Prediction of depression onset risk among middle-aged and elderly adults using machine learning and Canadian Longitudinal Study on Aging cohort

Yipping Song, Lei Qian, Jie Sui, Russell Greiner, Xin min Li, Andrew Greenshaw, Yang S. Liu, Bo Cao

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Abstract

Background
Early identification of the middle-aged and elderly people with high risk of developing depression disorder in the future and the full characterization of the associated risk factors are crucial for early interventions to prevent depression among the aging population.

Methods
Canadian Longitudinal Study on Aging (CLSA) has collected comprehensive information, including psychological scales and other non-psychological measures, i.e., socioeconomic, environmental, health, lifestyle, cognitive function, personality, about its participants (30,097 subjects aged from 45 to 85) at baseline phase in 2012–2015. We applied machine learning models for the prediction of these participants' risk of depression onset approximately three years later using information collected at baseline phase.

Results
Individual-level risk for future depression onset among CLSA participants can be accurately predicted, with an area under receiver operating characteristic curve (AUC) 0.791 ± 0.016, using all baseline information. We also found the 10-item Center for Epidemiological Studies Depression Scale coupled with age and sex information could achieve similar performance (AUC 0.764 ± 0.016). Furthermore, we identified existing subthreshold depression symptoms, emotional instability, low levels of life satisfaction, perceived health, and social support, and nutrition risk as the most important predictors for depression onset independent from psychological scales.

Limitations
Depression was based on self-reported doctor diagnosis and depression screening tool.

Conclusions
The identified risk factors will further improve our understanding of the depression onset among middle-aged and elderly population and the early identification of high-risk subjects is the first step for successful early interventions.
Original languageEnglish
Pages (from-to)52-57
Number of pages6
JournalJournal of Affective Disorders
Volume339
DOIs
Publication statusPublished - 15 Oct 2023

Bibliographical note

This research was undertaken, in part, thanks to funding from the Canada Research Chairs program, Alberta Innovates, Mental Health Foundation, MITACS Accelerate program, Simon & Martina Sochatsky Fund for Mental Health, the Alberta Synergies in Alzheimer's and Related Disorders (SynAD) program and University of Alberta Hospital Foundation.

Data Availability Statement

Data are available from the Canadian Longitudinal Study on Aging (www.clsa-elcv.ca) for researchers who meet the criteria for access to de-identified CLSA data. To learn more about the accessibility of CLSA data sets, see https://www.clsa-elcv.ca/data-access.

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