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A Basic Concept of Image Classification for Covid-19 Patients Using Chest CT Scan and Convolutional Neural Network

机译:COVID-19使用胸部CT扫描和卷积神经网络的Covid-19患者图像分类的基本概念

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On March 12, 2020 WHO announced the status of a global pandemic related to the increasing Covid-19 cases. The outbreak has hit around 188 Countries. Healthcare professionals have repeatedly performed laboratory tests to get the right results to patients, such as, check the chest CT images of the patient's lungs. This is an essential role in clinical treatment and teaching task. In this paper, we tried to classify chest CT image of Covid-19 patient. CNN produce spatial characteristic from images so it very expeditious way for image classification problem. Three techniques are evaluated through experiments. The results of the experiments show the test set has 1119 Covid-19 chest CT images and 446 normal chest CT images. The experiment results represent that our offer model delivered the highest accuracy score of 97.57% among the other models, Inception ResNet-V2 and Inception-V3.
机译:2020年3月12日,谁宣布了与COVID-19案件的增加有关的全球大流行的地位。 爆发已达到188个国家左右。 医疗保健专业人员反复进行实验室测试,以便对患者进行正确的结果,例如,检查患者肺部的胸部CT图像。 这是临床治疗和教学任务中的重要作用。 在本文中,我们试图对Covid-19患者的胸部CT图像进行分类。 CNN从图像产生空间特征,因此它非常迅速用于图像分类问题。 通过实验评估三种技术。 实验结果表明,试验套装有1119 Covid-19胸部CT图像和446个正常胸部CT图像。 实验结果表示我们的优惠模式在其他模型中提供了97.57%的最高精度得分,成立Resnet-V2和Inception-V3。

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