Author:
Stoica George,Breaban Mihaela,Barbu Vlad
Publisher
Springer Nature Switzerland
Reference11 articles.
1. Lecture Notes in Computer Science;Ö Çiçek,2016
2. He, Y., et al.: Dense biased networks with deep priori anatomy and hard region adaptation: semi-supervised learning for fine renal artery segmentation. Med. Image Anal. 63, 101722 (2020)
3. He, Y., et al.: Meta grayscale adaptive network for 3D integrated renal structures segmentation. Med. Image Anal. 71, 102055 (2021)
4. Heller, N., et al.: The state of the art in kidney and kidney tumor segmentation in contrast-enhanced CT imaging: results of the KiTS19 challenge. Med. Image Anal. 67, 101821 (2021)
5. Heller, N., et al.: The KiTS19 challenge data: 300 kidney tumor cases with clinical context, CT semantic segmentations, and surgical outcomes. arXiv preprint arXiv:1904.00445 (2019)