Addo Daniel, Zhou Shijie, Jackson Jehoiada Kofi, Nneji Grace Ugochi, Monday Happy Nkanta, Sarpong Kwabena, Patamia Rutherford Agbeshi, Ekong Favour, Owusu-Agyei Christyn Akosua
School of Information and Software Engineering, University of Electronic Science and Technology of China, Chengdu 610056, China.
Department of Computing, Oxford Brookes College of Chengdu University of Technology, Chengdu 610059, China.
Diagnostics (Basel). 2022 Oct 22;12(11):2569. doi: 10.3390/diagnostics12112569.
The COVID-19 pandemic has had a significant impact on many lives and the economies of many countries since late December 2019. Early detection with high accuracy is essential to help break the chain of transmission. Several radiological methodologies, such as CT scan and chest X-ray, have been employed in diagnosing and monitoring COVID-19 disease. Still, these methodologies are time-consuming and require trial and error. Machine learning techniques are currently being applied by several studies to deal with COVID-19. This study exploits the latent embeddings of variational autoencoders combined with ensemble techniques to propose three effective EVAE-Net models to detect COVID-19 disease. Two encoders are trained on chest X-ray images to generate two feature maps. The feature maps are concatenated and passed to either a combined or individual reparameterization phase to generate latent embeddings by sampling from a distribution. The latent embeddings are concatenated and passed to a classification head for classification. The COVID-19 Radiography Dataset from Kaggle is the source of chest X-ray images. The performances of the three models are evaluated. The proposed model shows satisfactory performance, with the best model achieving 99.19% and 98.66% accuracy on four classes and three classes, respectively.
自2019年12月下旬以来,新冠疫情对许多人的生活以及许多国家的经济都产生了重大影响。高精度的早期检测对于帮助打破传播链至关重要。几种放射学方法,如CT扫描和胸部X光,已被用于诊断和监测新冠疾病。然而,这些方法耗时且需要反复试验。目前,多项研究正在应用机器学习技术来应对新冠疫情。本研究利用变分自编码器的潜在嵌入并结合集成技术,提出了三种有效的EVAE-Net模型来检测新冠疾病。在胸部X光图像上训练两个编码器以生成两个特征图。将特征图连接起来并传递到组合或单独的重参数化阶段,通过从分布中采样来生成潜在嵌入。将潜在嵌入连接起来并传递到分类头进行分类。来自Kaggle的新冠放射图像数据集是胸部X光图像的来源。评估了这三种模型的性能。所提出的模型表现出令人满意的性能,最佳模型在四类和三类上的准确率分别达到99.19%和98.66%。