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Value of Machine Learning with Multiphases CE-MRI Radiomics for Early Prediction of Pathological Complete Response to Neoadjuvant Therapy in HER2-Positive Invasive Breast Cancer

BACKGROUND: To assess the value of radiomics based on multiphases contrast-enhanced magnetic resonance imaging (CE-MRI) for early prediction of pathological complete response (pCR) to neoadjuvant therapy (NAT) in patients with human epithelial growth factor receptor 2 (HER2) positive invasive breast...

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Autores principales: Li, Qin, Xiao, Qin, Li, Jianwei, Wang, Zhe, Wang, He, Gu, Yajia
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Dove 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8253937/
https://www.ncbi.nlm.nih.gov/pubmed/34234550
http://dx.doi.org/10.2147/CMAR.S304547
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author Li, Qin
Xiao, Qin
Li, Jianwei
Wang, Zhe
Wang, He
Gu, Yajia
author_facet Li, Qin
Xiao, Qin
Li, Jianwei
Wang, Zhe
Wang, He
Gu, Yajia
author_sort Li, Qin
collection PubMed
description BACKGROUND: To assess the value of radiomics based on multiphases contrast-enhanced magnetic resonance imaging (CE-MRI) for early prediction of pathological complete response (pCR) to neoadjuvant therapy (NAT) in patients with human epithelial growth factor receptor 2 (HER2) positive invasive breast cancer. METHODS: A total of 127 patients with newly diagnosed primary HER2 positive invasive breast cancer underwent CE-MRI before NAT and performed surgery after NAT. Radiomic features were extracted from the 1(st) postcontrast CE-MRI phase (CE(1)) and multi-phases CE-MRI (CE(m)),respectively. With selected features using a forward stepwise regression, 23 machine learning classifiers based on CE(1) and CE(m) were constructed respectively for differentiating pCR and non-pCR patients. The performances of classifiers were assessed and compared by their accuracy, sensitivity, specificity and AUC (area under curve). The optimal machine learning classification was used to discriminate pCR vs non-pCR in mass and non-mass groups, uni-focal and unilateral multi-focal groups, respectively. RESULTS: For the task of pCR classification, 6 radiomic features from CE(1) and 6 from CE(m) were selected for the construction of machine learning models, respectively. The linear SVM based on CE(m) outperformed the logistic regression model using CE(1) with an AUC of 0.84 versus 0.69. In mass and non-mass enhancement groups, the accuracy of linear SVM achieved 84% and 76%. Whereas in unifocal and unilateral multifocal cases, 79% and 75% accuracy were achieved by linear SVM. CONCLUSION: Multiphases CE-MRI imaging may offer more heterogeneity information in the tumor and provide a non-invasive approach for early prediction of pCR to NAT in patients with HER2-positive invasive breast cancer.
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spelling pubmed-82539372021-07-06 Value of Machine Learning with Multiphases CE-MRI Radiomics for Early Prediction of Pathological Complete Response to Neoadjuvant Therapy in HER2-Positive Invasive Breast Cancer Li, Qin Xiao, Qin Li, Jianwei Wang, Zhe Wang, He Gu, Yajia Cancer Manag Res Original Research BACKGROUND: To assess the value of radiomics based on multiphases contrast-enhanced magnetic resonance imaging (CE-MRI) for early prediction of pathological complete response (pCR) to neoadjuvant therapy (NAT) in patients with human epithelial growth factor receptor 2 (HER2) positive invasive breast cancer. METHODS: A total of 127 patients with newly diagnosed primary HER2 positive invasive breast cancer underwent CE-MRI before NAT and performed surgery after NAT. Radiomic features were extracted from the 1(st) postcontrast CE-MRI phase (CE(1)) and multi-phases CE-MRI (CE(m)),respectively. With selected features using a forward stepwise regression, 23 machine learning classifiers based on CE(1) and CE(m) were constructed respectively for differentiating pCR and non-pCR patients. The performances of classifiers were assessed and compared by their accuracy, sensitivity, specificity and AUC (area under curve). The optimal machine learning classification was used to discriminate pCR vs non-pCR in mass and non-mass groups, uni-focal and unilateral multi-focal groups, respectively. RESULTS: For the task of pCR classification, 6 radiomic features from CE(1) and 6 from CE(m) were selected for the construction of machine learning models, respectively. The linear SVM based on CE(m) outperformed the logistic regression model using CE(1) with an AUC of 0.84 versus 0.69. In mass and non-mass enhancement groups, the accuracy of linear SVM achieved 84% and 76%. Whereas in unifocal and unilateral multifocal cases, 79% and 75% accuracy were achieved by linear SVM. CONCLUSION: Multiphases CE-MRI imaging may offer more heterogeneity information in the tumor and provide a non-invasive approach for early prediction of pCR to NAT in patients with HER2-positive invasive breast cancer. Dove 2021-06-28 /pmc/articles/PMC8253937/ /pubmed/34234550 http://dx.doi.org/10.2147/CMAR.S304547 Text en © 2021 Li et al. https://creativecommons.org/licenses/by-nc/3.0/This work is published and licensed by Dove Medical Press Limited. The full terms of this license are available at https://www.dovepress.com/terms.php and incorporate the Creative Commons Attribution – Non Commercial (unported, v3.0) License (http://creativecommons.org/licenses/by-nc/3.0/ (https://creativecommons.org/licenses/by-nc/3.0/) ). By accessing the work you hereby accept the Terms. Non-commercial uses of the work are permitted without any further permission from Dove Medical Press Limited, provided the work is properly attributed. For permission for commercial use of this work, please see paragraphs 4.2 and 5 of our Terms (https://www.dovepress.com/terms.php).
spellingShingle Original Research
Li, Qin
Xiao, Qin
Li, Jianwei
Wang, Zhe
Wang, He
Gu, Yajia
Value of Machine Learning with Multiphases CE-MRI Radiomics for Early Prediction of Pathological Complete Response to Neoadjuvant Therapy in HER2-Positive Invasive Breast Cancer
title Value of Machine Learning with Multiphases CE-MRI Radiomics for Early Prediction of Pathological Complete Response to Neoadjuvant Therapy in HER2-Positive Invasive Breast Cancer
title_full Value of Machine Learning with Multiphases CE-MRI Radiomics for Early Prediction of Pathological Complete Response to Neoadjuvant Therapy in HER2-Positive Invasive Breast Cancer
title_fullStr Value of Machine Learning with Multiphases CE-MRI Radiomics for Early Prediction of Pathological Complete Response to Neoadjuvant Therapy in HER2-Positive Invasive Breast Cancer
title_full_unstemmed Value of Machine Learning with Multiphases CE-MRI Radiomics for Early Prediction of Pathological Complete Response to Neoadjuvant Therapy in HER2-Positive Invasive Breast Cancer
title_short Value of Machine Learning with Multiphases CE-MRI Radiomics for Early Prediction of Pathological Complete Response to Neoadjuvant Therapy in HER2-Positive Invasive Breast Cancer
title_sort value of machine learning with multiphases ce-mri radiomics for early prediction of pathological complete response to neoadjuvant therapy in her2-positive invasive breast cancer
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8253937/
https://www.ncbi.nlm.nih.gov/pubmed/34234550
http://dx.doi.org/10.2147/CMAR.S304547
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