AI Article Synopsis

  • This study focuses on using radiomic analysis of contrast-enhanced mammographic images to distinguish between benign and malignant lesions through classification models based on a diverse data set.
  • It utilized CEM images from different equipment, extracting textural features with software and comparing segmentation techniques (freehand vs. ellipsoid).
  • The findings showed high diagnostic accuracy (>0.9), with ellipsoid segmentation being more effective, and suggested that using both mammographic views might not be necessary for improved accuracy.

Article Abstract

Objective: Radiomic analysis of contrast-enhanced mammographic (CEM) images is an emerging field. The aims of this study were to build classification models to distinguish benign and malignant lesions using a multivendor data set and compare segmentation techniques.

Methods: CEM images were acquired using Hologic and GE equipment. Textural features were extracted using MaZda analysis software. Lesions were segmented with freehand region of interest (ROI) and ellipsoid_ROI. Benign/Malignant classification models were built using extracted textural features. Subset analysis according to ROI and mammographic view was performed.

Results: 269 enhancing mass lesions (238 patients) were included. Oversampling mitigated benign/malignant imbalance. Diagnostic accuracy of all models was high (>0.9). Segmentation with ellipsoid_ROI produced a more accurate model than with FH_ROI, accuracy:0.947 0.914, AUC:0.974 0.86, < 0.05. Regarding mammographic view all models were highly accurate (0.947-0.955) with no difference in AUC (0.985-0.987). The CC-view model had the greatest specificity:0.962, the MLO-view and CC + MLO view models had higher sensitivity:0.954, < 0.05.

Conclusions: Accurate radiomics models can be built using a real-life multivendor data set segmentation with ellipsoid-ROI produces the highest level of accuracy. The marginal increase in accuracy using both mammographic views, may not justify the increased workload.

Advances In Knowledge: Radiomic modelling can be successfully applied to a multivendor CEM data set, ellipsoid_ROI is an accurate segmentation technique and it may be unnecessary to segment both CEM views. These results will help further developments aimed at producing a widely accessible radiomics model for clinical use.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10161926PMC
http://dx.doi.org/10.1259/bjr.20220980DOI Listing

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