A radiomics study of textural features using magnetic resonance imaging for classification of breast cancer subtypes
Breast cancer is usually screened using mammography and biopsy is used to confirm diagnosis. Recent radiomics approaches suggest predictive associations between images and medical outcome. This study aims to classify breast cancer subtypes using textural features derived from magnetic resonance imag...
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my.um.eprints.371922023-04-13T07:09:16Z http://eprints.um.edu.my/37192/ A radiomics study of textural features using magnetic resonance imaging for classification of breast cancer subtypes Tang, Z. Y. Tan, Li Kuo Ng, B. Y. Rahmat, Kartini Ramli, M. T. Ninomiya, K. Wong, J. H. D. R Medicine (General) Breast cancer is usually screened using mammography and biopsy is used to confirm diagnosis. Recent radiomics approaches suggest predictive associations between images and medical outcome. This study aims to classify breast cancer subtypes using textural features derived from magnetic resonance imaging (MRI). Thirty-two lesions with histologic results that were definite were studied. A total of 174 textural features were extracted from four MRI sequences (Axial STIR, dynamic contrast enhance ( DCE) Phase 2, dynamic contrast enhance (DCE) subtracted Phase 2 and T1-weighted), and analysed using t-test, Kruskal-Wallis and principal component analysis (PCA). Evaluation was done using multinomial logistic regression and leave-one-out-cross-validation (LOOCV) methods. We found 14 texture features that consistently showed significant difference between malignant and normal breast tissues across all MRI sequences. Four textural features were useful in histological status with t-test accuracy of 71.4% and PCA accuracy of 64.3%. In hormonal receptor status, only five textural features were useful. The accuracies were also found to be poorer with 46.4% accuracy based on Kruskal-Wallis method and 46.4% accuracy using PCA method. As this is a preliminary study, the analysis should be extended to a larger sample size to accurately determine the possibility of clinical diagnosis. IOP PUBLISHING LTD 2020 Conference or Workshop Item PeerReviewed Tang, Z. Y. and Tan, Li Kuo and Ng, B. Y. and Rahmat, Kartini and Ramli, M. T. and Ninomiya, K. and Wong, J. H. D. (2020) A radiomics study of textural features using magnetic resonance imaging for classification of breast cancer subtypes. In: 11th International Seminar on Medical Physics (ISMP) 2019, 7-8 November 2019, Kuala Lumpur, Malaysia. https://iopscience.iop.org/article/10.1088/1742-6596/1497/1/012015 |
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R Medicine (General) Tang, Z. Y. Tan, Li Kuo Ng, B. Y. Rahmat, Kartini Ramli, M. T. Ninomiya, K. Wong, J. H. D. A radiomics study of textural features using magnetic resonance imaging for classification of breast cancer subtypes |
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Breast cancer is usually screened using mammography and biopsy is used to confirm diagnosis. Recent radiomics approaches suggest predictive associations between images and medical outcome. This study aims to classify breast cancer subtypes using textural features derived from magnetic resonance imaging (MRI). Thirty-two lesions with histologic results that were definite were studied. A total of 174 textural features were extracted from four MRI sequences (Axial STIR, dynamic contrast enhance ( DCE) Phase 2, dynamic contrast enhance (DCE) subtracted Phase 2 and T1-weighted), and analysed using t-test, Kruskal-Wallis and principal component analysis (PCA). Evaluation was done using multinomial logistic regression and leave-one-out-cross-validation (LOOCV) methods. We found 14 texture features that consistently showed significant difference between malignant and normal breast tissues across all MRI sequences. Four textural features were useful in histological status with t-test accuracy of 71.4% and PCA accuracy of 64.3%. In hormonal receptor status, only five textural features were useful. The accuracies were also found to be poorer with 46.4% accuracy based on Kruskal-Wallis method and 46.4% accuracy using PCA method. As this is a preliminary study, the analysis should be extended to a larger sample size to accurately determine the possibility of clinical diagnosis. |
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Conference or Workshop Item |
author |
Tang, Z. Y. Tan, Li Kuo Ng, B. Y. Rahmat, Kartini Ramli, M. T. Ninomiya, K. Wong, J. H. D. |
author_facet |
Tang, Z. Y. Tan, Li Kuo Ng, B. Y. Rahmat, Kartini Ramli, M. T. Ninomiya, K. Wong, J. H. D. |
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Tang, Z. Y. |
title |
A radiomics study of textural features using magnetic resonance imaging for classification of breast cancer subtypes |
title_short |
A radiomics study of textural features using magnetic resonance imaging for classification of breast cancer subtypes |
title_full |
A radiomics study of textural features using magnetic resonance imaging for classification of breast cancer subtypes |
title_fullStr |
A radiomics study of textural features using magnetic resonance imaging for classification of breast cancer subtypes |
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A radiomics study of textural features using magnetic resonance imaging for classification of breast cancer subtypes |
title_sort |
radiomics study of textural features using magnetic resonance imaging for classification of breast cancer subtypes |
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IOP PUBLISHING LTD |
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2020 |
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http://eprints.um.edu.my/37192/ https://iopscience.iop.org/article/10.1088/1742-6596/1497/1/012015 |
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