Machine Learning and Knowledge Extraction (Sep 2024)

Correlating Histopathological Microscopic Images of Creutzfeldt–Jakob Disease with Clinical Typology Using Graph Theory and Artificial Intelligence

  • Carlos Martínez,
  • Susana Teijeira,
  • Patricia Domínguez,
  • Silvia Campanioni,
  • Laura Busto,
  • José A. González-Nóvoa,
  • Jacobo Alonso,
  • Eva Poveda,
  • Beatriz San Millán,
  • César Veiga

DOI
https://doi.org/10.3390/make6030099
Journal volume & issue
Vol. 6, no. 3
pp. 2018 – 2032

Abstract

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Creutzfeldt–Jakob disease (CJD) is a rare, degenerative, and fatal brain disorder caused by abnormal proteins called prions. This research introduces a novel approach combining AI and graph theory to analyze histopathological microscopic images of brain tissues affected by CJD. The detection and quantification of spongiosis, characterized by the presence of vacuoles in the brain tissue, plays a crucial role in aiding the accurate diagnosis of CJD. The proposed methodology employs image processing techniques to identify these pathological features in high-resolution medical images. By developing an automatic pipeline for the detection of spongiosis, we aim to overcome some limitations of manual feature extraction. The results demonstrate that our method correctly identifies and characterize spongiosis and allows the extraction of features that will help to better understand the spongiosis patterns in different CJD patients.

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