Abstract

Cough, a symptom associated with many prevalent respiratory diseases, can serve as a potential biomarker for diagnosis and disease progression. Consequently, the development of cough monitoring systems and, in particular, automatic cough detection algorithms have been studied since the early 2000s. Recently, there has been an increased focus on the efficiency of such algorithms, as implementation on consumer-centric devices such as smartphones would provide a scalable and affordable solution for monitoring cough with contact-free sensors. Current algorithms, however, are incapable of discerning between coughs of different individuals and, thus, cannot function reliably in situations where potentially multiple individuals have to be monitored in shared environments. Therefore, we propose a weakly supervised metric learning approach for cougher recognition based on smartphone audio recordings of coughs. Our approach involves a triplet network architecture, which employs convolutional neural networks (CNNs). The CNNs of the triplet network learn an embedding function, which maps Mel spectrograms of cough recordings to an embedding space where they are more easily distinguishable. Using audio recordings of nocturnal coughs from asthmatic patients captured with a smartphone, our approach achieved a mean accuracyof 88 % ( ± 10 % SD) on two-way identification tests with 12 enrollment samples and accuracy of 80 % and an equal error rate (EER) of 20 % on verification tests. Furthermore, our approach outperformed human raters with regard to verification tests on average by 8% in accuracy, 4% in false acceptance rate (FAR), and 12% in false rejection rate (FRR). Our code and models are publicly available.

Highlights

  • C OUGHING is associated with many prevalent respiratory diseases, ranging from minor ailments like the common cold to more serious chronic illnesses such as chronic bronchitis, chronic obstructive pulmonary disease (COPD), asthma, tuberculosis, gastroesophageal reflux, and cystic fibrosis [1]

  • Cough monitoring systems, which count the number of coughs from audio recordings by employing an automatic cough detection algorithm, have been proposed

  • The results suggest that our model generalizes well with respect to cough data from yet unseen devices, with the lowest mean accuracy of 80.48% achieved on the data of the Nexus 7 tablet and the highest mean accuracy of 90.54% achieved on the data of the Samsung S6

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Summary

Introduction

C OUGHING is associated with many prevalent respiratory diseases, ranging from minor ailments like the common cold to more serious chronic illnesses such as chronic bronchitis, chronic obstructive pulmonary disease (COPD), asthma, tuberculosis, gastroesophageal reflux, and cystic fibrosis [1]. Cough monitoring systems, which count the number of coughs from audio recordings by employing an automatic cough detection algorithm, have been proposed. Such algorithms enable distinguishing coughs from other sounds such as speech or background noise, thereby serving as a preliminary step in a cough monitoring system to ensure that coughs can be counted reliably. They allow for an objective measure of cough frequency and are generally preferred over traditional methods involving patient self-reports. More recent approaches have employed mobile technologies such as smartphones and wearables for

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