Novel Coronavirus Cough Database: NoCoCoDa

IEEE Access. 2020 Aug 19:8:154087-154094. doi: 10.1109/ACCESS.2020.3018028. eCollection 2020.

Abstract

The current pandemic associated with the novel coronavirus (COVID-19) presents a new area of research with its own set of challenges. Creating unobtrusive remote monitoring tools for medical professionals that may aid in diagnosis, monitoring and contact tracing could lead to more efficient and accurate treatments, especially in this time of physical distancing. Audio based sensing methods can address this by measuring the frequency, severity and characteristics of the COVID-19 cough. However, the feasibility of accumulating coughs directly from patients is low in the short term. This article introduces a novel database (NoCoCoDa), which contains COVID-19 cough events obtained through public media interviews with COVID-19 patients, as an interim solution. After manual segmentation of the interviews, a total of 73 individual cough events were extracted and cough phase annotation was performed. Furthermore, the COVID-19 cough is typically dry but can present as a more productive cough in severe cases. Therefore, an investigation of cough sub-type (productive vs. dry) of the NoCoCoDa was performed using methods previously published by our research group. Most of the NoCoCoDa cough events were recorded either during or after a severe period of the disease, which is supported by the fact that 77% of the COVID-19 coughs were classified as productive based on our previous work. The NoCoCoDa is designed to be used for rapid exploration and algorithm development, which can then be applied to more extensive datasets and potentially real time applications. The NoCoCoDa is available for free to the research community upon request.

Keywords: Acoustic signal processing; audio databases; audio systems; biomedical measurement; biomedical monitoring; data analysis; data collection; medical conditions; medical diagnosis; patient monitoring; smart homes.

Grants and funding

This work was supported in part by the AGE-WELL NCE Inc., Networks of Centers of Excellence Program, Government of Canada Program, and in part by the Natural Sciences and Engineering Research Council of Canada (NSERC).