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利用迁移学习和哈拉里克特征通过胸部X光和CT图像检测新型冠状病毒肺炎

Detection of COVID-19 using CXR and CT images using Transfer Learning and Haralick features.

作者信息

Perumal Varalakshmi, Narayanan Vasumathi, Rajasekar Sakthi Jaya Sundar

机构信息

Department of Computer Technology, Madras Institute of Technology, Anna University, Chromepet, Chengalpattu District, Tamilnadu India.

Melmaruvathur Adhiparasakthi Institute of Medical Sciences and Research, Melmaruvathur, Chengalpattu District, Tamilnadu India.

出版信息

Appl Intell (Dordr). 2021;51(1):341-358. doi: 10.1007/s10489-020-01831-z. Epub 2020 Aug 12.

Abstract

Recognition of COVID-19 is a challenging task which consistently requires taking a gander at clinical images of patients. In this paper, the transfer learning technique has been applied to clinical images of different types of pulmonary diseases, including COVID-19. It is found that COVID-19 is very much similar to pneumonia lung disease. Further findings are made to identify the type of pneumonia similar to COVID-19. Transfer Learning makes it possible for us to find out that viral pneumonia is same as COVID-19. This shows the knowledge gained by model trained for detecting viral pneumonia can be transferred for identifying COVID-19. Transfer Learning shows significant difference in results when compared with the outcome from conventional classifications. It is obvious that we need not create separate model for classifying COVID-19 as done by conventional classifications. This makes the herculean work easier by using existing model for determining COVID-19. Second, it is difficult to detect the abnormal features from images due to the noise impedance from lesions and tissues. For this reason, texture feature extraction is accomplished using Haralick features which focus only on the area of interest to detect COVID-19 using statistical analyses. Hence, there is a need to propose a model to predict the COVID-19 cases at the earliest possible to control the spread of disease. We propose a transfer learning model to quicken the prediction process and assist the medical professionals. The proposed model outperforms the other existing models. This makes the time-consuming process easier and faster for radiologists and this reduces the spread of virus and save lives.

摘要

识别新冠病毒病是一项具有挑战性的任务,始终需要查看患者的临床图像。在本文中,迁移学习技术已应用于包括新冠病毒病在内的不同类型肺部疾病的临床图像。研究发现,新冠病毒病与肺炎非常相似。进一步的研究结果是确定与新冠病毒病相似的肺炎类型。迁移学习使我们能够发现病毒性肺炎与新冠病毒病相同。这表明,为检测病毒性肺炎而训练的模型所获得的知识可以转移用于识别新冠病毒病。与传统分类的结果相比,迁移学习在结果上显示出显著差异。显然,我们无需像传统分类那样为新冠病毒病分类创建单独的模型。通过使用现有模型来确定新冠病毒病,这使得这项艰巨的工作变得更容易。其次,由于病变和组织的噪声干扰,很难从图像中检测到异常特征。因此,使用仅关注感兴趣区域的哈氏特征来完成纹理特征提取,以便通过统计分析检测新冠病毒病。因此,有必要提出一个模型,尽早预测新冠病毒病病例,以控制疾病传播。我们提出了一个迁移学习模型来加快预测过程,并协助医学专业人员。所提出的模型优于其他现有模型。这使得放射科医生耗时的工作变得更容易、更快,从而减少病毒传播并拯救生命。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/48e9/8852781/3b2ec76df206/10489_2020_1831_Fig1_HTML.jpg

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