新型冠状病毒检测的轻量级深度学习模型

Siti Raihanah Abdani, M. A. Zulkifley, Nuraisyah Hani Zulkifley
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引用次数: 26

摘要

2019冠状病毒病是一种传染病,截至2020年4月底,已在全球造成23万多人死亡。在短短几个月内,由于其高传播率,全球已有400多万人感染。因此,许多政府都尽最大努力提高医院的诊断能力,以便尽早发现这种疾病。然而,在大多数情况下,结果要过一两天才能出来,这直接增加了疾病传播的可能性,因为诊断延迟。因此,使用现有工具(如x射线和计算机断层扫描)的快速筛查方法可以帮助减轻大规模诊断测试的负担。胸部x光检查是诊断肺炎症状的最佳方式之一,肺炎是新冠肺炎的主要症状。因此,本文提出了一种轻量级的深度学习模型来准确筛选COVID-19的可能性。轻量级模型很重要,因为它允许模型部署在各种平台上,包括移动电话、平板电脑和普通计算机,而不必担心内存存储容量。该模型基于14层卷积神经网络和改进的空间金字塔池化模块。该网络的多尺度能力使其能够识别不同严重程度的COVID-19疾病。性能结果表明,SPP-COVID-Net的平均准确率为0.946,在训练折叠准确率中标准差最低。它总共只有862331个参数,使用不到4兆字节的内存存储。该模型适用于快速筛选目的,以便更好地进行有针对性的诊断,以优化测试时间和成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Lightweight Deep Learning Model for COVID-19 Detection
COVID-19 is a contagious disease that has caused more than 230,000 deaths worldwide at the end of April 2020. Within a span of just a few months, it has infected more than 4 million peoples across the globe due to its high transmittance rate. Thus, many governments have tried their best to increase the diagnostic capability of their hospitals so that the disease can be identified as early as possible. However, in most cases, the results only come back after a day or two, which directly increases the possibility of disease spreadness because of the delayed diagnosis. Therefore, a fast screening method using existing tools such as x-ray and computerized tomography scans can help alleviate the burden of mass diagnosis tests. A chest x-ray is one of the best modalities in diagnosing a pneumonia symptom, which is the primary symptom for COVID-19. Hence, this paper proposes a lightweight deep learning model to screen the possibility of COVID-19 accurately. A lightweight model is important, as such it allows the model to be deployed on various platforms that include mobile phones, tablets, and normal computers without worrying about the memory storage capacity. The proposed model is based on 14 layers of convolutional neural network with a modified spatial pyramid pooling module. The multiscale ability of the proposed network allows it to identify the COVID-19 disease for various severity levels. According to the performance results, the proposed SPP-COVID-Net achieves the best mean accuracy of 0.946 with the lowest standard deviation among the training folds accuracy. It comprises of just 862,331 total number of parameters, which uses less than 4 MegaBytes memory storage. The model is suitable to be implemented for fast screening purposes so that better-targeted diagnoses can be performed to optimize the test time and cost.
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