Magneto-Optical Imaging Feature Extraction of Angle Welding Defects Based on Polarization Information

Author(s):  
Shilin Zheng ◽  
Xiaotong Liu ◽  
Zhengxu Zhang
2019 ◽  
Vol 58 (2) ◽  
pp. 291 ◽  
Author(s):  
Xiangdong Gao ◽  
Yanfeng Li ◽  
Tingyan Chen ◽  
Perry P. Gao ◽  
Yanxi Zhang

2019 ◽  
Vol 27 (8) ◽  
pp. 1863-1869 ◽  
Author(s):  
高向东 GAO Xiang-dong ◽  
周晓虎 ZHOU Xiao-hu ◽  
李彦峰 LI Yan-feng ◽  
代欣欣 DAI Xin-xin ◽  
张南峰 ZHANG Nan-feng

2017 ◽  
Vol 35 (4_suppl) ◽  
pp. 253-253
Author(s):  
Ahmed M. Khalaf ◽  
David T. Fuentes ◽  
Kareem Ahmed ◽  
Reham Abdel-Wahab ◽  
Manal Hassan ◽  
...  

253 Background: To determine whether CT imaging features can provide quantitative biomarkers to differentiate HCC with pathologic B-catenin gene mutation and those without mutation. Methods: Quantitative imaging features were extracted from a database of manually labeled liver with enhancing and non-enhancing tumor tissue,which were established using multiphasic CT images from 17 patients. CT studies were done before each patient underwent surgical removal of the HCC, which were subjected to pathologic analysis to evaluate B-catenin mutation.The mean period between the CT studies and the pathologic analyses was 18 days. According to the pathology results, the patients were divided into two groups: HCC with CTNNB1 mutation and HCC without. Image feature extraction included image gradients, co-occurrence matrix, and pixel neighborhood statistics of the first, second, and third moments. Pairwise analyses of the imaging features were performed on the mutated and non-mutated HCC images and the background liver tissue of both groups. Independent samples t-test and Mann Whitney U test were performed to quantitatively compare between the means of the imaging features extracted from the tumor tissues of both groups and those extracted from the background liver tissue of both groups. Results: Imaging feature analysis of the pairwise difference between the mutated and non-mutated HCC scans for multiple pixel-neighborhood image features are statistically significant.The top stratifying image features include the skewness (p = 0.02), energy (p = .03), and entropy (p = .03) during the venous and arterial phase. Conclusions: This preliminary study demonstrates the feasibility of quantitative imaging feature extraction from CE-CT imaging to differentiate between HCC with proven B-catenin gene mutation and those without mutation. Non-invasive methods of identifying HCC with B-catenin mutations may be clinically beneficial since B-catenin is an important potential target in novel cancer therapies, and identifying B-catenin mutations may also help provide information regarding prognosis.Verifying the quantitative features in larger patient populations is needed to confirm the results of this study.


Author(s):  
J.P. Fallon ◽  
P.J. Gregory ◽  
C.J. Taylor

Quantitative image analysis systems have been used for several years in research and quality control applications in various fields including metallurgy and medicine. The technique has been applied as an extension of subjective microscopy to problems requiring quantitative results and which are amenable to automatic methods of interpretation.Feature extraction. In the most general sense, a feature can be defined as a portion of the image which differs in some consistent way from the background. A feature may be characterized by the density difference between itself and the background, by an edge gradient, or by the spatial frequency content (texture) within its boundaries. The task of feature extraction includes recognition of features and encoding of the associated information for quantitative analysis.Quantitative Analysis. Quantitative analysis is the determination of one or more physical measurements of each feature. These measurements may be straightforward ones such as area, length, or perimeter, or more complex stereological measurements such as convex perimeter or Feret's diameter.


2004 ◽  
Vol 171 (4S) ◽  
pp. 289-289
Author(s):  
Gabri van der Pluijm ◽  
Antoinette Wetterwald ◽  
George N. Thalmann ◽  
Guus Lycklama A. Nijeholt ◽  
Rob Pelger ◽  
...  

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