Development of a clinical decision support system for the early detection of COVID-19 using deep learning based on chest radiographic images

M. Qjidaa, A. Ben-fares, Y. Mechbal, H. Amakdouf, M. Maaroufi, B. Alami, H. Qjidaa
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引用次数: 23

Abstract

To control the spread of the COVID-19 virus and to gain critical time in controlling the spread of the disease, rapid and accurate diagnostic methods based on artificial intelligence are urgently needed. In this article, we propose a clinical decision support system for the early detection of COVID 19 using deep learning based on chest radiographic images. For this we will develop an in-depth learning method which could extract the graphical characteristics of COVID-19 in order to provide a clinical diagnosis before the test of the pathogen. For this, we collected 100 images of cases of COVID-19 confirmed by pathogens, 100 images diagnosed with typical viral pneumonia and 100 images of normal cases. The architecture of the proposed model first goes through a preprocessing of the input images followed by an increase in data. Then the model begins a step to extract the characteristics followed by the learning step. Finally, the model begins a classification and prediction process with a fully connected network formed of several classifiers. Deep learning and classification were carried out using the VGG convolutional neural network. The proposed model achieved an accuracy of 92.5% in internal validation and 87.5% in external validation. For the AUC criterion we obtained a value of 97% in internal validation and 95% in external validation. Regarding the sensitivity criterion, we obtained a value of 92% in internal validation and 87% in external validation. The results obtained by our model in the test phase show that our model is very effective in detecting COVID-19 and can be offered to health communities as a precise, rapid and effective clinical decision support system in COVID-19 detection.
基于胸片图像的深度学习,开发COVID-19早期检测临床决策支持系统
为了控制新冠病毒的传播,为控制疫情传播赢得关键时间,迫切需要基于人工智能的快速准确诊断方法。在本文中,我们提出了一种基于胸片图像的深度学习的COVID - 19早期检测临床决策支持系统。为此,我们将开发一种深度学习方法,提取COVID-19的图形特征,以便在病原体检测之前提供临床诊断。为此,我们收集了100张病原体确诊的COVID-19病例图像、100张典型病毒性肺炎图像和100张正常病例图像。该模型的架构首先对输入图像进行预处理,然后增加数据量。然后,模型开始提取特征的步骤,然后是学习步骤。最后,该模型使用由多个分类器组成的全连接网络开始分类和预测过程。利用VGG卷积神经网络进行深度学习和分类。该模型的内部验证和外部验证的准确率分别为92.5%和87.5%。对于AUC标准,我们在内部验证中获得97%的值,在外部验证中获得95%的值。对于灵敏度标准,我们获得了92%的内部验证值和87%的外部验证值。该模型在测试阶段的结果表明,该模型对COVID-19的检测非常有效,可以作为一种精确、快速、有效的COVID-19临床决策支持系统提供给卫生社区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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