2025-03-25T08:45:10Z
2025-03-25T08:45:10Z
2024
Imaging features (radiomics) have potential for predicting Triple Negative Breast Cancer and other subtypes using magnetic resonance images (MRI). This work uses 244 images from the Duke-Breast-Cancer-MRI dataset to investigate the complex interplay between radiomics feature stability, with respect to segmentation variability, and prediction results of machine learning models. Our analysis reveals that features demonstrating high stability across different segmentations tend to enhance model performance, whereas unstable features sensitive to small segmentation changes degrade predictive accuracy. This exploration underscores the importance of feature stability in the development of reliable models for breast cancer subtype classification.
Objeto de conferencia
Versión aceptada
Inglés
Càncer de mama; Imatges per ressonància magnètica; Aprenentatge automàtic; Breast cancer; Magnetic resonance imaging; Machine learning
SPIE
Versió postprint de la comunicació publicada a: https://doi.org/10.1117/12.3027015
Comunicació a: Proc. SPIE 13174, 17th International Workshop on Breast Imaging (IWBI 2024), 131741O (29 May 2024)
Proceedings SPIE
13174
https://doi.org/10.1117/12.3027015
(c) SPIE, 2024