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使用增强型多层集成深度学习框架和 CoughFeatureRanker 进行 COVID-19 咳嗽检测。

Cough2COVID-19 detection using an enhanced multi layer ensemble deep learning framework and CoughFeatureRanker.

机构信息

Institute of Biopharmaceutical and Health Engineering, Tsinghua Shenzhen International Graduate School, Tsinghua University, Shenzhen, 518055, China.

Department of Computer Science and Engineering, Shanghai Jiao Tong University, Shanghai, China.

出版信息

Sci Rep. 2024 Oct 24;14(1):25207. doi: 10.1038/s41598-024-76639-9.

Abstract

In response to the pressing requirement for precise and easily accessible COVID-19 detection methods, we present the Cough2COVID-19 framework, which is cost-effective, non-intrusive, and widely accessible. The conventional diagnostic methods, notably the PCR test, are encumbered by limitations such as cost and invasiveness. Consequently, the exploration of alternative solutions has gained momentum. Our innovative approach employs a multi-layer ensemble deep learning (MLEDL) framework that capitalizes on cough audio signals to achieve heightened efficiency in COVID-19 detection. This study introduces the Cough2COVID-19 framework, effectively addressing these challenges through AI-driven analysis. Additionally, this study proposed the CoughFeatureRanker algorithm, which delves into the robustness of pivotal features embedded within cough audios. The CoughFeatureRanker algorithm selects the most prominent features based on their optimal discriminatory performance from 15 features to detect COVID-19. The effectiveness of the CoughFeatureRanker algorithm within the ensemble framework is scrutinized, confirming its favorable influence on the accuracy of COVID-19 detection. The Cough2COVID-19 (MLEDL) framework achieves remarkable outcomes in COVID-19 detection through cough audio signals, boasting a specificity of 98%, sensitivity of 97%, accuracy of 98%, and an AUC score of 0.981. Our framework asserts its supremacy in precise non-invasive screening through an exhaustive comparison with cutting-edge methodologies. This groundbreaking innovation holds the potential to enhance urban resilience by transforming disease diagnosis, offering a significant approach to curtailing transmission risks and facilitating timely interventions in the ongoing battle against the pandemic.

摘要

为满足对精确、易于获取的 COVID-19 检测方法的迫切需求,我们提出了 Cough2COVID-19 框架,该框架具有成本效益、非侵入性和广泛适用性。传统的诊断方法,特别是 PCR 检测,存在成本高和侵入性等局限性。因此,替代解决方案的探索得到了加强。我们的创新方法采用了多层集成深度学习(MLEDL)框架,利用咳嗽音频信号提高 COVID-19 检测的效率。本研究介绍了 Cough2COVID-19 框架,通过人工智能驱动的分析有效地解决了这些挑战。此外,本研究还提出了 CoughFeatureRanker 算法,深入研究了咳嗽音频中嵌入的关键特征的稳健性。CoughFeatureRanker 算法根据 15 个特征中最佳的区分性能选择最突出的特征来检测 COVID-19。在集成框架中对 CoughFeatureRanker 算法的有效性进行了研究,证实了它对 COVID-19 检测准确性的有利影响。Cough2COVID-19(MLEDL)框架通过咳嗽音频信号在 COVID-19 检测中取得了显著的成果,特异性为 98%,敏感性为 97%,准确性为 98%,AUC 得分为 0.981。通过与最先进的方法进行详尽比较,我们的框架在精确的非侵入性筛查方面表现出了优越性。这项开创性的创新有可能通过改变疾病诊断来增强城市的弹性,为减少传播风险和及时干预当前的大流行提供一种重要方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c378/11502923/0938d1df2bb2/41598_2024_76639_Fig1_HTML.jpg

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