CVLGIVOct 24, 2022

Boosting Kidney Stone Identification in Endoscopic Images Using Two-Step Transfer Learning

arXiv:2210.13654v114 citationsh-index: 56
Originality Incremental advance
AI Analysis

This work addresses the need for faster and more accessible kidney stone identification for urologists, though it is incremental in method.

The paper tackled automated kidney stone classification in endoscopic images by using a two-step transfer learning approach, which improved performance compared to training from scratch or using ImageNet weights.

Knowing the cause of kidney stone formation is crucial to establish treatments that prevent recurrence. There are currently different approaches for determining the kidney stone type. However, the reference ex-vivo identification procedure can take up to several weeks, while an in-vivo visual recognition requires highly trained specialists. Machine learning models have been developed to provide urologists with an automated classification of kidney stones during an ureteroscopy; however, there is a general lack in terms of quality of the training data and methods. In this work, a two-step transfer learning approach is used to train the kidney stone classifier. The proposed approach transfers knowledge learned on a set of images of kidney stones acquired with a CCD camera (ex-vivo dataset) to a final model that classifies images from endoscopic images (ex-vivo dataset). The results show that learning features from different domains with similar information helps to improve the performance of a model that performs classification in real conditions (for instance, uncontrolled lighting conditions and blur). Finally, in comparison to models that are trained from scratch or by initializing ImageNet weights, the obtained results suggest that the two-step approach extracts features improving the identification of kidney stones in endoscopic images.

Foundations

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