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Generalizable Sleep Staging via Multi-Level Domain Alignment

About

Automatic sleep staging is essential for sleep assessment and disorder diagnosis. Most existing methods depend on one specific dataset and are limited to be generalized to other unseen datasets, for which the training data and testing data are from the same dataset. In this paper, we introduce domain generalization into automatic sleep staging and propose the task of generalizable sleep staging which aims to improve the model generalization ability to unseen datasets. Inspired by existing domain generalization methods, we adopt the feature alignment idea and propose a framework called SleepDG to solve it. Considering both of local salient features and sequential features are important for sleep staging, we propose a Multi-level Feature Alignment combining epoch-level and sequence-level feature alignment to learn domain-invariant feature representations. Specifically, we design an Epoch-level Feature Alignment to align the feature distribution of each single sleep epoch among different domains, and a Sequence-level Feature Alignment to minimize the discrepancy of sequential features among different domains. SleepDG is validated on five public datasets, achieving the state-of-the-art performance.

Jiquan Wang, Sha Zhao, Haiteng Jiang, Shijian Li, Tao Li, Gang Pan• 2023

Related benchmarks

TaskDatasetResultRank
Sleep StagingSleep-EDFx (Target Domain I)
Accuracy76.14
56
Sleep StagingHMC Target Domain II
Accuracy73.25
20
Sleep StagingSHHS Target Domain IV
Accuracy75.77
20
Sleep StagingP Target Domain V 2018
Accuracy73.88
20
Sleep StagingISRUC (Target Domain III)
Accuracy77.38
20
Sleep StagingZUAMHCS external (test)
Accuracy79.8
15
Sleep StagingMASS-SS1 (test)
Accuracy0.812
15
Sleep Stage ClassificationCFS
Macro F174.86
10
Sleep Stage ClassificationABC
Macro F169.45
10
Sleep StagingSHHS1 Target Domain (test)
Accuracy77.88
8
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