Abstract
Background: The success of many machine learning applications depends on knowledge about the relationship between the input data and the task of interest (output), hindering the application of machine learning to novel tasks. End-to-end deep learning, which does not require intermediate feature engineering, has been recommended to overcome this challenge but end-to-end deep learning models require large labelled training data sets often unavailable in many medical applications. In this study, we trained machine learning models to predict paediatric hospitalization given raw photoplethysmography (PPG) signals obtained from a pulse oximeter. We trained self-supervised learning (SSL) for automatic feature extraction from PPG signals and assessed the utility of SSL in initializing end-to-end deep learning models trained on a small labelled data set with the aim of predicting paediatric hospitalization.Methods: We compared logistic regression models fitted using features extracted using SSL with end-to-end deep learning models initialized either randomly or using weights from the SSL model. We also compared the performance of SSL models trained on labelled data alone (n=1,031) with SSL trained using both labelled and unlabelled signals (n=7,578). Results: The SSL model trained on both labelled and unlabelled PPG signals produced features that were more predictive of hospitalization compared to the SSL model trained on labelled PPG only (AUC of logistic regression model: 0.78 vs 0.74). The end-to-end deep learning model had an AUC of 0.80 when initialized using the SSL model trained on all PPG signals, 0.77 when initialized using SSL trained on labelled data only, and 0.73 when initialized randomly. Conclusions: This study shows that SSL can improve the classification of PPG signals by either extracting features required by logistic regression models or initializing end-to-end deep learning models. Furthermore, SSL can leverage larger unlabelled data sets to improve performance of models fitted using small labelled data sets.
Funder
Wellcome Trust
DELTAS Africa Initiative
Initiative to Develop African Research Leaders
Subject
General Biochemistry, Genetics and Molecular Biology,Medicine (miscellaneous)
Reference29 articles.
1. Self-supervised representation learning from electroencephalography signals.;H Banville;ArXiv: 1911.05419 [Cs, Eess, Stat].,2019
2. Uncovering the structure of clinical EEG signals with self-supervised learning.;H Banville;ArXiv: 2007.16104 [Cs, Eess, q-Bio, Stat].,2020
3. Respiratory Rate Estimation using PPG: A Deep Learning Approach.;D Bian;Annu Int Conf IEEE Eng Med Biol Soc.,2020
4. A Simple Framework for Contrastive Learning of Visual Representations.;T Chen;ArXiv: 2002.05709 [Cs, Stat].,2020
5. Wavelet transform feature extraction from human PPG, ECG, and EEG signal responses to ELF PEMF exposures: A pilot study.;D Cvetkovic;Digit Signal Process.,2008