Automatic sleep scoring with LSTM networks: impact of time granularity and input signals

AM Tăuțan, AC Rossi, B Ionescu - Biomedical Engineering …, 2022 - degruyter.com
Biomedical Engineering/Biomedizinische Technik, 2022degruyter.com
Supervised automatic sleep scoring algorithms are usually trained using sleep stage labels
manually annotated on 30 s epochs of PSG data. In this study, we investigate the impact of
using shorter epochs with various PSG input signals for training and testing a Long Short
Term Memory (LSTM) neural network. An LSTM model is evaluated on the provided 30 s
epoch sleep stage labels from a publicly available dataset, as well as on 10 s subdivisions.
Additionally, three independent scorers re-labeled a subset of the dataset on shorter time …
Abstract
Supervised automatic sleep scoring algorithms are usually trained using sleep stage labels manually annotated on 30 s epochs of PSG data. In this study, we investigate the impact of using shorter epochs with various PSG input signals for training and testing a Long Short Term Memory (LSTM) neural network. An LSTM model is evaluated on the provided 30 s epoch sleep stage labels from a publicly available dataset, as well as on 10 s subdivisions. Additionally, three independent scorers re-labeled a subset of the dataset on shorter time windows. The automatic sleep scoring experiments were repeated on the re-annotated subset.The highest performance is achieved on features extracted from 30 s epochs of a single channel frontal EEG. The resulting accuracy, precision and recall were of 92.22%, 67.58% and 66.00% respectively. When using a shorter epoch as input, the performance decreased by approximately 20%. Re-annotating a subset of the dataset on shorter time epochs did not improve the results and further altered the sleep stage detection performance. Our results show that our feature-based LSTM classification algorithm performs better on 30 s PSG epochs when compared to 10 s epochs used as input. Future work could be oriented to determining whether varying the epoch size improves classification outcomes for different types of classification algorithms.
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