Depressive and neurocognitive disorders are debilitating conditions that account for the leading causes of years lived with disability worldwide. However, there are no biomarkers that are objective or easy-to-obtain in daily clinical practice, which leads to difficulties in assessing treatment response and developing new drugs. New technology allows quantification of features that clinicians perceive as reflective of disorder severity, such as facial expressions, phonic/speech information, body motion, daily activity, and sleep.
Major depressive disorder, bipolar disorder, and major and minor neurocognitive disorders as well as healthy controls are recruited for the study. A psychiatrist/psychologist conducts conversational 10-min interviews with participants ≤10 times within up to five years of follow-up. Interviews are recorded using RGB and infrared cameras, and an array microphone. As an option, participants are asked to wear wrist-band type devices during the observational period. Various software is used to process the raw video, voice, infrared, and wearable device data. A machine learning approach is used to predict the presence of symptoms, severity, and the improvement/deterioration of symptoms.
The overall goal of this proposed study, the Project for Objective Measures Using Computational Psychiatry Technology (PROMPT), is to develop objective, noninvasive, and easy-to-use biomarkers for assessing the severity of depressive and neurocognitive disorders in the hopes of guiding decision-making in clinical settings as well as reducing the risk of clinical trial failure. Challenges may include the large variability of samples, which makes it difficult to extract the features that commonly reflect disorder severity.
UMIN000021396, University Hospital Medical Information Network (UMIN).
© 2020 The Authors.
About The Expert
Taishiro Kishimoto
Akihiro Takamiya
Kuo-Ching Liang
Kei Funaki
Takanori Fujita
Momoko Kitazawa
Michitaka Yoshimura
Yuki Tazawa
Toshiro Horigome
Yoko Eguchi
Toshiaki Kikuchi
Masayuki Tomita
Shogyoku Bun
Junichi Murakami
Brian Sumali
Tifani Warnita
Aiko Kishi
Mizuki Yotsui
Hiroyoshi Toyoshiba
Yasue Mitsukura
Koichi Shinoda
Yasubumi Sakakibara
Masaru Mimura
References
PubMed