Machine learning identifies a COVID-19-specific phenotype in university students using a mental health app

Author:

Shvetcov Artur,Whitton Alexis,Kasturi Suranga,Zheng Wu-Yi,Beames Joanne,Ibrahim Omar,Han JinORCID,Hoon Leonard,Mouzakis Kon,Gupta Sunil,Venkatesh Svetha,Christensen Helen,Newby Jill

Abstract

AbstractAdvances in smartphone technology have allowed people to access mental healthcare via digital apps from wherever and whenever they choose. University students experience a high burden of mental health concerns. Although these apps improve mental health symptoms, user engagement has remained low. Studies have shown that users can be subgrouped based on unique characteristics that just-in-time adaptive interventions (JITAIs) can use to improve engagement. To date, however, no studies have examined the effect of the COVID-19 pandemic on these subgroups. Here, we use machine learning to examine user subgroup characteristics across three COVID-19-specific timepoints: during lockdown, immediately following lockdown, and three months after lockdown ended. We demonstrate that there are three unique subgroups of university students who access mental health apps. Two of these, with either higher or lower mental well-being, were defined by characteristics that were stable across COVID-19 timepoints. The third, situational well-being, had characteristics that were timepoint-dependent, suggesting that they are highly influenced by traumatic stressors and stressful situations. This subgroup also showed feelings and behaviours consistent with burnout. Overall, our findings clearly suggest that user subgroups are unique: they have different characteristics and therefore likely have different mental healthcare goals. Our findings also highlight the importance of including questions and additional interventions targeting traumatic stress(ors), reason(s) for use, and burnout in JITAI-style mental health apps to improve engagement.

Publisher

Cold Spring Harbor Laboratory

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1. Detection of Depression Symptoms Through Unsupervised Learning;Lecture Notes in Computer Science;2024

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