Diagnosising Helicobacter pylori using AutoEncoders and Limited Annotations through Anomalous Staining Patterns in IHC Whole Slide Images
Pau Cano, Eva Musulen, Debora Gil

TL;DR
This paper presents an autoencoder-based method for detecting Helicobacter pylori in histological images with limited annotations, achieving high accuracy and sensitivity, and serving as a support tool for pathologists.
Contribution
It introduces a novel autoencoder approach that effectively detects H. pylori using minimal annotated data, outperforming traditional classification methods.
Findings
91% accuracy in H. pylori detection
86% sensitivity achieved
0.97 AUC in ROC analysis
Abstract
Purpose: This work addresses the detection of Helicobacter pylori (H. pylori) in histological images with immunohistochemical staining. This analysis is a time demanding task, currently done by an expert pathologist that visually inspects the samples. Given the effort required to localise the pathogen in images, a limited number of annotations might be available in an initial setting. Our goal is to design an approach that, using a limited set of annotations, is capable of obtaining results good enough to be used as a support tool. Methods: We propose to use autoencoders to learn the latent patterns of healthy patches and formulate a specific measure of the reconstruction error of the image in HSV space. ROC analysis is used to set the optimal threshold of this measure and the percentage of positive patches in a sample that determines the presence of H. pylori. Results: Our method has…
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Taxonomy
TopicsHelicobacter pylori-related gastroenterology studies
MethodsSparse Evolutionary Training · Support Vector Machine
