胸部CT自动分类新冠肺炎、肺癌与正常肺组织

Yasser Saad, Ali Mustapha, Ali Cherry
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引用次数: 3

摘要

冠状病毒病(COVID-19)可能是一种大流行疾病,已经造成数千人伤亡,并在全球范围内感染了无数人。虽然大多数感染COVID-19的人患有轻微至中度呼吸道疾病,但一些人患上了致命的呼吸道疾病。任何能够对COVID-19感染进行高精度筛查的技术工具都将对关注专业人员至关重要。使用胸部CT扫描图像对COVID-19呼吸道疾病进行分类和诊断,显示出了出色的准确性和准确性,而另一种工具可以减少重症病例中的死亡人数。本文提出了一种具有大型多国数据集的卷积神经网络(CNN)模型,该模型能够对covid-19肺炎进行分类;胸部CT扫描对肺癌和正常肺组织的分类准确率为94.05%。
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Automatic classification between COVID-19 pneumonia, lung cancer and normal lung tissues on chest CT Scans
Coronavirus sickness (COVID-19) may be a pandemic sickness, that has already caused thousands of casualties and infected many countless individuals worldwide. Whereas most of the individuals infected with the COVID-19 intimate with delicate to moderate respiratory disease, some developed deadly respiratory illness. Any technological tool sanctioning screening of the COVID-19 infection with high accuracy will be crucially useful to the attention professionals. The usage of chest CT scan pictures for classifying and diagnosing COVID-19 respiratory illness has shown an excellent range of exactness and accuracy quite the other tool that lessens the number of deaths within the severe cases. This paper presents a proposed model of convolutional neural network (CNN) with a large multi-national dataset that is able to classify covid-19 pneumonia; lung cancer and the normal lung tissues from chest computed tomography (CT) scans with a classification accuracy of 94.05%.
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