Towards More Efficient Depression Risk Recognition via Gait
Min Ren, Muchan Tao, Xuecai Hu, Xiaotong Liu, Qiong Li, Yongzhen Huang

TL;DR
This paper introduces a large-scale gait database and a deep learning model for efficient depression risk recognition, demonstrating promising results and advancing objective mental health assessment methods.
Contribution
It creates the first large-scale gait dataset for depression risk analysis and proposes a deep learning approach surpassing hand-crafted methods.
Findings
Deep learning model outperforms traditional approaches.
Large-scale gait database enables robust depression risk recognition.
Gait features correlate strongly with depression risk.
Abstract
Depression, a highly prevalent mental illness, affects over 280 million individuals worldwide. Early detection and timely intervention are crucial for promoting remission, preventing relapse, and alleviating the emotional and financial burdens associated with depression. However, patients with depression often go undiagnosed in the primary care setting. Unlike many physiological illnesses, depression lacks objective indicators for recognizing depression risk, and existing methods for depression risk recognition are time-consuming and often encounter a shortage of trained medical professionals. The correlation between gait and depression risk has been empirically established. Gait can serve as a promising objective biomarker, offering the advantage of efficient and convenient data collection. However, current methods for recognizing depression risk based on gait have only been validated…
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Taxonomy
TopicsProsthetics and Rehabilitation Robotics · Gait Recognition and Analysis
