论文标题
通过新型深度学习模型从胸部X射线图像中快速准确地检测到共vid-19的肺炎
Fast and accurate detection of Covid-19-related pneumonia from chest X-ray images with novel deep learning model
论文作者
论文摘要
背景:新型冠状病毒疾病已在全球范围内迅速传播。由于最近有关COVID-19相关肺炎的放射学文献主要集中在CT发现上,美国放射学院(ACR)建议使用便携式胸部X-Radiograph(CXR)。高度需要一种协助从CXR检测和监测COVID-19案例的工具。目的:开发一个全自动框架以使用CXR图像检测COVID-19相关的肺炎并评估其性能。材料和方法:在这项研究中,开发了一种名为Covidnet(Covid-19印度尼西亚神经网络)的新型深度学习模型,以从胸部X射线图像中提取视觉特征,以检测Covid-19相关的肺炎。该模型是由Github和Kaggle提供的几个开源的胸部X射线数据集训练和验证的。结果和讨论:在使用开源数据的验证阶段,识别Covid-19和其他类别的准确性达到98.44%,即100%Covid-19精度和97%的其他精度。讨论:使用该模型对Covid-19和其他病理进行分类可能会稍微降低准确性。尽管SoftMax用于处理分类偏差,但这表明在引入新数据集时进行了其他培训的好处。结论:该模型已经进行了测试,并获得开源数据集的精度为98.4%,灵敏度和特异性分别为100%和96.97%。
Background: Novel coronavirus disease has spread rapidly worldwide. As recent radiological literatures on Covid-19 related pneumonia is primarily focused on CT findings, the American College of Radiology (ACR) recommends using portable chest X-radiograph (CXR). A tool to assist for detection and monitoring of Covid-19 cases from CXR is highly required. Purpose: To develop a fully automatic framework to detect Covid-19 related pneumonia using CXR images and evaluate its performance. Materials and Methods: In this study, a novel deep learning model, named CovIDNet (Covid-19 Indonesia Neural-Network), was developed to extract visual features from chest x-ray images for the detection of Covid-19 related pneumonia. The model was trained and validated by chest x-rays datasets collected from several open source provided by GitHub and Kaggle. Results and Discussion: In the validation stage using open-source data, the accuracy to recognize Covid-19 and others classes reaches 98.44%, that is, 100% Covid-19 precision and 97% others precision. Discussion: The use of the model to classify Covid-19 and other pathologies might slightly decrease the accuracy. Although SoftMax was used to handle classification bias, this indicates the benefit of additional training upon the introduction of new set of data. Conclusion: The model has been tested and get 98.4% accuracy for open source datasets, the sensitivity and specificity are 100% and 96.97%, respectively.