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Texture Analysis with 3.0-T MRI for Association of Response to Neoadjuvant Chemotherapy in Breast Canceropen access

Authors
Eun, Na LaeKang, DaesungSon, Eun JuPark, Jeong SeonYouk, Ji HyunKim, Jeong-AhGweon, Hye Mi
Issue Date
Jan-2020
Publisher
RADIOLOGICAL SOC NORTH AMERICA
Citation
RADIOLOGY, v.294, no.1, pp.31 - 41
Indexed
SCIE
SCOPUS
Journal Title
RADIOLOGY
Volume
294
Number
1
Start Page
31
End Page
41
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/146328
DOI
10.1148/radiol.2019182718
ISSN
0033-8419
Abstract
Background: Previous studies have suggested that texture analysis is a promising tool in the diagnosis, characterization, and assessment of treatment response in various cancer types. Therefore, application of texture analysis may be helpful for early prediction of pathologic response in breast cancer. Purpose: To investigate whether texture analysis of features from MRI is associated with pathologic complete response (pCR) to neoadjuvant chemotherapy (NAC) in breast cancer. Materials and Methods: This retrospective study included 136 women (mean age, 47.9 years; range, 31-70 years) who underwent NAC and subsequent surgery for breast cancer between January 2012 and August 2017. Patients were monitored with 3.0-T MRI before(pretreatment) and after (midtreatment) three or four cycles of NAC. Texture analysis was performed at pre- and midtreatment T2-weighted MRI, contrast material-enhanced T1-weighted MRI, diffusion-weighted MRI, and apparent diffusion coefficient (ADC)mapping by using commercial software. A random forest method was applied to build a predictive model for classifying those with pCR with use of texture parameters. Diagnostic performance for predicting pCR was assessed and compared with that of six other machine learning classifiers (adaptive boosting, decision tree, k-nearest neighbor, linear support vector machine, naive Bayes, and linear discriminant analysis) by using the Wald test and DeLong method. Results: Forty of the 136 patients (29%) achieved pCR after NAC. In the prediction of pCR, the random forest classifier showed the lowest diagnostic performance with pretreatment ADC (area under the receiver operating characteristic curve [AUC], 0.53;95% confidence interval: 0.44, 0.61) and the highest diagnostic performance with midtreatment contrast-enhanced T1-weightedMRI (AUC, 0.82; 95% confidence interval: 0.74, 0.88) among pre- and midtreatment T2-weighted MRI, contrast-enhanced T1-weightedMRI, diffusion-weighted MRI, and ADC mapping. Conclusion: Texture parameters using a random forest method of contrast-enhanced T1-weighted MRI at midtreatment of neoadjuvant chemotherapy were valuable and associated with pathologic complete response in breast cancer.
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