Luis A Trejo, Jose Antonio Cantoral-Ceballos, Daniela Aguilar-De León, Fresia Paloma Hernández-Moreno

TL;DR
This study outlines a protocol to collect a high-quality Spanish voice dataset for training deep learning models to automatically identify depression.
Contribution
The novel contribution is a new dataset collection protocol for depression classification in Spanish speakers using professional and smartphone microphones.
Findings
A dataset collection protocol was designed for Spanish speakers with depression and non-depressed controls.
Voice recordings are collected using both professional and smartphone microphones to support diverse deep learning research.
The dataset includes depression labels via PHQ-9 and additional variables that may influence speech.
Abstract
Depression is a mental health condition that affects millions of people worldwide. Although common, it remains difficult to diagnose due to its heterogeneous symptomatology. Mental health questionnaires are currently the most used assessment method to screen depression; these, however, have a subjective nature due to their dependence on patients’ self-assessments. Researchers have been interested in finding an accurate way of identifying depression through an objective biomarker. Recent developments in neural networks and deep learning have enabled the possibility of classifying depression through the computational analysis of voice recordings. However, this approach is heavily dependent on the availability of datasets to train and test deep learning models, and these are scarce. There are also very few languages available. This study proposes a protocol for the collection of a new…
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Taxonomy
TopicsEmotion and Mood Recognition · Speech Recognition and Synthesis · Mental Health via Writing
