确定和测量肺部图像上有COVID-19区域的数量

IF 0.5 Q4 COMPUTER SCIENCE, THEORY & METHODS Applied Computer Systems Pub Date : 2021-12-01 DOI:10.2478/acss-2021-0023
S. Tuncer, A. Cinar, T. Tuncer, F. Çolak
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引用次数: 0

摘要

了解COVID-19患者在疾病过程中肺部受到的影响程度非常重要。在CT肺部图像上发现感染组织不仅有助于诊断疾病,而且有助于衡量疾病的严重程度。本文采用基于人工智能的混合分割方法(我们称之为TA-Segnet),揭示了新冠病毒感染区域在二维CT图像上对肺部的影响。为此,提出了一种基于混合卷积神经网络的分割方法(TA-Segnet)。我们使用“COVID-19 CT肺部和感染分割数据集”和“COVID-19 CT分割数据集”对TA-SegNET进行评估。首先确定每张肺图像上的COVID-19组织,然后根据准确性、骰子、Jaccard、均方误差、互信息和相互关系等参数对得到的测量值进行评估。数据集1的准确率、Dice、Jaccard、Mean Square Error、Mutual Information和Cross-correlation值分别为98.63%、0.95、0.919、0.139、0.51和0.904。对于数据集2,这些参数分别为98.57%、0.958、0.992、0.0088、0.565和0.8995。其次,确定CT图像上COVID-19区域相对于肺部区域的比例。该比率与原始数据集中的值进行比较。结果表明,在大流行时期,这种基于人工智能的方法有助于对COVID-19患者进行优先排序和自动化诊断。
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Determining and Measuring the Amount of Region Having COVID-19 on Lung Images
Abstract It is important to know how much the lungs are affected in the course of the disease in patients with COVID-19. Detecting infected tissues on CT lung images not only helps diagnose the disease but also helps measure the severity of the disease. In this paper, using the hybrid artificial intelligence-based segmentation method, which we call TA-Segnet, it has been revealed how the region with COVID-19 affects the lung on 2D CT images. A hybrid convolutional neural network-based segmentation method (TA-Segnet) has been developed for this process. We use “COVID-19 CT Lung and Infection Segmentation Dataset” and “COVID-19 CT Segmentation Dataset” to evaluate TA-SegNET. At first, the tissues with COVID-19 on each lung image are determined, then the measurements obtained are evaluated according to the parameters of Accuracy, Dice, Jaccard, Mean Square Error, Mutual Information and Cross-correlation. Accuracy, Dice, Jaccard, Mean Square Error, Mutual Information and Cross-correlation values for data set-1 are 98.63 %, 0.95, 0.919, 0.139, 0.51, and 0.904, respectively. For data set-2, these parameters are 98.57 %, 0.958, 0.992, 0.0088, 0.565 and 0.8995, respectively. Second, the ratio of COVID-19 regions relative to the lung region on CT images is determined. This ratio is compared with the values in the original data set. The results obtained show that such an artificial intelligence-based method during the pandemic period will help prioritize and automate the diagnosis of COVID-19 patients.
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来源期刊
Applied Computer Systems
Applied Computer Systems COMPUTER SCIENCE, THEORY & METHODS-
自引率
10.00%
发文量
9
审稿时长
30 weeks
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