Evaluating the plausibility of synthetic images for improving automated endoscopic stone recognition
Ruben Gonzalez-Perez, Francisco Lopez-Tiro, Ivan Reyes-Amezcua,, Eduardo Falcon-Morales, Rosa-Maria Rodriguez-Gueant, Jacques Hubert, Michel, Daudon, Gilberto Ochoa-Ruiz, Christian Daul

TL;DR
This paper introduces a diffusion-based data augmentation method to generate synthetic kidney stone images, enhancing AI model performance for intra-operative endoscopic stone recognition and addressing dataset scarcity issues.
Contribution
The study presents a novel diffusion-based approach to generate plausible synthetic kidney stone images, improving model accuracy in endoscopic recognition tasks.
Findings
Synthetic images improved model accuracy by 10% over baseline.
Using synthetic images increased surface image recognition accuracy by 6%.
Synthetic data enhanced generalization to unseen intra-operative data.
Abstract
Currently, the Morpho-Constitutional Analysis (MCA) is the de facto approach for the etiological diagnosis of kidney stone formation, and it is an important step for establishing personalized treatment to avoid relapses. More recently, research has focused on performing such tasks intra-operatively, an approach known as Endoscopic Stone Recognition (ESR). Both methods rely on features observed in the surface and the section of kidney stones to separate the analyzed samples into several sub-groups. However, given the high intra-observer variability and the complex operating conditions found in ESR, there is a lot of interest in using AI for computer-aided diagnosis. However, current AI models require large datasets to attain a good performance and for generalizing to unseen distributions. This is a major problem as large labeled datasets are very difficult to acquire, and some classes of…
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Taxonomy
MethodsDiffusion
