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Daniel Leightley
King's College London - London / United Kingdom
Engineering & Technology / Computer Science
AD Scientific Index ID: 1138214
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Daniel Leightley's MOST POPULAR ARTICLES
1-)
Psychosocial impact of the COVID-19 pandemic on 4378 UK healthcare workers and ancillary staff: initial baseline data from a cohort study collected during the first wave of the … Occupational and environmental medicine 78 (11), 801-808, 2021
2-)
Digital health tools for the passive monitoring of depression: a systematic review of methods NPJ digital medicine 5 (1), 3, 2022
3-)
Remote Assessment of Disease and Relapse in Major Depressive Disorder (RADAR-MDD): recruitment, retention, and data availability in a longitudinal remote measurement study BMC psychiatry 22 (1), 136, 2022
4-)
Risk assessment tools and data-driven approaches for predicting and preventing suicidal behavior Frontiers in psychiatry 10, 36, 2019
5-)
Identifying probable post-traumatic stress disorder: applying supervised machine learning to data from a UK military cohort Journal of Mental Health 28 (1), 34-41, 2019
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