基于肺叶分割和特征提取的分层关注网络用于胸部x射线图像的COVID-19预测

S. C. Magneta, C. Sundar, M. S. Thanabal
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引用次数: 2

摘要

2019冠状病毒病(COVID-19)是一种日益严重的呼吸道疾病。它会导致严重的肺炎,并被认为涵盖医疗保健领域的更高碰撞。早期诊断较为复杂,难以得到准确的治疗,减轻了临床部门的压力。胸部x线扫描是诊断肺炎的标准影像学检查。COVID-19的自动检测有助于控制社区疫情,但通过x射线追踪这种病毒感染在医学界是一项具有挑战性的任务。为了自动检测病毒性疾病以降低病死率,本研究采用基于manta-ray multi-verse优化的分层关注网络(MRMVO-based HAN)分类器建模了一种有效的COVID-19检测方法。因此,MRMVO是蝠鲼觅食优化和多宇宙优化器的结合。基于分割的肺叶,从分割的区域获取特征,利用从感兴趣的肺叶区域获取的特征进行COVID-19检测机制的过程。该方法的准确率、真阳性率和真阴性率分别为93.367、89.921和95.071%,具有良好的性能。
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Lung Lobe Segmentation and Feature Extraction-Based Hierarchical Attention Network for COVID-19 Prediction from Chest X-Ray Images
Coronavirus disease 2019 (COVID-19) is a rising respiratory sickness. It causes harsh pneumonia and is considered to cover higher collisions in the healthcare domain. The diagnosis at an early stage is more complex to get accurate treatment for reducing the stress in the clinical sector. Chest X-ray scan is the standard imaging diagnosis test employed for pneumonia disease. Automatic detection of COVID-19 helps to control the community outbreak but tracing this viral infection through X-ray results in a challenging task in the medical community. To automatically detect the viral disease in order to reduce the mortality rate, an effective COVID-19 detection method is modelled in this research by the proposed manta-ray multi-verse optimization-based hierarchical attention network (MRMVO-based HAN) classifier. Accordingly, the MRMVO is the incorporation of manta-ray foraging optimization and multi-verse optimizer. Based on the segmented lung lobes, the features are acquired from segmented regions in such a way that the process of COVID-19 detection mechanism is carried out with the features acquired from interested lobe regions. The proposed method has good performance with the measures, such as accuracy, true positive rate and true negative rate with the values of 93.367, 89.921 and 95.071%.
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