论文标题
回到根源:使用基于图像的统计形状模型重建大而复杂的颅骨缺陷
Back to the Roots: Reconstructing Large and Complex Cranial Defects using an Image-based Statistical Shape Model
论文作者
论文摘要
即使对于专业设计师来说,为大而复杂的颅骨缺陷设计植入物也是一项艰巨的任务。目前在自动化设计过程的努力主要集中在卷积神经网络(CNN)上,这些神经网络(CNN)产生了最新的结果,结果是重建合成缺陷。但是,现有的基于CNN的方法很难转化为颅骨成形术中的临床实践,因为它们在复杂和不规则的颅骨缺陷方面的性能仍然不令人满意。在本文中,介绍了直接在头骨的分割口罩上建立的统计形状模型(SSM)。我们在几个颅植入剂设计任务上评估了SSM,结果表明,与基于CNN的方法相比,SSM在合成缺陷上次优,但它能够重建仅使用次要手动校正的大型和复杂的缺陷。经验丰富的神经外科医生检查和确保所得植入物的质量。相比之下,即使有大量数据增强,基于CNN的方法,对于这些情况,植入物的失败或产生了不足的植入物。代码可在https://github.com/jianningli/ssm上公开获取
Designing implants for large and complex cranial defects is a challenging task, even for professional designers. Current efforts on automating the design process focused mainly on convolutional neural networks (CNN), which have produced state-of-the-art results on reconstructing synthetic defects. However, existing CNN-based methods have been difficult to translate to clinical practice in cranioplasty, as their performance on complex and irregular cranial defects remains unsatisfactory. In this paper, a statistical shape model (SSM) built directly on the segmentation masks of the skulls is presented. We evaluate the SSM on several cranial implant design tasks, and the results show that, while the SSM performs suboptimally on synthetic defects compared to CNN-based approaches, it is capable of reconstructing large and complex defects with only minor manual corrections. The quality of the resulting implants is examined and assured by experienced neurosurgeons. In contrast, CNN-based approaches, even with massive data augmentation, fail or produce less-than-satisfactory implants for these cases. Codes are publicly available at https://github.com/Jianningli/ssm