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Abstract - GUMP-Net: An interpretable model-data-driven intelligent algorithm for multi-class pelvic segmentation
Pelvic segmentation is one of the most important and fundamental research problems in precise and intelligent diagnosis and treatment, as well as surgical planning and navigation for pelvic fractures. By combining an improved geodesic active contour model with deep neural networks, we propose GUMP-Net, an interpretable model-data-driven intelligent algorithm for multi-class pelvic segmentation, in which three network modules are designed to constitute the overall segmentation framework together: the object detection module for automatic level set initialization, the edge detector module for learning an anatomy-aware edge detector function and the iteration module for deep level set evolution. Leveraging the advantages of level set representation and deep learning, GUMP-Net shows more accurate, robust and consistent segmentation performance, especially in small training data situation, compared to the state-of-the-art methods. Extensive experiments on pelvic datasets demonstrate the rationality and effectiveness of the proposed algorithm. Further experiments extended to ankle dataset indicate broader applications to other anatomies. The proposed algorithm not only provides an efficient segmentation method for complex fracture reduction, but also gives an interpretable geometric perspective for understanding deep learning segmentation.
GUMP-Net:一种可解释的模型-数据混合驱动的多类骨盆分割智能算法 /
GUMP-Net: An interpretable model-data-driven intelligent algorithm for multi-class pelvic segmentation
1️⃣ 一句话总结
本文提出了一种名为GUMP-Net的新型智能算法,通过将改进的几何活动轮廓模型与深度学习结合,实现了更准确、鲁棒且可解释的骨盆多部位自动分割,尤其在训练数据较少时表现优于现有方法,并有望推广到其他骨骼部位的分割任务。