Abstract
ABSTRACTIntroductionPrevious studies have established that depressive syndromes can be detected using machine learning methods, with multimodal data being essential. Multimodal data facilitates the extraction of characteristics such as gaze tracking, a reliable depression indicator. Our study employs high-quality video and other multimodal data from patients diagnosed with depression. Our study uses a multimodal data collection system (MDC) to understand the complex indicators of depression.ObjectiveThis paper outlines our protocol for deploying a multimodal data collection system within an In-Person Clinical Assessment environment. The system gathers high-definition videos, real-time vital signs, and voice recordings for future extraction of critical information such as eye gaze patterns. We aim to scale our model to provide portable depression risk analyses, facilitating timely intervention and encouraging patients to seek professional assistance.Methods and AnalysisWe have conducted sessions with 70 participants diagnosed with depression. Each participant undergoes DSM-5 interviews and engages with our multimodal data collection system. Participants respond to five on-screen scales while being recorded. To our knowledge, no other protocol has combined multimodal data collection and various stimuli in depression data collection.Ethics and DisseminationEthical approval was provided by the National Health Commission of the PRC, Hefei Fourth People’s Hospital Ethics Committee (HSY-IRB-YJ-YYYX-JYF001). Results will be published in a peer-reviewed journal and presented at academic conferences.
Publisher
Cold Spring Harbor Laboratory
Reference9 articles.
1. WHO. World Health Organization. 2023 [cited 2024 Jun 19]. Depressive disorder (depression). Available from: https://www.who.int/news-room/fact-sheets/detail/depression
2. Sawchuk C. Mayo Clinic. [cited 2024 Jun 19]. Depression (major depressive disorder) - Symptoms and causes. Available from: https://www.mayoclinic.org/diseases-conditions/depression/symptoms-causes/syc-20356007
3. Prediction of depression symptoms in individual subjects with face and eye movement tracking;Psychol Med,2020
4. Thoduparambil P , Dominic A , mariam varghese S. EEG-based deep learning model for the automatic detection of clinical depression. Phys Eng Sci Med. 2020 Oct 22;43.
5. Depression Intensity Estimation via Social Media: A Deep Learning Approach;IEEE Trans Comput Soc Syst,2021