2021
DOI: 10.1038/s41598-021-94781-6
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A neural pathomics framework for classifying colorectal cancer histopathology images based on wavelet multi-scale texture analysis

Abstract: Colorectal cancer (CRC) constitutes the third most commonly diagnosed cancer in males and the second in females. Precise histopathological classification of CRC tissue pathology is the cornerstone not only for diagnosis but also for patients’ management decision making. An automated system able to accurately classify different CRC tissue regions may increase diagnostic precision and alleviate clinical workload. However, tissue classification is a challenging task due to the variability in morphological and tex… Show more

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Cited by 31 publications
(23 citation statements)
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“…Furthermore, another agreement with the findings ( Table S6 ) of the proposed analysis was observed for discriminative features of histology subtypes with studies reporting cluster shade [ 62 ], first-order, GLCM, GLSZM [ 63 ] and a combination of high level emphasis and small area emphasis [ 64 ] as important features. It is worth noting that the majority of the identified radiomics were wavelet-based features ( Table S6 ), indicating that a significant part of the differentiating information exists only in specific frequency bands and can be deciphered through scale-space wavelet analysis [ 65 ].…”
Section: Discussionmentioning
confidence: 99%
“…Furthermore, another agreement with the findings ( Table S6 ) of the proposed analysis was observed for discriminative features of histology subtypes with studies reporting cluster shade [ 62 ], first-order, GLCM, GLSZM [ 63 ] and a combination of high level emphasis and small area emphasis [ 64 ] as important features. It is worth noting that the majority of the identified radiomics were wavelet-based features ( Table S6 ), indicating that a significant part of the differentiating information exists only in specific frequency bands and can be deciphered through scale-space wavelet analysis [ 65 ].…”
Section: Discussionmentioning
confidence: 99%
“…Afterwards, every covariance matrix is normalized by the total number of its components to determine the covariance relative frequency among the gray levels of mutual pixels [61]. In this study, we have used the traditional GLCM textural features approach, although other techniques such as the doughnut GLCM [62], GLCM based on Haralick features [58], WPT-GLCM, WPT-LBP-GLCM, and WPT-Gabor-GLCM (WPT: wavelet packet transform, LBP: local binary patterns) [63] have been deployed by other studies.…”
Section: Texture Analysis Methodsmentioning
confidence: 99%
“…Evidence supports that the classification and grading of many tumors, such as breast, colorectal, prostate, glioma, and lung cancer, are possible through histopathological images (21,71,88,146,147). Specifically, Sharma and Mehra (146) evaluated the discriminative power of handcrafted and baseline pathology and depth features in a breast cancer multi-classification problem, with linear SVM and VGG16 networks exhibiting excellent predictive performance.…”
Section: Diagnosismentioning
confidence: 99%
“…Specifically, Sharma and Mehra (146) evaluated the discriminative power of handcrafted and baseline pathology and depth features in a breast cancer multi-classification problem, with linear SVM and VGG16 networks exhibiting excellent predictive performance. Trivizakis et al (21) proposed a multiscale texture analysis framework for CRC classification. They obtained an accuracy of 95.3% in the recognition task of eight types of CRC tissue image patches, which is better than the 87.4% obtained in recent studies.…”
Section: Diagnosismentioning
confidence: 99%
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