Translational Psychiatry (Mar 2024)

Multimodal digital assessment of depression with actigraphy and app in Hong Kong Chinese

  • Jie Chen,
  • Ngan Yin Chan,
  • Chun-Tung Li,
  • Joey W. Y. Chan,
  • Yaping Liu,
  • Shirley Xin Li,
  • Steven W. H. Chau,
  • Kwong Sak Leung,
  • Pheng-Ann Heng,
  • Tatia M. C. Lee,
  • Tim M. H. Li,
  • Yun-Kwok Wing

DOI
https://doi.org/10.1038/s41398-024-02873-4
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 8

Abstract

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Abstract There is an emerging potential for digital assessment of depression. In this study, Chinese patients with major depressive disorder (MDD) and controls underwent a week of multimodal measurement including actigraphy and app-based measures (D-MOMO) to record rest-activity, facial expression, voice, and mood states. Seven machine-learning models (Random Forest [RF], Logistic regression [LR], Support vector machine [SVM], K-Nearest Neighbors [KNN], Decision tree [DT], Naive Bayes [NB], and Artificial Neural Networks [ANN]) with leave-one-out cross-validation were applied to detect lifetime diagnosis of MDD and non-remission status. Eighty MDD subjects and 76 age- and sex-matched controls completed the actigraphy, while 61 MDD subjects and 47 controls completed the app-based assessment. MDD subjects had lower mobile time (P = 0.006), later sleep midpoint (P = 0.047) and Acrophase (P = 0.024) than controls. For app measurement, MDD subjects had more frequent brow lowering (P = 0.023), less lip corner pulling (P = 0.007), higher pause variability (P = 0.046), more frequent self-reference (P = 0.024) and negative emotion words (P = 0.002), lower articulation rate (P < 0.001) and happiness level (P < 0.001) than controls. With the fusion of all digital modalities, the predictive performance (F1-score) of ANN for a lifetime diagnosis of MDD was 0.81 and 0.70 for non-remission status when combined with the HADS-D item score, respectively. Multimodal digital measurement is a feasible diagnostic tool for depression in Chinese. A combination of multimodal measurement and machine-learning approach has enhanced the performance of digital markers in phenotyping and diagnosis of MDD.