基于人工智能的胸部CT扫描图像COVID-19检测

Hussein Kaheel, Ali Hussein, A. Chehab
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引用次数: 17

摘要

新冠肺炎疫情引起了大数据分析师和人工智能工程师的关注。将计算机断层扫描(CT)胸部图像分类为正常或感染需要密集的数据收集和人工智能模块的创新架构。在本文中,我们提出了一个平台,该平台涵盖了通过检查CT胸部扫描图像对COVID-19正常和异常方面的多个层面的分析和分类。具体而言,该平台首先基于可靠的图像集合扩充训练阶段使用的数据集,对图像中的可疑区域进行分割/检测,并对这些区域进行分析,以输出正确的分类。此外,我们结合人工智能算法,选择最适合我们研究的模块。最后,与文献中的其他技术相比,我们展示了这种架构的有效性。实验结果表明,该结构的准确率达到95%。
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AI-Based Image Processing for COVID-19 Detection in Chest CT Scan Images
The COVID-19 pandemic has attracted the attention of big data analysts and artificial intelligence engineers. The classification of computed tomography (CT) chest images into normal or infected requires intensive data collection and an innovative architecture of AI modules. In this article, we propose a platform that covers several levels of analysis and classification of normal and abnormal aspects of COVID-19 by examining CT chest scan images. Specifically, the platform first augments the dataset to be used in the training phase based on a reliable collection of images, segmenting/detecting the suspicious regions in the images, and analyzing these regions in order to output the right classification. Furthermore, we combine AI algorithms, after choosing the best fit module for our study. Finally, we show the effectiveness of this architecture when compared to other techniques in the literature. The obtained results show that the accuracy of the proposed architecture is 95%.
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