Literature DB >> 35472473

Depression screening using a non-verbal self-association task: A machine-learning based pilot study.

Yang S Liu1, Yipeng Song1, Naomi A Lee2, Daniel M Bennett2, Katherine S Button3, Andrew Greenshaw1, Bo Cao4, Jie Sui5.   

Abstract

BACKGROUND: Effective screening is important to combat the raising burden of depression and opens a critical time window for early intervention. Clinical use of non-verbal depression screening is nascent, yet a promising and viable candidate to supplement verbal screening. Differential self- and emotion-processing in depression patients were previously reported by non-verbal behavioural assessments, corroborated by neuroimaging findings of distinct neuroanatomical markers. Thus non-verbal validated brain-behaviour based self-emotion-related assessment data reflect physiological differences and may support individual level screening of depression.
METHODS: In this pilot study (n = 84) we collected two longitudinal sessions of behavioural assessment data in a laboratory setting. Depression was assessed using Beck Depression Inventory II (BDI-II), to explore optimal screening methods with machine-learning, and to establish the validity of adapting a novel behavioural assessment focusing on self and emotions for depression screening.
RESULTS: The best machine-learning model achieved high performance in depression screening, 10-Fold cross-validation (CV) Area Under the receiver operating characteristic Curve (AUC) of 0.90 and balanced accuracy of 0.81, using a Gradient Boosting algorithm. Prospective prediction using a model trained with session 1 data to predict session 2 depression status achieved a 10-Fold CV AUC of 0.77 and balanced accuracy of 0.66. We also identified interpretable behavioural signatures for depression patients based on the best model.
CONCLUSION: The study supports the utility of using behavioural data as a viable and cost-effective solution for depression screening, with a potential wide range of applications in clinical settings.
Copyright © 2022 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Depression; Machine-learning; Matching technique; Self; Sensitive objective measurement

Mesh:

Year:  2022        PMID: 35472473     DOI: 10.1016/j.jad.2022.04.122

Source DB:  PubMed          Journal:  J Affect Disord        ISSN: 0165-0327            Impact factor:   4.839


  1 in total

1.  Individualized identification of sexual dysfunction of psychiatric patients with machine-learning.

Authors:  Yang S Liu; Jeffrey R Hankey; Stefani Chokka; Pratap R Chokka; Bo Cao
Journal:  Sci Rep       Date:  2022-06-10       Impact factor: 4.996

  1 in total

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