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Mini-COVIDNet:基于超声的 COVID-19 即时检测用高效轻量级深度神经网络

Mini-COVIDNet: Efficient Lightweight Deep Neural Network for Ultrasound Based Point-of-Care Detection of COVID-19.

出版信息

IEEE Trans Ultrason Ferroelectr Freq Control. 2021 Jun;68(6):2023-2037. doi: 10.1109/TUFFC.2021.3068190. Epub 2021 May 25.

Abstract

Lung ultrasound (US) imaging has the potential to be an effective point-of-care test for detection of COVID-19, due to its ease of operation with minimal personal protection equipment along with easy disinfection. The current state-of-the-art deep learning models for detection of COVID-19 are heavy models that may not be easy to deploy in commonly utilized mobile platforms in point-of-care testing. In this work, we develop a lightweight mobile friendly efficient deep learning model for detection of COVID-19 using lung US images. Three different classes including COVID-19, pneumonia, and healthy were included in this task. The developed network, named as Mini-COVIDNet, was bench-marked with other lightweight neural network models along with state-of-the-art heavy model. It was shown that the proposed network can achieve the highest accuracy of 83.2% and requires a training time of only 24 min. The proposed Mini-COVIDNet has 4.39 times less number of parameters in the network compared to its next best performing network and requires a memory of only 51.29 MB, making the point-of-care detection of COVID-19 using lung US imaging plausible on a mobile platform. Deployment of these lightweight networks on embedded platforms shows that the proposed Mini-COVIDNet is highly versatile and provides optimal performance in terms of being accurate as well as having latency in the same order as other lightweight networks. The developed lightweight models are available at https://github.com/navchetan-awasthi/Mini-COVIDNet.

摘要

肺部超声(US)成像具有成为 COVID-19 检测的有效即时护理测试的潜力,因为它易于操作,所需的个人防护设备最少,且易于消毒。目前用于 COVID-19 检测的最先进的深度学习模型是重型模型,可能不容易在即时护理测试中常用的移动平台上部署。在这项工作中,我们使用肺部 US 图像开发了一种用于 COVID-19 检测的轻量级移动友好高效的深度学习模型。该任务包括 COVID-19、肺炎和健康三个不同类别。所开发的网络名为 Mini-COVIDNet,与其他轻量级神经网络模型以及最先进的重型模型一起进行了基准测试。结果表明,所提出的网络可以实现 83.2%的最高准确率,且仅需 24 分钟的训练时间。与表现最好的网络相比,所提出的 Mini-COVIDNet 具有 4.39 倍更少的网络参数,且仅需要 51.29MB 的内存,这使得在移动平台上使用肺部 US 成像进行 COVID-19 的即时护理检测成为可能。在嵌入式平台上部署这些轻量级网络表明,所提出的 Mini-COVIDNet 非常通用,并且在准确性和延迟方面具有与其他轻量级网络相同的最佳性能。开发的轻量级模型可在 https://github.com/navchetan-awasthi/Mini-COVIDNet 上获取。

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