Automatic Segmentation and Classification of COVID-19 CT Image Using Deep Learning and Multi-Scale Recurrent Neural Network Based Classifier

R. Subhalakshmi, S. Balamurugan, S. Sasikala
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Abstract

In recent times, the COVID-19 epidemic turn out to be increased in an extreme manner, by the accessibility of an inadequate amount of rapid testing kits. Consequently, it is essential to develop the automated techniques for Covid-19 detection to recognize the existence of disease from the radiological images. The most ordinary symptoms of COVID-19 are sore throat, fever, and dry cough. Symptoms are able to progress to a rigorous type of pneumonia with serious impediment. As medical imaging is not recommended currently in Canada for crucial COVID-19 diagnosis, systems of computer-aided diagnosis might aid in early COVID-19 abnormalities detection and help out to observe the disease progression, reduce mortality rates potentially. In this approach, a deep learning based design for feature extraction and classification is employed for automatic COVID-19 diagnosis from computed tomography (CT) images. The proposed model operates on three main processes based pre-processing, feature extraction, and classification. The proposed design incorporates the fusion of deep features using GoogLe Net models. Finally, Multi-scale Recurrent Neural network (RNN) based classifier is applied for identifying and classifying the test CT images into distinct class labels. The experimental validation of the proposed model takes place using open-source COVID-CT dataset, which comprises a total of 760 CT images. The experimental outcome defined the superior performance with the maximum sensitivity, specificity, and accuracy.
基于深度学习和多尺度递归神经网络的COVID-19 CT图像自动分割与分类
最近,由于快速检测试剂盒数量不足,COVID-19疫情以一种极端的方式加剧。因此,必须开发用于Covid-19检测的自动化技术,以便从放射图像中识别疾病的存在。COVID-19最常见的症状是喉咙痛、发烧和干咳。症状可能发展为严重障碍的重症肺炎。由于加拿大目前不推荐医学成像用于关键的COVID-19诊断,计算机辅助诊断系统可能有助于早期发现COVID-19异常,并有助于观察疾病进展,潜在地降低死亡率。该方法采用基于深度学习的特征提取和分类设计,从计算机断层扫描(CT)图像中自动诊断COVID-19。该模型通过预处理、特征提取和分类三个主要过程进行操作。该设计采用了基于GoogLe Net模型的深度特征融合。最后,采用基于多尺度递归神经网络(RNN)的分类器对测试CT图像进行识别和分类。利用开源的COVID-CT数据集对所提出的模型进行了实验验证,该数据集共包含760张CT图像。实验结果定义了具有最大灵敏度、特异性和准确性的优越性能。
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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