Automated semi-quantitative analysis of breast MRI: Potential imaging biomarker for the prediction of tissue response to neoadjuvant chemotherapy Journal Article


Authors: Dietzel, M.; Kaiser, C.; Pinker, K.; Wenkel, E.; Hammon, M.; Uder, M.; Baiti, B. B.; Clauser, P.; Schulz-Wendtland, R.; Baltzer, P.
Article Title: Automated semi-quantitative analysis of breast MRI: Potential imaging biomarker for the prediction of tissue response to neoadjuvant chemotherapy
Abstract: Background: We aimed to investigate an automated semi-quantitative software as an imaging biomarker for the prediction of tissue response (TR) after completion of neoadjuvant chemotherapy (NAC). Methods: Breast magnetic resonance imaging (MRI) (1.5T, protocol according to international recommendations) of 67 patients with biopsy-proven invasive breast cancer were examined before and after NAC. After completion of NAC, histopathologic assessments of TR were classified according to the Chevallier grading system (CG1/4: full/non-responder; CG2/C3: partial responder). A commercially available fully automatic software (CADstream) extracted MRI parameters of tumor extension (tumor diameter/volume: TD/TV). Pre- versus post-NAC values were compared (ΔTV and ΔTD). Additionally, the software performed volumetric analyses of vascularization (VAV) after NAC. Accuracy of MRI parameters to predict TR were identified (cross-tabs, ROC, AUC, Kruskal-Wallis). Results: There were 37 (34.3%) CG1, 7 (6.5%) CG2, 53 (49.1%) CG3, and 11 (10.2%) CG4 lesions. The software reached area under the curve levels of 79.5% (CG1/complete response: ΔTD), 68.6% (CG2, CG3/partial response: VAV), and 88.8% to predict TR (CG4/non-response: ΔTV). Conclusion: Semi-quantitative automated analysis of breast MRI data enabled the prediction of tissue response to NAC. © 2017 S. Karger GmbH, Freiburg. Copyright: All rights reserved.
Keywords: breast mri; therapy response; imaging biomarkers; primary systemic chemotherapy
Journal Title: Breast Care
Volume: 12
Issue: 4
ISSN: 1661-3791
Publisher: S. Karger AG  
Date Published: 2017-08-01
Start Page: 231
End Page: 236
Language: English
DOI: 10.1159/000480226
PROVIDER: scopus
PMCID: PMC5649261
PUBMED: 29070986
DOI/URL:
Notes: Article -- Export Date: 2 October 2017 -- Source: Scopus
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