Efficient Explainable and Evidence Based Precision and Personalisation of Treatment

Authors

Nilmini Wickramasinghe
La Trobe University, School of Computing, Engineering and Mathematical Sciences
Nalika Ulapane
La Trobe University, School of Computing, Engineering and Mathematical Sciences
Anamika Ranaut
La Trobe University, School of Computing, Engineering and Mathematical Sciences
Neale Cohen
Baker Heart and Diabetes Institute image/svg+xml

Synopsis

Modern advances in computation enable the use of complex machine learning algorithms and artificial intelligence to assist human decision-making. However, the lack of explainability entailing from the black box nature of complex machine learning algorithms, inhibit their adoption in real-world applications especially in fields like healthcare. To address this challenge, we explored using the Odds Ratio (OR)—a clinically well-known measure of evidence—coupled with a sorting algorithm to prototype an explainable clinical decision support system (CDSS). This CDSS intakes relevant patient information such as demographic variables, clinical variables, medical history, and so on, and ranks treatment options personalised for patients, based on OR evidence. We present in this work-in-progress paper how our algorithm performs personalised ranking of therapies, taking Type-2 diabetes as a case study. As future work, we endeavour to codesign this further with clinicians to produce a primary care CDSS and assess long-term clinical outcomes.

Author Biographies

Nilmini Wickramasinghe, La Trobe University, School of Computing, Engineering and Mathematical Sciences

Professor Nilmini Wickramasinghe is the Optus Chair and Professor of Digital Health at La Trobe University. With over 20 years of international experience, her research focuses on digital health innovation, AI, and value-based care. She is a pioneer in applying digital twins in healthcare and received the Alexander von Humboldt Award for her contributions to the field.

Victoria, Australia. E-mail: wickramasinghe@latrobe.edu.au

Nalika Ulapane, La Trobe University, School of Computing, Engineering and Mathematical Sciences

Melbourne, Australia. E-mail: n.ulapane@latrobe.edu.au

Anamika Ranaut, La Trobe University, School of Computing, Engineering and Mathematical Sciences

Melbourne, Australia. E-mail: anamika.rannout03@gmail.com

Neale Cohen, Baker Heart and Diabetes Institute

Melbourne, Australia. E-mail: neale.cohen@baker.edu.au

Published

June 5, 2026

License

Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

How to Cite

Wickramasinghe, N., Ulapane, N., Ranaut, A., & Cohen, N. (2026). Efficient Explainable and Evidence Based Precision and Personalisation of Treatment. In D. Vidmar, A. Pucihar, M. Kljajić Borštnar, R. W. H. Bons, M. Glowatz, & H.-D. Zimmermann (Eds.), & (Ed.), 39th Bled eConference: Co-Creating Human-Centred and Responsible Digital Futures; Conference Proceedings (Vols. 39., pp. 697-704). University of Maribor Press. https://press.um.si/index.php/ump/catalog/book/1128/chapter/1211