MRI-based radiomic features for risk stratification of ductal carcinoma in situ in a multicenter setting (ECOG-ACRIN E4112 trial) Journal Article


Authors: Slavkova, K. P.; Kang, R.; Kazerouni, A. S.; Biswas, D.; Belenky, V.; Chitalia, R.; Horng, H.; Hirano, M.; Xiao, J.; Corsetti, R. L.; Javid, S. H.; Spell, D. W.; Wolff, A. C.; Sparano, J. A.; Khan, S. A.; Comstock, C. E.; Romanoff, J.; Gatsonis, C.; Lehman, C. D.; Partridge, S. C.; Steingrimsson, J.; Kontos, D.; Rahbar, H.
Article Title: MRI-based radiomic features for risk stratification of ductal carcinoma in situ in a multicenter setting (ECOG-ACRIN E4112 trial)
Abstract: Background: Ductal carcinoma in situ (DCIS) is a nonlethal, preinvasive breast cancer for which breast MRI is best suited for accurate disease extent characterization. DCIS is often overtreated, necessitating robust models for improved risk stratification. Purpose: To develop logistic regression models using clinical and MRI-based radiomic features of DCIS and to evaluate the performance of such models in predicting disease upstaging at surgery and DCIS score. Materials and Methods: This study is a secondary analysis of dynamic contrast-enhanced (DCE) MRI data from the Eastern Cooperative Oncology Group–American College of Radiology Imaging Network, or ECOG-ACRIN, E4112 trial. Primary analysis focused on predicting disease upstaging (n = 295), and secondary analysis focused on predicting DCIS score (n = 174). Radiologist-drawn lesion segmentations and publicly available Cancer Phenomics Toolkit, or CaPTk, software was used to compute 65 radiomic features. Participants were clustered into groups based on their radiomic features (ie, radiomic phenotypes), and principal component analysis was used to summarize the feature space. Clinical information and qualitative MRI features were available. Associations were tested using χ2 and likelihood ratio tests. Data were split into training and test sets with a 3:2 ratio, and model performance was assessed on the test set using the area under the receiver operating characteristic curve (AUC). Results: Data from 297 female participants with median age of 60 years (IQR, 51–67 years) were analyzed. Two radiomic phenotypes were identified that were associated with disease upstaging (P = .007). For predicting disease upstaging, the top three radiomic principal components combined with clinical and qualitative MRI predictors yielded the highest AUC of 0.77 (95% CI: 0.65, 0.88) among all tested models (P = .007), identifying 25% more true-negative (49 of 93 true-negative findings, 53% specificity) findings, compared with using clinical information alone (23 of 93 true-negative findings, 28% specificity). Radiomic models were not predictive of the DCIS score (P > .05). Conclusion: In patients with DCIS, combining radiomic metrics with clinical information improved prediction of disease upstaging but not DCIS score. ©RSNA, 2025.
Keywords: adult; aged; middle aged; major clinical study; clinical trial; histopathology; area under the curve; cancer risk; nuclear magnetic resonance imaging; magnetic resonance imaging; sensitivity and specificity; phenotype; breast; diagnostic imaging; breast neoplasms; retrospective study; necrosis; prediction; risk assessment; radiologist; multicenter study; breast tumor; scoring system; risk stratification; contrast medium; contrast media; dynamic contrast-enhanced magnetic resonance imaging; carcinoma, intraductal, noninfiltrating; receiver operating characteristic; secondary analysis; principal component analysis; clinical outcome; comedonecrosis; procedures; humans; human; female; article; radiomics; ductal breast carcinoma in situ; regression model; dcis score
Journal Title: Radiology
Volume: 315
Issue: 1
ISSN: 0033-8419
Publisher: Radiological Society of North America, Inc.  
Date Published: 2025-04-01
Start Page: e241628
Language: English
DOI: 10.1148/radiol.241628
PUBMED: 40167440
PROVIDER: scopus
DOI/URL:
Notes: Article -- Source: Scopus
Altmetric
Citation Impact
BMJ Impact Analytics
MSK Authors