论文标题

使用胸部X射线图像融合的深卷积神经网络,用于精确诊断Covid-19

Fused Deep Convolutional Neural Network for Precision Diagnosis of COVID-19 Using Chest X-Ray Images

论文作者

Ragb, Hussin K., Dover, Ian T., Ali, Redha

论文摘要

由于冠状病毒病(Covid-19)的病例计数超过全球1000万例,因此对诊断能力的需求增加。提高诊断能力的主要变量是成本降低,周转时间或诊断时间以及前期设备成本和可访问性。两名用于机器学习的候选者Covid-19诊断是计算机断层扫描(CT)扫描和普通的胸部X射线。尽管CT扫描的灵敏度得分更高,但与普通的胸部X射线相比,它们的成本,维护要求和周转时间更高。美国放射学院(ACR)推荐使用便携式胸部X射线照相仪(CXR),因为使用CT会给放射线服务带来巨大负担。因此,提出了与机器学习技术配对的X射线图像,这是一种用于COVID-19诊断的一线分类工具。在本文中,我们提出了一个计算机辅助诊断(CAD),以通过对Imagenet Dataset预先训练的几个神经网络(RESNET18,RESNET50,DENSENET201)进行微调(RESNET18,RESNET50,DENSENET201)来准确地对COVID-19和正常受试者进行分类。这些神经网络融合在平行体系结构中,投票标准在候选对象类之间的最终分类决策中应用,其中每个神经网络的输出代表单个投票。在弱标记的COVID-19-CT-CXR数据集上进行了几个实验,该数据集由263 COVID-19 CXR图像组成,该图像从PubMed Central开放式访问子集提取,并与25个正常分类CXR CRIAMATIC相结合。这些实验表明了所提出的模型在多种措施上胜过许多最新算法的乐观结果和能力。使用K折的交叉验证和包装分类器集合,我们的精度为99.7%,灵敏度为100%。

With a Coronavirus disease (COVID-19) case count exceeding 10 million worldwide, there is an increased need for a diagnostic capability. The main variables in increasing diagnostic capability are reduced cost, turnaround or diagnosis time, and upfront equipment cost and accessibility. Two candidates for machine learning COVID-19 diagnosis are Computed Tomography (CT) scans and plain chest X-rays. While CT scans score higher in sensitivity, they have a higher cost, maintenance requirement, and turnaround time as compared to plain chest X-rays. The use of portable chest X-radiograph (CXR) is recommended by the American College of Radiology (ACR) since using CT places a massive burden on radiology services. Therefore, X-ray imagery paired with machine learning techniques is proposed a first-line triage tool for COVID-19 diagnostics. In this paper we propose a computer-aided diagnosis (CAD) to accurately classify chest X-ray scans of COVID-19 and normal subjects by fine-tuning several neural networks (ResNet18, ResNet50, DenseNet201) pre-trained on the ImageNet dataset. These neural networks are fused in a parallel architecture and the voting criteria are applied in the final classification decision between the candidate object classes where the output of each neural network is representing a single vote. Several experiments are conducted on the weakly labeled COVID-19-CT-CXR dataset consisting of 263 COVID-19 CXR images extracted from PubMed Central Open Access subsets combined with 25 normal classification CXR images. These experiments show an optimistic result and a capability of the proposed model to outperforming many state-of-the-art algorithms on several measures. Using k-fold cross-validation and a bagging classifier ensemble, we achieve an accuracy of 99.7% and a sensitivity of 100%.

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