M. Al-Ani, Qeethara Al-Shayea, S. M. Al-Barzinji, Dimah Mezher Shaban Al-Ani, Zainab Mezher Shaban Al-Ani
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引用次数: 0
摘要
背景:医学图像有许多重要的应用,而 COVID-19 大流行病的出现使医学图像变得更加重要。这些应用主要集中在计算机断层扫描胸部图像和 X 射线图像上。本研究将重点关注冠状病毒(COVID-19)的特殊 X 射线医学影像应用:在医学影像上应用许多方法来实现某些特征。所设计的方法通过从预处理到分类步骤的多个步骤来实现。所提出的方法侧重于利用离散小波变换(DWT)生成有效特征,然后应用卷积神经网络(CNN)对正常和异常 COVID-19 进行分类:采用 COVID-19 诊断方法实现了高性能系统。结果:COVID-19 诊断方法的实施实现了高性能系统,应用卷积神经网络工具的 COVID-19 诊断结果使验证准确率达到 92.31%:结论:混合使用两种技术(DWT 和 CNN)可在诊断过程中达到最佳效果。此外,X 射线胸部图像是检测和诊断 COVID-19 疾病的重要工具。
COVID-19 Diagnosis Applied DWT and CNN on X-ray Chest Images
Background: Medical images have many important applications, and this importance increased when the emergence of the COVID-19 pandemic. These applications have been focused on computed tomography chest images and X-ray images. This research will focus on special X-ray medical image applications of coronavirus (COVID-19).Methods: Many methods are applied on medical images to achieve certain features. The designed approach is implemented through many steps starting from preprocessing up to classification step. The proposed approach focusing on generating efficient features using discrete wavelet transform (DWT) then applying convolutional neural network (CNN) to classify between normal and abnormal COVID-19.Results: The COVID-19 diagnosis approach is implemented to achieve high performance system. The obtained result of COVID-19 diagnosis applied CNN tool leading to validation accuracy of 92.31%.Conclusion: Hybridizing two technologies (DWT and CNN) is intended to reach the best results in the diagnostic process. In addition, X-ray chest image is an important tool for detection and diagnosis of COVID-19 diseases.