AI Generalisation Gap In Comorbid Sleep Disorder Staging

📅 2026-03-24
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Influential: 0
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📝 Abstract
Accurate sleep staging is essential for diagnosing OSA and hypopnea in stroke patients. Although PSG is reliable, it is costly, labor-intensive, and manually scored. While deep learning enables automated EEG-based sleep staging in healthy subjects, our analysis shows poor generalization to clinical populations with disrupted sleep. Using Grad-CAM interpretations, we systematically demonstrate this limitation. We introduce iSLEEPS, a newly clinically annotated ischemic stroke dataset (to be publicly released), and evaluate a SE-ResNet plus bidirectional LSTM model for single-channel EEG sleep staging. As expected, cross-domain performance between healthy and diseased subjects is poor. Attention visualizations, supported by clinical expert feedback, show the model focuses on physiologically uninformative EEG regions in patient data. Statistical and computational analyses further confirm significant sleep architecture differences between healthy and ischemic stroke cohorts, highlighting the need for subject-aware or disease-specific models with clinical validation before deployment. A summary of the paper and the code is available at https://himalayansaswatabose.github.io/iSLEEPS_Explainability.github.io/
Problem

Research questions and friction points this paper is trying to address.

sleep staging
generalisation gap
comorbid sleep disorders
ischemic stroke
EEG
Innovation

Methods, ideas, or system contributions that make the work stand out.

sleep staging
generalization gap
clinical EEG
explainable AI
stroke patients
S
Saswata Bose
International Institute of Information Technology (IIIT-H), Hyderabad, India
S
Suvadeep Maiti
Queen Square Institute of Neurology, University College London, United Kingdom
S
Shivam Kumar Sharma
International Institute of Information Technology (IIIT-H), Hyderabad, India
M
Mythirayee S
National Institute of Mental Health and Neuroscience (NIMHANS), Bangalore, India
T
Tapabrata Chakraborti
Alan Turing Institute, London and University College London, United Kingdom
S
Srijitesh Rajendran
National Institute of Mental Health and Neuroscience (NIMHANS), Bangalore, India
Raju S. Bapi
Raju S. Bapi
Professor, Cognitive Science Lab, IIIT Hyderabad; (Formerly) Professor, SCIS, UoH
Biological and Artificial Neural NetworksCognitive ScienceCognitive ModelingNeuroimagingMachine Learning