Dietzel M, Kaiser C, Pinker K, Wenkel E, Hammon M, Uder M, Baiti BB, Clauser P, Schulz-Wendtland R, Baltzer P (2017)
Publication Type: Journal article
Publication year: 2017
Book Volume: 12
Pages Range: 231-236
Journal Issue: 4
DOI: 10.1159/000480226
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).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 (?TV and ?TD). 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).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: ?TD), 68.6% (CG2, CG3/partial response: VAV), and 88.8% to predict TR (CG4/non-response: ?TV).Semi-quantitative automated analysis of breast MRI data enabled the prediction of tissue response to NAC.
APA:
Dietzel, M., Kaiser, C., Pinker, K., Wenkel, E., Hammon, M., Uder, M.,... Baltzer, P. (2017). Automated Semi-Quantitative Analysis of Breast MRI: Potential Imaging Biomarker for the Prediction of Tissue Response to Neoadjuvant Chemotherapy. Breast Care, 12(4), 231-236. https://doi.org/10.1159/000480226
MLA:
Dietzel, Matthias, et al. "Automated Semi-Quantitative Analysis of Breast MRI: Potential Imaging Biomarker for the Prediction of Tissue Response to Neoadjuvant Chemotherapy." Breast Care 12.4 (2017): 231-236.
BibTeX: Download