论文标题

Coronet:从胸部X射线图像中检测和诊断Covid-19的深神网络

CoroNet: A deep neural network for detection and diagnosis of COVID-19 from chest x-ray images

论文作者

Khan, Asif Iqbal, Shah, Junaid Latief, Bhat, Mudasir

论文摘要

背景和目标 这部小说的冠状病毒还称为Covid-19,于2019年12月起源于中国武汉,现已遍布全球。到目前为止,它已经感染了约180万人,并夺去了大约114,698人的生命。随着案件数量的迅速增加,大多数国家都面临着测试工具包和资源的短缺。数量有限的测试套件和越来越多的每日病例案件鼓励我们提出一个深度学习模型,该模型可以帮助放射科医生和临床医生使用胸部X射线检测COVID-19病例。 方法 在这项研究中,我们提出了Coronet,Coronet是一种深卷积神经网络模型,以自动检测来自胸部X射线图像的Covid-19感染。所提出的模型基于ImageNet数据集预先训练的Xception体系结构,并通过从两个不同公开可用的数据库中收集Covid-19和其他胸部肺炎X射线图像来制备的数据集上的端到端训练。 结果和结论 皇冠已经在准备好的数据集上进行了训练和测试,实验结果表明,我们提出的模型的总体准确性为89.6%,更重要的是,Covid-19病例的精确度和召回率为93%和98.2%的4级cass案例(VS pneumonia vs pneumonia vs pneumonia vs pneumonia vs pneumonia vs pneumonia vs pneumonia veral vs viral vs veral veral normal normal normal)。对于三级分类(Covid vs肺炎与正常情况),所提出的模型产生的分类精度为95%。这项研究的初步结果看起来很有希望,随着更多的培训数据可用,可以进一步改善。总体而言,提出的模型实质上进步了当前基于放射学方法的方法以及在COVID-19大流行期间,对于临床从业者和放射科医生来说,有助于他们进行诊断,定量和随访,这对于COVID-19病例的诊断,定量和随访可能非常有用。

Background and Objective The novel Coronavirus also called COVID-19 originated in Wuhan, China in December 2019 and has now spread across the world. It has so far infected around 1.8 million people and claimed approximately 114,698 lives overall. As the number of cases are rapidly increasing, most of the countries are facing shortage of testing kits and resources. The limited quantity of testing kits and increasing number of daily cases encouraged us to come up with a Deep Learning model that can aid radiologists and clinicians in detecting COVID-19 cases using chest X-rays. Methods In this study, we propose CoroNet, a Deep Convolutional Neural Network model to automatically detect COVID-19 infection from chest X-ray images. The proposed model is based on Xception architecture pre-trained on ImageNet dataset and trained end-to-end on a dataset prepared by collecting COVID-19 and other chest pneumonia X-ray images from two different publically available databases. Results and Conclusion CoroNet has been trained and tested on the prepared dataset and the experimental results show that our proposed model achieved an overall accuracy of 89.6%, and more importantly the precision and recall rate for COVID-19 cases are 93% and 98.2% for 4-class cases (COVID vs Pneumonia bacterial vs pneumonia viral vs normal). For 3-class classification (COVID vs Pneumonia vs normal), the proposed model produced a classification accuracy of 95%. The preliminary results of this study look promising which can be further improved as more training data becomes available. Overall, the proposed model substantially advances the current radiology based methodology and during COVID-19 pandemic, it can be very helpful tool for clinical practitioners and radiologists to aid them in diagnosis, quantification and follow-up of COVID-19 cases.

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