在计算机断层扫描图像中检测COVID-19肺炎的人工智能方法的发展

IF 0.2 Q4 MEDICINE, GENERAL & INTERNAL
G. Yıldırım, H. Karakaş, Yaşar Alper Özkaya, Emre Şener, Özge Fındık, Gülhan Naz Pulat
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引用次数: 0

摘要

简介:本研究旨在构建一个人工智能系统,在计算机断层扫描(CT)图像上检测2019冠状病毒病(新冠肺炎)肺炎,并测试其诊断性能。方法:数据采集时间为2020年3月18日至4月17日。提取了269例经逆转录聚合酶链反应证实的患者的CT数据,并最终使用了173项研究(122项用于训练,51项用于测试)。新冠肺炎肺炎的大多数典型病变都是由两名放射科医生使用定制工具生成多平面ground-truth掩模。生成了128x128像素的斑块大小、18255个轴向斑块、71458个冠状斑块和72721个矢状斑块,以使用U-Net网络训练数据集。在或正交平面中提取病变,并通过肺分割进行过滤。矢状面和冠状面预测掩模被重新转换到轴向平面,并使用投票方案合并到相交的轴向掩模中。结果:基于轴向预测掩模,该模型的敏感性和特异性分别为91.4%和99.9%。通过使用交叉预测掩码,阳性预测的总数增加了3.9%,而阴性预测的总数仅略微减少了0.01%。这些变化导致91.5%的敏感性、99.9%的特异性和99.9%的准确率。结论:该研究显示了U-Net结构在诊断新冠肺炎典型肺部病变CT图像中的可靠性。它还显示了交叉法对提高模型性能的略微有利的效果。基于预先检测的性能水平,该模型可用于快速准确地检测和表征典型的新冠肺炎肺炎,以协助放射科医生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of an Artificial Intelligence Method to Detect COVID-19 Pneumonia in Computed Tomography Images
Introduction: This study aimed to construct an artificial intelligence system to detect Coronavirus disease-2019 (COVID-19) pneumonia on computed tomography (CT) images and to test its diagnostic performance. Methods: Data were acquired between March 18-April 17, 2020. CT data of 269 reverse tran-scriptase-polymerase chain reaction proven patients were extracted, and 173 studies (122 for training, 51 testing) were finally used. Most typical lesions of COVID-19 pneumonia were la-beled by two radiologists using a custom tool to generate multiplanar ground-truth masks. Us-ing a patch size of 128x128 pixels, 18,255 axial, 71,458 coronal, and 72,721 sagittal patches were generated to train the datasets with the U-Net network. Lesions were extracted in the or-thogonal planes and filtered by lung segmentation. Sagittal and coronal predicted masks were reconverted to the axial plane and were merged into the intersect-ed axial mask using a voting scheme. Results: Based on the axial predicted masks, the sensitivity and specificity of the model were found as 91.4% and 99.9%, respectively. The total number of positive predictions has increased by 3.9% by the use of intersected predicted masks, whereas the total number of negative predic-tions has only slightly decreased by 0.01%. These changes have resulted in 91.5% sensitivity, 99.9% specificity, and 99.9% accuracy. Conclusion: This study has shown the reliability of the U-Net architecture in diagnosing typical pulmonary lesions of COVID-19 in CT images. It also showed a slightly favorable effect of the intersection method to increase the model's performance. Based on the performance level pre-sented, the model may be used in the rapid and accurate detection and characterization of the typical COVID-19 pneumonia to assist radiologists.
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来源期刊
Istanbul Medical Journal
Istanbul Medical Journal MEDICINE, GENERAL & INTERNAL-
CiteScore
0.30
自引率
0.00%
发文量
46
审稿时长
18 weeks
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