AI-based Anomaly Detection for Clinical-Grade Histopathological Diagnostics
Jonas Dippel, Niklas Preni{\ss}l, Julius Hense, Philipp Liznerski,, Tobias Winterhoff, Simon Schallenberg, Marius Kloft, Oliver Buchstab, David, Horst, Maximilian Alber, Lukas Ruff, Klaus-Robert M\"uller, Frederick, Klauschen

TL;DR
This study introduces a deep anomaly detection AI model trained on common gastrointestinal diseases that effectively identifies rare and diverse pathologies in histopathological images, enhancing diagnostic safety and AI adoption.
Contribution
The paper presents the first clinical application of AI-based anomaly detection in histopathology capable of detecting a wide range of rare diseases without specific training.
Findings
Achieved 95.0% AUROC in stomach biopsies
Achieved 91.0% AUROC in colon biopsies
Successfully generalized across scanners and hospitals
Abstract
While previous studies have demonstrated the potential of AI to diagnose diseases in imaging data, clinical implementation is still lagging behind. This is partly because AI models require training with large numbers of examples only available for common diseases. In clinical reality, however, only few diseases are common, whereas the majority of diseases are less frequent (long-tail distribution). Current AI models overlook or misclassify these diseases. We propose a deep anomaly detection approach that only requires training data from common diseases to detect also all less frequent diseases. We collected two large real-world datasets of gastrointestinal biopsies, which are prototypical of the problem. Herein, the ten most common findings account for approximately 90% of cases, whereas the remaining 10% contained 56 disease entities, including many cancers. 17 million histological…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Artificial Intelligence in Healthcare and Education · AI in cancer detection
