Development of digitally obtainable 10-year risk scores for depression and anxiety in the general population
D. Morelli, N. Dolezalova, S. Ponzo, M. Colombo, D. Plans

TL;DR
This study developed and validated 10-year risk prediction models for depression and anxiety using easily obtainable digital data from over 400,000 UK Biobank participants, enabling personalized risk tracking and prevention.
Contribution
It introduces novel predictive algorithms for depression and anxiety based on digital data, with high accuracy and practical application potential.
Findings
Models achieved over 0.8 concordance in validation.
Reduced models with fewer predictors maintained high accuracy.
Predictive scores are suitable for digital health applications.
Abstract
The burden of depression and anxiety in the world is rising. Identification of individuals at increased risk of developing these conditions would help to target them for prevention and ultimately reduce the healthcare burden. We developed a 10-year predictive algorithm for depression and anxiety using the full cohort of over 400,000 UK Biobank (UKB) participants without pre-existing depression or anxiety using digitally obtainable information. From the initial 204 variables selected from UKB, processed into > 520 features, iterative backward elimination using Cox proportional hazards model was performed to select predictors which account for the majority of its predictive capability. Baseline and reduced models were then trained for depression and anxiety using both Cox and DeepSurv, a deep neural network approach to survival analysis. The baseline Cox model achieved concordance of…
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Taxonomy
TopicsDigital Mental Health Interventions · Mental Health Treatment and Access · Mental Health Research Topics
