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Transfer Learning for Effective Urolithiasis Detection.

Hyoung-Sun ChoiJae-Seoung KimTaeg-Keun WhangboKhae Hawn Kim
Published in: International neurourology journal (2023)
This research makes a meaningful contribution by accelerating the clinical implementation of urinary tract stone detection technology utilizing ResNet-50. The deep learning model can swiftly identify the presence or absence of urinary tract stones, thereby enhancing the efficiency of medical staff. We expect that this study will contribute to the advancement of medical imaging diagnostic technology based on deep learning.
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