Using Deep Learning with Large Aggregated Datasets for COVID-19 Classification from Cough
The Covid-19 pandemic has been one of the most devastating events in recent history, claiming the lives of more than 5 million people worldwide. Even with the worldwide distribution of vaccines, there is an apparent need for affordable, reliable, and accessible screening techniques to serve parts of...
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Zusammenfassung: | The Covid-19 pandemic has been one of the most devastating events in recent
history, claiming the lives of more than 5 million people worldwide. Even with
the worldwide distribution of vaccines, there is an apparent need for
affordable, reliable, and accessible screening techniques to serve parts of the
World that do not have access to Western medicine. Artificial Intelligence can
provide a solution utilizing cough sounds as a primary screening mode for
COVID-19 diagnosis. This paper presents multiple models that have achieved
relatively respectable performance on the largest evaluation dataset currently
presented in academic literature. Through investigation of a self-supervised
learning model (Area under the ROC curve, AUC = 0.807) and a convolutional
nerual network (CNN) model (AUC = 0.802), we observe the possibility of model
bias with limited datasets. Moreover, we observe that performance increases
with training data size, showing the need for the worldwide collection of data
to help combat the Covid-19 pandemic with non-traditional means. |
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DOI: | 10.48550/arxiv.2201.01669 |