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A deep learning (DL) network for 2D-based breast mass segmentation in unenhanced dedicated breast CT images was developed and validated, and its robustness in radiomic feature stability and diagnostic performance compared to manual annotations of multiple radiologists was investigated. 93 mass-like lesions were extensively augmented and used to train the network (n = 58 masses), which was then tested (n = 35 masses) against manual ground truth of a qualified breast radiologist with experience in breast CT imaging using the Conformity coefficient (with a value equal to 1 indicating a perfect performance). Stability and diagnostic power of 672 radiomic descriptors were investigated between the computerized segmentation, and 4 radiologists' annotations for the 35 test set cases. Feature stability and diagnostic performance in the discrimination between benign and malignant cases were quantified using intraclass correlation (ICC) and multivariate analysis of variance (MANOVA), performed for each segmentation case (4 radiologists and DL algorithm). DL-based segmentation resulted in a Conformity of 0.85 ± 0.06 against the annotated ground truth. For the stability analysis, although modest agreement was found among the four annotations performed by radiologists (Conformity 0.78 ± 0.03), over 90% of all radiomic features were found to be stable (ICC>0.75) across multiple segmentations. All MANOVA analyses were statistically significant (p ≤ 0.05), with all dimensions equal to 1, and Wilks' lambda ≤0.35. In conclusion, DL-based mass segmentation in dedicated breast CT images can achieve high segmentation performance, and demonstrated to provide stable radiomic descriptors with comparable discriminative power in the classification of benign and malignant tumors to expert radiologist annotation.
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http://dx.doi.org/10.1016/j.compbiomed.2020.103629 | DOI Listing |
JAMA Surg
September 2025
Department of Population Health, NYU Grossman School of Medicine, New York, New York.
ESMO Open
September 2025
Université libre de Bruxelles (ULB), Hôpital Universitaire de Bruxelles (H.U.B), Institut Jules Bordet, Bruxelles, Belgium. Electronic address:
Cyclin-dependent kinase 4 and 6 inhibitors (CDK4/6i), such as abemaciclib and ribociclib, have recently been incorporated as adjuvant strategy in combination with endocrine therapy (ET) for patients with hormone receptor-positive, human epidermal growth factor receptor 2-negative early breast cancer at higher risk of recurrence. However, despite a significant reduction in recurrence rates, a subset of patients still experiences distant metastatic spreading, with nearly 10% recurring during or shortly after adjuvant CDK4/6i completion, as observed in pivotal trials. To date, only one small retrospective study has described this emerging population while ongoing trials are not specifically addressing this scenario, leaving both the efficacy of postrelapse treatments and the biological background largely unknown.
View Article and Find Full Text PDFMagn Reson Med
September 2025
Department of Radiology, The Ohio State University, Columbus, Ohio, USA.
Purpose: Supine breast MRI has the potential to improve over standard prone breast magnetic resonance imaging (MRI) in terms of efficiency and image quality, image alignment with diagnostic and treatment procedures, and overall accessibility. This study aims to characterize potential technical challenges of imaging in the supine position: (i) field inhomogeneities, (ii) variations, (iii) respiratory-induced breast motion, and (iv) supine breast geometry.
Methods: Ten healthy subjects were scanned at 3T in both prone and supine positions to quantify and compare (i) and (ii) between both positions, and to assess (iii) in the supine position.
Med Phys
September 2025
Dept. of Medical Imaging, Radboudumc, Nijmegen, The Netherlands.
Purpose: Cascaded linear models are widely used for the development and optimization of x-ray imaging systems, yet no publicly available Python implementation currently exists. We introduce CASYMIR, a flexible and open-source Python package capable of modeling direct and indirect-conversion x-ray imaging detectors under various acquisition conditions.
Methods: We employed a modular software design with generalized frequency-domain expressions for each process in the detection chain, which can be implemented as serial or parallel blocks.
Bioengineering (Basel)
August 2025
Graduate School of Information Science, University of Hyogo, 7-1-28 Minatojima Minamimachi, Chuo-ku, Kobe-shi 650-0047, Hyogo, Japan.
Deep learning has achieved widespread adoption for medical image diagnosis, with extensive research dedicated to mammographic image analysis for breast cancer screening. This study investigates the hypothesis that incorporating region-of-interest (ROI) mask information for individual mammographic images during deep learning can improve the accuracy of benign/malignant diagnoses. Swin Transformer and ConvNeXtV2 deep learning models were used to evaluate their performance on the public VinDr and CDD-CESM datasets.
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