Attention-enabled Explainable AI for Bladder Cancer Recurrence Prediction
Journal:
arXiv
Published Date:
Apr 30, 2025
Abstract
Non-muscle-invasive bladder cancer (NMIBC) is a relentless challenge in
oncology, with recurrence rates soaring as high as 70-80%. Each recurrence
triggers a cascade of invasive procedures, lifelong surveillance, and
escalating healthcare costs - affecting 460,000 individuals worldwide. However,
existing clinical prediction tools remain fundamentally flawed, often
overestimating recurrence risk and failing to provide personalized insights for
patient management. In this work, we propose an interpretable deep learning
framework that integrates vector embeddings and attention mechanisms to improve
NMIBC recurrence prediction performance. We incorporate vector embeddings for
categorical variables such as smoking status and intravesical treatments,
allowing the model to capture complex relationships between patient attributes
and recurrence risk. These embeddings provide a richer representation of the
data, enabling improved feature interactions and enhancing prediction
performance. Our approach not only enhances performance but also provides
clinicians with patient-specific insights by highlighting the most influential
features contributing to recurrence risk for each patient. Our model achieves
accuracy of 70% with tabular data, outperforming conventional statistical
methods while providing clinician-friendly patient-level explanations through
feature attention. Unlike previous studies, our approach identifies new
important factors influencing recurrence, such as surgical duration and
hospital stay, which had not been considered in existing NMIBC prediction
models.