GeoTop: Advancing Image Classification with Geometric-Topological Analysis
Mariem Abaach, Ian Morilla

TL;DR
GeoTop is a novel framework combining topological data analysis and geometric measures to improve diagnostic image classification, especially in distinguishing benign from malignant structures, with enhanced accuracy and interpretability.
Contribution
It introduces a mathematically rigorous method that unifies TDA and LKCs, providing interpretability and addressing topological equivalence in medical imaging.
Findings
Achieves 3.6% accuracy improvement in skin lesion classification
Reduces false positives and negatives by 15-18%
Processes large images efficiently in under 0.5 seconds
Abstract
A fundamental challenge in diagnostic imaging is the phenomenon of topological equivalence, where benign and malignant structures share global topology but differ in critical geometric detail, leading to diagnostic errors in both conventional and deep learning models. We introduce GeoTop, a mathematically principled framework that unifies Topological Data Analysis (TDA) and Lipschitz-Killing Curvatures (LKCs) to resolve this ambiguity. Unlike hybrid deep learning approaches, GeoTop provides intrinsic interpretability by fusing the capacity of persistent homology to identify robust topological signatures with the precision of LKCs in quantifying local geometric features such as boundary complexity and surface regularity. The framework's clinical utility is demonstrated through its application to skin lesion classification, where it achieves a consistent accuracy improvement of 3.6% and…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Clusterin in disease pathology · Cell Image Analysis Techniques
