[eng] —This thesis investigates the impact of spatial mask
transformations on radiomic feature importance and stability
in the context of Hepatocellular Carcinoma (HCC) imaging.
Radiomic features, derived from medical images, have become
critical tools in predicting patient outcomes, aiding in diagnosis,
and personalizing treatments. However, variations in segmentation masks, such as those introduced by different radiologists
or segmentation protocols, can alter the calculated features and
affect the performance of predictive models. The study applies
several spatial transformations, including dilation, translation,
rotation, and others, to simulate variations in segmentation
practices and assesses how these transformations influence radiomic feature importance, model performance, and feature
stability. Through a detailed analysis involving Random Forest
models, we observe significant shifts in feature importance, with
texture-based features becoming more dominant in transformed
models. Furthermore, the study reveals that shape-based features
exhibit the highest instability under dilation, while intensitybased features are particularly sensitive to translation. These
findings suggest that radiomic feature calculations are highly
dependent on the consistency of segmentation criteria, and any
differences in segmentation approaches must be considered when
developing predictive models. The study highlights the need
for robust feature selection methods and model generalization
strategies to ensure reliable clinical outcomes across different
imaging scenarios