Radiomic analysis in contrast-enhanced mammography using a multivendor data set: accuracy of models according to segmentation techniques

Author:

Savaridas Sarah L12,Agrawal Utkarsh3,Fagbamigbe Adeniyi Francis45,Tennant Sarah L6,McCowan Colin3

Affiliation:

1. School of Medicine, University of Dundee, Dundee, Scotland

2. Ninewells Hospital, NHS Tayside, Dundee, United Kingdom

3. School of Medicine, University of St. Andrews, St. Andrews, Scotland

4. Department of Epidemiology and Medical Statistics, University of Ibadan, Ibadan, Nigeria

5. Institute of Applied Health Sciences, University of Aberdeen, Aberdeen, United Kingdom

6. Nottingham Breast Institute, Nottingham University Hospitals NHS Trust, Nottingham, England

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 vs 0.914, AUC:0.974 vs 0.86, p < 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, p < 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.

Publisher

Oxford University Press (OUP)

Subject

Radiology, Nuclear Medicine and imaging,General Medicine

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