The world is still overwhelmed by the spread of the COVID-19 virus. With over 250 Million infected cases as of November 2021 and affecting 219 countries and territories, the world remains in the pandemic period. Detecting COVID-19 using the deep learning method on CT scan images can play a vital role in assisting medical professionals and decision authorities in controlling the spread of the disease and providing essential support for patients. The convolution neural network is widely used in the field of large-scale image recognition. The current method of RT-PCR to diagnose COVID-19 is time-consuming and universally limited. This research aims to propose a deep learning-based approach to classify COVID-19 pneumonia patients, bacterial pneumonia, viral pneumonia, and healthy (normal cases). This paper used deep transfer learning to classify the data via Inception-ResNet-V2 neural network architecture. The proposed model has been intentionally simplified to reduce the implementation cost so that it can be easily implemented and used in different geographical areas, especially rural and developing regions.
翻译:世界仍然为COVID-19病毒的传播而不堪重负,截至2021年11月,感染病例超过2.5亿,影响到219个国家和地区,世界仍处于流行病时期,利用CT扫描图像方面的深层学习方法检测COVID-19可以发挥重要作用,协助医疗专业人员和决策当局控制该疾病的传播,为病人提供必要的支持,在大规模图像识别领域广泛使用卷发神经网络,RT-PCR目前诊断COVID-19的方法耗时且普遍有限,这项研究旨在提出一种深层次的学习方法,对COVID-19肺炎病人、细菌肺炎、病毒性肺炎和健康(正常病例)进行分类,该文件利用深层转移学习,通过Inception-ResNet-V2神经网络结构对数据进行分类,并有意简化拟议模型,以减少实施成本,从而便于在不同地理区域,特别是农村和发展中区域实施和使用。