Characterising the motion and cardiorespiratory interaction of preterm infants can improve the classification of their sleep state

Author:

Zhang Dandan1ORCID,Peng Zheng123ORCID,Sun Shaoxiong4,van Pul Carola123,Shan Caifeng56,Dudink Jeroen7ORCID,Andriessen Peter28ORCID,Aarts Ronald M.1ORCID,Long Xi1ORCID

Affiliation:

1. Department of Electrical Engineering Eindhoven University of Technology Eindhoven The Netherlands

2. Department of Applied Physics and Science Education Eindhoven University of Technology Eindhoven The Netherlands

3. Department of Clinical Physics Máxima Medical Center Veldhoven The Netherlands

4. Department of Computer Science The University of Sheffield Sheffield United Kingdom

5. College of Electrical Engineering and Automation Shandong University of Science and Technology Qingdao China

6. School of Intelligence Science and Technology Nanjing University Nanjing China

7. Department of Neonatology Wilhelmina Children's Hospital, University Medical Center Utrecht Utrecht The Netherlands

8. Department of Neonatology Máxima Medical Center Veldhoven The Netherlands

Abstract

AbstractAimThis study aimed to classify quiet sleep, active sleep and wake states in preterm infants by analysing cardiorespiratory signals obtained from routine patient monitors.MethodsWe studied eight preterm infants, with an average postmenstrual age of 32.3 ± 2.4 weeks, in a neonatal intensive care unit in the Netherlands. Electrocardiography and chest impedance respiratory signals were recorded. After filtering and R‐peak detection, cardiorespiratory features and motion and cardiorespiratory interaction features were extracted, based on previous research. An extremely randomised trees algorithm was used for classification and performance was evaluated using leave‐one‐patient‐out cross‐validation and Cohen's kappa coefficient.ResultsA sleep expert annotated 4731 30‐second epochs (39.4 h) and active sleep, quiet sleep and wake accounted for 73.3%, 12.6% and 14.1% respectively. Using all features, and the extremely randomised trees algorithm, the binary discrimination between active and quiet sleep was better than between other states. Incorporating motion and cardiorespiratory interaction features improved the classification of all sleep states (kappa 0.38 ± 0.09) than analyses without these features (kappa 0.31 ± 0.11).ConclusionCardiorespiratory interactions contributed to detecting quiet sleep and motion features contributed to detecting wake states. This combination improved the automated classifications of sleep states.

Funder

China Scholarship Council

Publisher

Wiley

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