SleepGCN: A transition rule learning model based on Graph Convolutional Network for sleep staging.
Journal:
Computer methods and programs in biomedicine
PMID:
39243591
Abstract
BACKGROUND AND OBJECTIVE: Automatic sleep staging is essential for assessing and diagnosing sleep disorders, serving millions of people who suffer from them. Numerous sleep staging models have been proposed recently, but most of them have not fully explored the sleep transition rules that are essential for sleep experts to identify sleep stages. Therefore, one objective of this paper is to develop an automatic sleep staging model to capture the transition rules between sleep stages.