We use cookies on this website, you can read about them here. To use the website as intended please... ACCEPT COOKIES
UAL Research Online

Mental health predictive models for triaging young adults

Isiaq, Sakirulai Olufemi and Dawson, Lawrence (2022) Mental health predictive models for triaging young adults. In: ICECCME 2022, 16-18 November 2022, Maldives, Maldives.

Type of Research: Conference, Symposium or Workshop Item
Creators: Isiaq, Sakirulai Olufemi and Dawson, Lawrence

Mental health is a state of well-being in which an individual realises own abilities and can productively cope with the stresses of life. Unfortunately, issues surrounding the mental health of young adults span every socio-economic group in the world. Such include a lack of access to adequate medical service and associated stigma among other factors. In recent times, various studies have indicated computer applications are increasingly contributing to the management of human well-being and other life activities. Subsequently, machine learning models have proved effective in predicting future activities and occurrences. This work involves the development of three models, which aim to establish a benchmark for mental health disorders prediction. The recorded results are promising with AUC scores of 96% (anxiety) and 93% (depression). This work provides the groundwork around the deployment of machine learning models for the development of computer applications that can improve the prediction of common mental health disorders, namely anxiety and depression, hence, it could be upscaled from a controlled environment to real-world application.

Official Website: http://www.iceccme.com/2022/
Your affiliations with UAL: Other Affiliations > Teaching and Professional Fellowships
Research Centres/Networks > Institute for Creative Computing
Date: 30 December 2022
Related Websites: https://ieeexplore.ieee.org/document/9988301
Related Websites:
Event Location: Maldives, Maldives
Date Deposited: 02 Nov 2023 13:02
Last Modified: 02 Nov 2023 13:02
Item ID: 20720
URI: https://ualresearchonline.arts.ac.uk/id/eprint/20720

Repository Staff Only: item control page | University Staff: Request a correction