2019
DOI: 10.1186/s12938-019-0627-4
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Detection of pulmonary ground-glass opacity based on deep learning computer artificial intelligence

Abstract: BackgroundA deep learning computer artificial intelligence system is helpful for early identification of ground glass opacities (GGOs).MethodsImages from the Lung Image Database Consortium and Image Database Resource Initiative (LIDC-IDRI) database were used in AlexNet and GoogLeNet to detect pulmonary nodules, and 221 GGO images provided by Xinhua Hospital were used in ResNet50 for detecting GGOs. We used computed tomography image radial reorganization to create the input image of the three-dimensional featur… Show more

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Cited by 29 publications
(27 citation statements)
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References 23 publications
(19 reference statements)
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“…As the wide application of the arti cial intelligence technology for detection of pulmonary nodules has demonstrated great success [16,17] , computer-aided detection and analysis makes quanti cation and classi cation of COVID-19 possible. The arti cial intelligence evaluation system of COVID-19 was rapidly developed and applied to solve the insu cient expertise of radiologists and speed up screening potential new cases of COVID-19 in Wuhan city, China [18] .…”
Section: The Quantitative Analysis Of Correlation Between Pulmonary Amentioning
confidence: 99%
See 1 more Smart Citation
“…As the wide application of the arti cial intelligence technology for detection of pulmonary nodules has demonstrated great success [16,17] , computer-aided detection and analysis makes quanti cation and classi cation of COVID-19 possible. The arti cial intelligence evaluation system of COVID-19 was rapidly developed and applied to solve the insu cient expertise of radiologists and speed up screening potential new cases of COVID-19 in Wuhan city, China [18] .…”
Section: The Quantitative Analysis Of Correlation Between Pulmonary Amentioning
confidence: 99%
“…The arti cial intelligence evaluation system of COVID-19 was rapidly developed and applied to solve the insu cient expertise of radiologists and speed up screening potential new cases of COVID-19 in Wuhan city, China [18] . However, the current system has been con ned to detect pulmonary nodules [16,17] , its application in assessing the severity of COVID-19 has yet to be developed.…”
Section: The Quantitative Analysis Of Correlation Between Pulmonary Amentioning
confidence: 99%
“…The output of the last fully-connected layer consisted of 4096 dimensional features [16]. AlexNet had shown very useful in classification of medical imaging for diseases such as lung diseases [17], heart conditions [18,19] as well as cancer [20].…”
Section: Alexnetmentioning
confidence: 99%
“…Different CNN architectures were investigated and modified versions were proposed with optimization methods to improve model's classification accuracy. ResNet reached the highest detection accuracy of 95% to identify "ground glass opacities" [7]. Meanwhile, DenseNet combined with a machine learning classifier achieved the classification accuracy of 99% [8] , and EfficientNet was the best among 15 other CNN classifiers based on the accuracy of 82% [9].…”
Section: Introductionmentioning
confidence: 99%