Digital Phenotyping and Feature Extraction on Smartphone Data for Depression Detection [1]
Tytuł | Digital Phenotyping and Feature Extraction on Smartphone Data for Depression Detection |
Publication Type | Journal Article |
Rok publikacji | 2025 |
Autorzy | Yang M [2], Ngai ECH [3], Hu X [4], Hu B [5], Liu J [6], Gelenbe E [7] |
Journal | Proceedings of the IEEE |
Start Page | 1 - 26 |
Date Published | 03/2025 |
Słowa kluczowe | Depression detection [8], digital phenotyping [9], Feature extraction [10], Sensors [11], Sensors;Depression;Feature extraction;Magnetic sensors;Temperature sensors;Mental health;Medical services;Biomedical monitoring;Sensor phenomena and characterization;Monitoring [12], smartphone [13] |
Abstract | Smartphones are widely used as portable data collectors for wearable and healthcare sensors that can passively collect data streams related to the environment, health status, and behaviors. Recent research shows that the collected data can be used to monitor not only the physical states but also the mental health of individuals. However, extracting the features of digital phenotypes that characterize major depressive disorder (MDD) is technically challenging and may raise significant privacy concerns. Addressing such challenges has become the focus of many researchers. This article provides a comprehensive analysis of several key issues related to ubiquitous sensing to aid in detecting MDD. Specifically, this article analyzes existing methodologies and feature extraction algorithms used to detect possible MDD through digital phenotyping from smartphone data. In particular, five types of features are summarized and explained, namely, location, movement, rhythm, sleep, and social and device usage. Finally, related limitations and challenges are discussed to provide paths for further research and engineering. |
URL | https://ieeexplore.ieee.org/document/10915577 [14] |
DOI | 10.1109/JPROC.2025.3542324 [15] |