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📄 Abstract
Abstract: Brain tumor resection is a highly complex procedure with profound
implications for survival and quality of life. Predicting patient outcomes is
crucial to guide clinicians in balancing oncological control with preservation
of neurological function. However, building reliable prediction models is
severely limited by the rarity of curated datasets that include both pre- and
post-surgery imaging, given the clinical, logistical and ethical challenges of
collecting such data. In this study, we develop a novel framework that
integrates explainable artificial intelligence (XAI) with neuroimaging-based
feature engineering for survival assessment in brain tumor patients. We curated
structural MRI data from 49 patients scanned pre- and post-surgery, providing a
rare resource for identifying survival-related biomarkers. A key methodological
contribution is the development of a global explanation optimizer, which
refines survival-related feature attribution in deep learning models, thereby
improving both the interpretability and reliability of predictions. From a
clinical perspective, our findings provide important evidence that survival
after oncological surgery is influenced by alterations in regions related to
cognitive and sensory functions. These results highlight the importance of
preserving areas involved in decision-making and emotional regulation to
improve long-term outcomes. From a technical perspective, the proposed
optimizer advances beyond state-of-the-art XAI methods by enhancing both the
fidelity and comprehensibility of model explanations, thus reinforcing trust in
the recognition patterns driving survival prediction. This work demonstrates
the utility of XAI-driven neuroimaging analysis in identifying survival-related
variability and underscores its potential to inform precision medicine
strategies in brain tumor treatment.