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首页> 外文期刊>International journal of medical informatics >Improving the performance of CNN to predict the likelihood of COVID-19 using chest X-ray images with preprocessing algorithms
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Improving the performance of CNN to predict the likelihood of COVID-19 using chest X-ray images with preprocessing algorithms

机译:利用预处理算法提高CNN的性能预测CNN预测COVID-19的可能性

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Objective: This study aims to develop and test a new computer-aided diagnosis (CAD) scheme of chest X-ray images to detect coronavirus (COVID-19) infected pneumonia.Method: CAD scheme first applies two image preprocessing steps to remove the majority of diaphragm regions, process the original image using a histogram equalization algorithm, and a bilateral low-pass filter. Then, the original image and two filtered images are used to form a pseudo color image. This image is fed into three input channels of a transfer learning-based convolutional neural network (CNN) model to classify chest X-ray images into 3 classes of COVID-19 infected pneumonia, other community-acquired no-COVID-19 infected pneumonia, and normal (non-pneumonia) cases. To build and test the CNN model, a publicly available dataset involving 8474 chest X-ray images is used, which includes 415, 5179 and 2,880 cases in three classes, respectively. Dataset is randomly divided into 3 subsets namely, training, validation, and testing with respect to the same frequency of cases in each class to train and test the CNN model.Results: The CNN-based CAD scheme yields an overall accuracy of 94.5 % (2404/2544) with a 95 % confidence interval of [0.93,0.96] in classifying 3 classes. CAD also yields 98.4 % sensitivity (124/126) and 98.0 % specificity (2371/2418) in classifying cases with and without COVID-19 infection. However, without using two preprocessing steps, CAD yields a lower classification accuracy of 88.0 % (2239/2544).Conclusion: This study demonstrates that adding two image preprocessing steps and generating a pseudo color image plays an important role in developing a deep learning CAD scheme of chest X-ray images to improve accuracy in detecting COVID-19 infected pneumonia.
机译:目的:本研究旨在开发和测试胸部X射线图像的新计算机辅助诊断(CAD)方案,以检测冠状病毒(Covid-19)感染的肺炎。方法:CAD方案首先应用两个图像预处理步骤以去除大多数隔膜区,使用直方图均衡算法处理原始图像,以及双边低通滤波器。然后,原始图像和两个滤波图像用于形成伪彩色图像。该图像被送入三个基于转移学习的卷积神经网络(CNN)模型的三个输入通道,将胸部X射线图像分类为3类Covid-19受感染的肺炎,其他社区获得的No-Covid-19受感染的肺炎,和正常(非肺炎)病例。为了构建和测试CNN模型,使用涉及8474个胸部X射线图像的公共数据集,其中包括三类中的415,5179和2,880例。 DataSet随机分为3个子集,即培训,验证和测试在每个类中的同一频率训练和测试CNN模型。结果:基于CNN的CAD方案产生94.5%的总精度( 2404/2544)分类3级[0.93,0.96]的95%置信区间。 CAD还产生98.4%的敏感性(124/126)和98.0%特异性(2371/2418),在分类病例和不含Covid-19感染的情况下。但是,在不使用两个预处理步骤的情况下,CAD产生较低的分类精度为88.0%(2239/2544)。结论:本研究表明,添加两个图像预处理步骤并生成伪彩色图像在开发深度学习CAD方面发挥着重要作用胸部X射线图像方案提高检测Covid-19感染肺炎的准确性。

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