Abstract

Digital stethoscopes in combination with telehealth allow chest sounds to be easily collected and transmitted for remote monitoring and diagnosis. Chest sounds contain important information about a newborn's cardio-respiratory health. However, low-quality recordings complicate the remote monitoring and diagnosis. In this study, a new method is proposed to objectively and automatically assess heart and lung signal quality on a 5-level scale in real-time and to assess the effect of signal quality on vital sign estimation. For the evaluation, a total of 207 10s long chest sounds were taken from 119 preterm and full-term babies. Thirty of the recordings from ten subjects were obtained with synchronous vital signs from the Neonatal Intensive Care Unit (NICU) based on electrocardiogram recordings. As reference, seven annotators independently assessed the signal quality. For automatic quality classification, 400 features were extracted from the chest sounds. After feature selection using minimum redundancy and maximum relevancy algorithm, class balancing, and hyper-parameter optimization, a variety of multi-class and ordinal classification and regression algorithms were trained. Then, heart rate and breathing rate were automatically estimated from the chest sounds using adapted pre-existing methods. The results of subject-wise leave-one-out cross-validation show that the best-performing models had a mean squared error (MSE) of 0.49 and 0.61, and balanced accuracy of 57% and 51% for heart and lung qualities, respectively. The best-performing models for real-time analysis (<200ms) had MSE of 0.459 and 0.67, and balanced accuracy of 57% and 46%, respectively. Our experimental results underscore that increasing the signal quality leads to a reduction in vital sign error, with only high-quality recordings having a mean absolute error of less than 5 beats per minute, as required for clinical usage.

Highlights

  • T HE neonatal period is the most vulnerable time for survival, with 1.7% of live births resulting in mortality, totalling 2.4 million worldwide, in 2019 alone [1]

  • Heart and lung quality classifier performance achieved an accuracy of 54.7% and 54.4% and mean squared error of 0.487 and 0.612, respectively

  • Digital stethoscopes can increase the availability of quality healthcare for the early diagnosis and prognosis of newborns

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Summary

Introduction

T HE neonatal period is the most vulnerable time for survival, with 1.7% of live births resulting in mortality, totalling 2.4 million worldwide, in 2019 alone [1] To address this major issue, the United Nations created the 3.2.2 Sustainable Development Goal, with the aim of reducing neonatal mortality to 1.2% of live births by 2030 [2]. Stethoscope-record chest sounds contain important cardiac and respiratory information that inform neonatal health status. This information can enable timely assessment for signs of serious health risks to potentially improve neonatal survival and reduce long-term morbidity risk [3]–[5]. Whilst having lowquality chest sounds is unavoidable, identification and exclusion of low-quality recordings help to improve remote monitoring.

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