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A Novel Deep Learning Model for COVID-19 Detection from Combined Heterogeneous X-ray and CT Chest Images

机译:基于异构X射线和CT胸部图像的Covid-19检测的新型深度学习模型

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COVID-19 originally started in Wuhan city in China. The disease rapidly became a worldwide pandemic, causing a respiratory illness with symptoms such as coughing, fever, and in more severe cases difficulty in breathing. With the current testing processes, it is very difficult and sometimes impossible to manage and provide the necessary treatment to suspected patients since the number of the infected is rapidly increasing. Hence, the availability of an artificial intelligent driven system can be an assistive tool to provide accurate diagnosis using radiology imaging techniques. In this paper, we put forward a new deep learning architecture, which integrates the Nested Residual Connections (NRCs) in a DarkCovidNet model, called DarkCovidNet-NRC, in order to classify chest images and to detect COVID-19 cases. The proposed architecture is validated with the K-fold cross-validation technique on X-ray and CT chest datasets separately and then combined. The experimental results reveal that the suggested model performs very well in the medical classification task and it competes with the state of the art in multiple performance metrics by respectively achieving an accuracy and precision of 0.9609 and 0.978 on the combined dataset.
机译:Covid-19最初始于中国武汉市。这种疾病迅速成为全球大流行,导致呼吸道疾病,如咳嗽,发热,更严重的呼吸困难。利用当前的测试过程,由于感染的数量迅速增加,因此非常困难,有时无法管理和向疑似患者提供必要的治疗。因此,人工智能驱动系统的可用性可以是辅助工具,用于使用放射学成像技术提供准确的诊断。在本文中,我们提出了一种新的深度学习架构,该架构将嵌套的残余连接(NRC)集成在DarkCovidNet-NRC中,以便分类胸部图像并检测Covid-19案例。所提出的架构用X折叠交叉验证技术进行验证,并单独使用X射线和CT胸部数据集。实验结果表明,建议的模型在医疗分类任务中表现得非常良好,并且通过分别在组合数据集上分别在多种性能指标中与多种性能指标中的最新竞争。

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