Demystifying Brain Tumour Segmentation Networks: Interpretability and Uncertainty Analysis
Parth Natekar, Avinash Kori, Ganapathy Krishnamurthi

TL;DR
This paper investigates the interpretability and uncertainty of brain tumor segmentation neural networks, revealing their hierarchical and human-understandable internal concepts to enhance trust and integration into medical practice.
Contribution
It introduces methods to explain and visualize the internal workings of segmentation networks, highlighting their hierarchical organization and disentangled features.
Findings
Networks learn human-understandable concepts
Hierarchical approach to tumor localization
Uncertainty measures support model predictions
Abstract
The accurate automatic segmentation of gliomas and its intra-tumoral structures is important not only for treatment planning but also for follow-up evaluations. Several methods based on 2D and 3D Deep Neural Networks (DNN) have been developed to segment brain tumors and to classify different categories of tumors from different MRI modalities. However, these networks are often black-box models and do not provide any evidence regarding the process they take to perform this task. Increasing transparency and interpretability of such deep learning techniques are necessary for the complete integration of such methods into medical practice. In this paper, we explore various techniques to explain the functional organization of brain tumor segmentation models and to extract visualizations of internal concepts to understand how these networks achieve highly accurate tumor segmentations. We use…
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Taxonomy
TopicsCell Image Analysis Techniques · Explainable Artificial Intelligence (XAI) · Advanced Neural Network Applications
MethodsInterpretability
