论文标题
CT-CAPS:使用胶囊网络从胸部CT扫描中鉴定的COVID-19疾病鉴定的基于提取的自动框架
CT-CAPS: Feature Extraction-based Automated Framework for COVID-19 Disease Identification from Chest CT Scans using Capsule Networks
论文作者
论文摘要
新型电晕病毒(Covid-19)疾病的全球爆发对世界产生了巨大影响,并导致了自第二次世界大战以来全球最具挑战性的危机之一。共同199阳性病例的早期诊断和隔离被认为是防止疾病传播并扁平流行曲线的关键步骤。胸部计算机断层扫描(CT)扫描是一种高度敏感,快速,准确的诊断技术,可以补充逆转录聚合酶链反应(RT-PCR)测试。最近,基于深度学习的模型主要基于卷积神经网络(CNN),已显示出令人鼓舞的诊断结果。但是,CNN无法捕获图像实例之间的空间关系并需要大型数据集。另一方面,胶囊网络可以捕获空间关系,需要较小的数据集,并且参数较少。在本文中,提出了一个胶囊网络框架,称为“ CT-CAP”,以自动提取胸部CT扫描的独特特征。然后将这些特征从最终胶囊层之前从层中提取,然后将其利用为将共价-19与非杂化情况区分开。我们内部数据集的307名患者的实验显示了最先进的表现,精度为90.8%,灵敏度为94.5%,特异性为86.0%。
The global outbreak of the novel corona virus (COVID-19) disease has drastically impacted the world and led to one of the most challenging crisis across the globe since World War II. The early diagnosis and isolation of COVID-19 positive cases are considered as crucial steps towards preventing the spread of the disease and flattening the epidemic curve. Chest Computed Tomography (CT) scan is a highly sensitive, rapid, and accurate diagnostic technique that can complement Reverse Transcription Polymerase Chain Reaction (RT-PCR) test. Recently, deep learning-based models, mostly based on Convolutional Neural Networks (CNN), have shown promising diagnostic results. CNNs, however, are incapable of capturing spatial relations between image instances and require large datasets. Capsule Networks, on the other hand, can capture spatial relations, require smaller datasets, and have considerably fewer parameters. In this paper, a Capsule network framework, referred to as the "CT-CAPS", is presented to automatically extract distinctive features of chest CT scans. These features, which are extracted from the layer before the final capsule layer, are then leveraged to differentiate COVID-19 from Non-COVID cases. The experiments on our in-house dataset of 307 patients show the state-of-the-art performance with the accuracy of 90.8%, sensitivity of 94.5%, and specificity of 86.0%.