Multi-class motion-based semantic segmentation for ureteroscopy and laser lithotripsy
Soumya Gupta, Sharib Ali, Louise Goldsmith, Ben Turney, Jens, Rittscher

TL;DR
This paper introduces a novel multi-class segmentation framework using CNNs for ureteroscopy and laser lithotripsy data, improving the accuracy of kidney stone and laser fiber detection amidst challenging visual conditions.
Contribution
It presents the first multi-class segmentation approach for ureteroscopy data, combining residual U-Net and DVFNet with novel loss and augmentation strategies.
Findings
Outperforms SOTA methods by 5.2% and 15.93% in DSC and JI.
Generalizes better on new clinical data with significant improvements.
Demonstrates robustness under challenging intraoperative visual conditions.
Abstract
Kidney stones represent a considerable burden for public health-care systems. Ureteroscopy with laser lithotripsy has evolved as the most commonly used technique for the treatment of kidney stones. Automated segmentation of kidney stones and laser fiber is an important initial step to performing any automated quantitative analysis of the stones, particularly stone-size estimation, that helps the surgeon decide if the stone requires more fragmentation. Factors such as turbid fluid inside the cavity, specularities, motion blur due to kidney movements and camera motion, bleeding, and stone debris impact the quality of vision within the kidney and lead to extended operative times. To the best of our knowledge, this is the first attempt made towards multi-class segmentation in ureteroscopy and laser lithotripsy data. We propose an end-to-end CNN-based framework for the segmentation of stones…
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Taxonomy
TopicsKidney Stones and Urolithiasis Treatments · Pediatric Urology and Nephrology Studies
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Concatenated Skip Connection · Max Pooling · Convolution · Dilated Convolution · Spatial Pyramid Pooling · Atrous Spatial Pyramid Pooling · U-Net
