Automatic Sleep Stages Classification Combining Semantic Representation and Dynamic Expert System
Author(s) -
Adrien Ugon,
Carole Philippe,
A. Kotti,
MarieAmélie Dalloz,
Andréa Pinna
Publication year - 2019
Publication title -
studies in health technology and informatics
Language(s) - English
Resource type - Journals
eISSN - 1879-8365
pISSN - 0926-9630
DOI - 10.3233/shti190343
Subject(s) - computer science , abstraction , sleep (system call) , knowledge base , semantic memory , point (geometry) , representation (politics) , aggregate (composite) , expert system , artificial intelligence , natural language processing , sleep stages , machine learning , information retrieval , cognition , electroencephalography , programming language , medicine , philosophy , materials science , geometry , mathematics , epistemology , psychiatry , politics , political science , polysomnography , law , composite material
Interest in sleep has been growing in the last decades, considering its benefits for well-being, but also to diagnose sleep troubles. The gold standard to monitor sleep consists of recording the course of many physiological parameters during a whole night. The human interpretation of resulting curves is time consuming. We propose an automatic knowledge-based decision system to support sleep staging. This system handles temporal data, such as events, to combine and aggregate atomic data, so as to obtain high-abstraction-levels contextual decisions. The proposed system relies on a semantic reprentation of observations, and on contextual knowledge base obtained by formalizing clinical practice guidelines. Evaluated on a dataset composed of 131 full night polysomnographies, results are encouraging, but point out that further knowledge need to be integrated.
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