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基于深度卷积神经网络的胸部 X 光图像 COVID-19 检测

Detection of COVID-19 from Chest X-ray Images Using Deep Convolutional Neural Networks.

机构信息

Department of Software Engineering, Jordan University of Science and Technology, P.O. Box 3030, Irbid 22110, Jordan.

Department of Computer Engineering, Jordan University of Science and Technology, P.O. Box 3030, Irbid 22110, Jordan.

出版信息

Sensors (Basel). 2021 Sep 3;21(17):5940. doi: 10.3390/s21175940.

Abstract

The COVID-19 global pandemic has wreaked havoc on every aspect of our lives. More specifically, healthcare systems were greatly stretched to their limits and beyond. Advances in artificial intelligence have enabled the implementation of sophisticated applications that can meet clinical accuracy requirements. In this study, customized and pre-trained deep learning models based on convolutional neural networks were used to detect pneumonia caused by COVID-19 respiratory complications. Chest X-ray images from 368 confirmed COVID-19 patients were collected locally. In addition, data from three publicly available datasets were used. The performance was evaluated in four ways. First, the public dataset was used for training and testing. Second, data from the local and public sources were combined and used to train and test the models. Third, the public dataset was used to train the model and the local data were used for testing only. This approach adds greater credibility to the detection models and tests their ability to generalize to new data without overfitting the model to specific samples. Fourth, the combined data were used for training and the local dataset was used for testing. The results show a high detection accuracy of 98.7% with the combined dataset, and most models handled new data with an insignificant drop in accuracy.

摘要

COVID-19 全球大流行对我们生活的方方面面造成了严重破坏。更具体地说,医疗保健系统承受了巨大的压力,甚至超出了极限。人工智能的进步使得能够实施满足临床准确性要求的复杂应用程序。在这项研究中,使用基于卷积神经网络的定制和预训练深度学习模型来检测由 COVID-19 呼吸并发症引起的肺炎。从 368 名确诊 COVID-19 患者当地收集了胸部 X 光图像。此外,还使用了三个公开可用数据集的数据。以四种方式评估性能。首先,使用公共数据集进行训练和测试。其次,将本地和公共来源的数据合并,用于训练和测试模型。第三,使用公共数据集训练模型,仅使用本地数据进行测试。这种方法增加了检测模型的可信度,并测试了它们在没有过度拟合特定样本的情况下对新数据进行泛化的能力。第四,联合数据集用于训练,本地数据集用于测试。结果表明,联合数据集的检测准确率高达 98.7%,大多数模型处理新数据时,准确率没有明显下降。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f7b3/8434649/801372815cb7/sensors-21-05940-g001.jpg

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