Scientific journal paper Q1
Designing and implementing SMILE: An AI-driven platform for enhancing clinical decision-making in mental health and neurodivergence management
António Miguel Pesqueira (Pesqueira, A.); Maria José Sousa (Sousa, M. J.); Rúben Pereira (Pereira, R.); Mark Schwendinger (Schwendinger, M.);
Journal Title
Computational and Structural Biotechnology Journal
Year (definitive publication)
2025
Language
English
Country
Netherlands
More Information
Web of Science®

Times Cited: 4

(Last checked: 2025-12-14 11:46)

View record in Web of Science®

Scopus

Times Cited: 3

(Last checked: 2025-12-10 17:52)

View record in Scopus

Google Scholar

Times Cited: 8

(Last checked: 2025-12-13 23:40)

View record in Google Scholar

This publication is not indexed in Overton

Abstract
Rising levels of anxiety, depression, and burnout among healthcare professionals (HCPs) underscore the urgent need for technology-driven interventions that optimize both clinical decision-making and workforce well-being. This innovation report introduces the Support, Management, Individual, Learning Enablement (SMILE) platform, designed to integrate advanced AI-driven decision support, federated learning for data privacy, and cognitive behavioral therapy (CBT) modules into a single, adaptive solution. A mixed-methods pilot evaluation involved focus groups, structured surveys, and real-world usability tests to capture changes in stress levels, user satisfaction, and perceived value. Quantitative analyses revealed significant reductions in reported stress and support times, alongside notable gains in satisfaction and perceived resource value. Qualitatively, participants praised SMILE’s accessible interface, enhanced peer support, and real-time therapeutic interventions. These findings confirm the feasibility and utility of a holistic, Artificial Intelligence (AI) supported framework for improving mental health outcomes in high-stress clinical environments. Theoretically, SMILE contributes to emerging evidence on integrated AI platforms, while it offers an ethically sound and user-friendly blueprint for improving patient care and staff well-being.
Acknowledgements
--
Keywords
Mental health,Neurodivergence,Dynamic capabilities,Cognitive behavioral therapy,Artificial intelligence
  • Computer and Information Sciences - Natural Sciences
  • Biological Sciences - Natural Sciences
Funding Records
Funding Reference Funding Entity
ICMPD/2021/MPF-357-010 ISCTE-IUL Business Research Unit
Related Projects

This publication is an output of the following project(s):