Dolphin
Senior Member (Voting Rights)
M. -I. Khan and F. Ahmed, "From Symptoms to Systems: Interpretable AI for Myalgic Encephalomyelitis and Depression Diagnosis," 2026 IEEE 2nd International Conference on Quantum Photonics, Artificial Intelligence & Networking (QPAIN), Chittagong, Bangladesh, 2026, pp. 1-6, doi: 10.1109/QPAIN69676.2026.11545830.
keywords: {Modeling;Machine learning;Depression;Accuracy;Fatigue;Machining;Printing;Random forests;Explainable AI;Training;Myalgic Encephalomyelitis;Chronic Fatigue Syndrome;Depression;Stress;Fatigue;Random Forest},
Abstract:
Diagnosis of mental health conditions such as ME/CFS and Depression is complicated due to their similarity in symptoms, while AI technologies have shown remarkable success in the diagnosis of both mental health conditions.Machine learning techniques have shown notable potential in diagnosing mental health conditions.
However, an effective system with the capability of differentiating ME/CFS from Depression is still not developed, specifically focusing on larger datasets and explainable AI (XAI) approaches.
This research aims to address this limitation by proposing an ML framework to enhance classification performance between ME/CFS and depression and incorporating XAI methods, including SHAP and LIME.
This will ensure interpretability and transparency of the model decisions.
The expected outcome is an improved diagnostic model achieving higher accuracy and reliability while providing trustworthy and interpretable insights into the distinguishing features of ME/CFS and depression.
Published in: 2026 IEEE 2nd International Conference on Quantum Photonics, Artificial Intelligence & Networking (QPAIN)
