Contribution of artificial intelligence applications developed with the deep learning method to the diagnosis of COVID-19 pneumonia on computed tomography.

IF 0.7 Q4 RESPIRATORY SYSTEM Tuberkuloz ve Toraks-Tuberculosis and Thorax Pub Date : 2021-12-01 DOI:10.5578/tt.20219606
Nevin Aydın, Özer Çelik
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Abstract

Introduction: Computed tomography (CT) is an auxiliary modality in the diagnosis of the novel Coronavirus (COVID-19) disease and can guide physicians in the presence of lung involvement. In this study, we aimed to investigate the contribution of deep learning to diagnosis in patients with typical COVID-19 pneumonia findings on CT.

Materials and methods: This study retrospectively evaluated 690 lesions obtained from 35 patients diagnosed with COVID-19 pneumonia based on typical findings on non-contrast high-resolution CT (HRCT) in our hospital. The diagnoses of the patients were also confirmed by other necessary tests. HRCT images were assessed in the parenchymal window. In the images obtained, COVID-19 lesions were detected. For the deep Convolutional Neural Network (CNN) algorithm, the Confusion matrix was used based on a Tensorflow Framework in Python.

Result: A total of 596 labeled lesions obtained from 224 sections of the images were used for the training of the algorithm, 89 labeled lesions from 27 sections were used in validation, and 67 labeled lesions from 25 images in testing. Fifty-six of the 67 lesions used in the testing stage were accurately detected by the algorithm while the remaining 11 were not recognized. There was no false positive. The Recall, Precision and F1 score values in the test group were 83.58, 1, and 91.06, respectively.

Conclusions: We successfully detected the COVID-19 pneumonia lesions on CT images using the algorithms created with artificial intelligence. The integration of deep learning into the diagnostic stage in medicine is an important step for the diagnosis of diseases that can cause lung involvement in possible future pandemics.

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基于深度学习方法开发的人工智能应用在ct诊断COVID-19肺炎中的贡献。
计算机断层扫描(CT)是新型冠状病毒(COVID-19)疾病诊断的辅助方式,可以指导医生是否存在肺部受累。在本研究中,我们旨在探讨深度学习对具有典型COVID-19肺炎CT表现的患者诊断的贡献。材料与方法:本研究基于我院非对比高分辨率CT (HRCT)典型表现,回顾性评价35例新冠肺炎患者的690个病灶。患者的诊断也通过其他必要的检查得到证实。在实质窗内评估HRCT图像。在获得的图像中,检测到COVID-19病变。对于深度卷积神经网络(CNN)算法,使用了基于Python的Tensorflow框架的混淆矩阵。结果:从224张图像中获得596个标记病变用于算法的训练,从27张图像中获得89个标记病变用于验证,从25张图像中获得67个标记病变用于测试。在测试阶段使用的67个病变中,56个被算法准确检测到,其余11个未被识别。没有假阳性。实验组的查全率(Recall)为83.58,查准率(Precision)为1,F1评分为91.06。结论:利用人工智能创建的算法成功检测出CT图像上的COVID-19肺炎病变。将深度学习整合到医学诊断阶段是诊断可能在未来大流行中导致肺部病变的疾病的重要一步。
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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来源期刊
CiteScore
1.50
自引率
9.10%
发文量
43
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