SympCoughNet: symptom assisted audio-based COVID-19 detection
Yuhao Lin, Xiu Weng, Bolun Zheng, Weiwei Zhang, Zhanjun Bu, Yu Zhou

TL;DR
SympCoughNet improves COVID-19 detection by combining audio of coughs with clinical symptoms, achieving high accuracy and showing the value of integrating symptom data.
Contribution
SympCoughNet introduces a novel deep learning model that integrates cough audio with symptom data for improved COVID-19 detection.
Findings
SympCoughNet achieved 89.30% accuracy, 94.74% AUROC, and 91.62% PR on the test set.
Incorporating symptom data significantly enhances detection performance compared to audio-only methods.
Incorrect symptom inputs can influence predictions, highlighting the importance of accurate symptom data.
Abstract
COVID-19 remains a significant global public health challenge. While nucleic acid tests, antigen tests, and CT imaging provide high accuracy, they face inefficiencies and limited accessibility, making rapid and convenient testing difficult. Recent studies have explored COVID-19 detection using acoustic health signals, such as cough and breathing sounds. However, most existing approaches focus solely on audio classification, often leading to suboptimal accuracy while neglecting valuable prior information, such as clinical symptoms. To address this limitation, we propose SympCoughNet, a deep learning-based COVID-19 audio classification network that integrates cough sounds with clinical symptom data. Our model employs symptom-encoded channel weighting to enhance feature processing, making it more attentive to symptom information. We also conducted an ablation study to assess the impact of…
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Taxonomy
TopicsPhonocardiography and Auscultation Techniques · COVID-19 diagnosis using AI · Music and Audio Processing
