KidMesh: Computational Mesh Reconstruction for Pediatric Congenital Hydronephrosis Using Deep Neural Networks
Haoran Sun, Zhanpeng Zhu, Anguo Zhang, Bo Liu, Zhaohua Lin, Liqin Huang, Mingjing Yang, Lei Liu, Shan Lin, and Wangbin Ding

TL;DR
KidMesh is a deep learning-based method that automatically reconstructs pediatric hydronephrosis meshes from MRU images, enabling functional assessment without extensive post-processing or detailed annotations.
Contribution
This work introduces KidMesh, an end-to-end neural network that directly generates accurate CH meshes from MRU images, bypassing traditional segmentation and complex post-processing steps.
Findings
Reconstructed meshes in 0.4 seconds on average.
Achieved 86% Dice score against manual masks.
Meshes supported urodynamic simulations for clinical use.
Abstract
Pediatric congenital hydronephrosis (CH) is a common urinary tract disorder, primarily caused by obstruction at the renal pelvis-ureter junction. Magnetic resonance urography (MRU) can visualize hydronephrosis, including renal pelvis and calyces, by utilizing the natural contrast provided by water. Existing voxel-based segmentation approaches can extract CH regions from MRU, facilitating disease diagnosis and prognosis. However, these segmentation methods predominantly focus on morphological features, such as size, shape, and structure. To enable functional assessments, such as urodynamic simulations, external complex post-processing steps are required to convert these results into mesh-level representations. To address this limitation, we propose an end-to-end method based on deep neural networks, namely KidMesh, which could automatically reconstruct CH meshes directly from MRU.…
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Taxonomy
TopicsPediatric Urology and Nephrology Studies · Kidney Stones and Urolithiasis Treatments · Bladder and Urothelial Cancer Treatments
