Lesion detection in contrast enhanced spectral mammography
Cl\'ement Jailin (GE Healthcare), Pablo Milioni (GE Healthcare),, Zhijin Li (GE Healthcare), R\u{a}zvan Iordache (GE Healthcare), Serge Muller, (GE Healthcare)

TL;DR
This paper introduces a deep learning-based CAD system for lesion detection and classification in contrast-enhanced spectral mammography, trained on a large dataset, showing promising results comparable to clinical standards.
Contribution
First deep learning model for lesion detection and classification in CESM images, trained on a large, multi-center dataset, enhancing diagnostic support.
Findings
High sensitivity (>0.95) with 0.61 false positives per image for malignant lesion detection.
Model achieves AUC comparable to clinical CESM diagnostic results.
Potential to assist radiologists in biopsy decisions and complex lesion detection.
Abstract
Background \& purpose: The recent emergence of neural networks models for the analysis of breast images has been a breakthrough in computer aided diagnostic. This approach was not yet developed in Contrast Enhanced Spectral Mammography (CESM) where access to large databases is complex. This work proposes a deep-learning-based Computer Aided Diagnostic development for CESM recombined images able to detect lesions and classify cases. Material \& methods: A large CESM diagnostic dataset with biopsy-proven lesions was collected from various hospitals and different acquisition systems. The annotated data were split on a patient level for the training (55%), validation (15%) and test (30%) of a deep neural network with a state-of-the-art detection architecture. Free Receiver Operating Characteristic (FROC) was used to evaluate the model for the detection of 1) all lesions, 2) biopsied lesions…
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