首页> 外文会议>IEEE International Symposium on Biomedical Imaging >Statistically-constrained robust diffeomorphic registration
【24h】

Statistically-constrained robust diffeomorphic registration

机译:统计约束鲁棒微分配准

获取原文

摘要

Accurate subject-to-template alignment requires deformation models with high degrees of freedom to account for the high anatomical variability. Without proper regularization, such models tend to match the images aggressively, often producing unrealistic transformations, especially in the presence of noise, or pathologies such as various types of lesions. To improve the robustness of deformable registration, we propose a novel framework, which makes use of statistical deformation models (SDMs) for diffeomorphisms. We present a general approach to constructing such SDMs, and detail how to use them for regularizing a given transformation. To preserve the diffeomorphic property, while making use of linear statistical models, we convert the deformation field into a stationary velocity field through the logarithm operator. To account for learning in a high-dimensional, low-sample size setting, we model the high-dimensional velocity field as a collection of mutually constrained local velocity fields. For each local field, a low-dimensional representation is learned using principal component analysis. To capture possible dependencies across local transformations, canonical correlation analysis is performed on each pair of local velocities in the learned low-dimensional space. Experiments on healthy brain images show that the model can capture the normative variation of subject-to-template deformation fields with sub-millimeter accuracy. The method is validated on simulated brain lesion images and is tested on real brain images with pathologies, producing significantly smoother and more robust results than its non-statistical counterpart.
机译:准确的对象到模板对齐要求具有高自由度的变形模型,以说明较高的解剖变异性。没有适当的正则化,这种模型往往会主动地匹配图像,经常产生不切实际的变换,尤其是在存在噪声或诸如各种类型的病变的病理情况下。为了提高可变形配准的鲁棒性,我们提出了一个新颖的框架,该框架利用统计变形模型(SDM)进行了亚纯性。我们提供了构建此类SDM的通用方法,并详细介绍了如何使用它们来规范化给定的转换。为了保留微分性质,在使用线性统计模型的同时,我们通过对数算子将变形场转换为平稳速度场。为了说明在高维,低样本量设置中的学习情况,我们将高维速度场建模为相互约束的局部速度场的集合。对于每个局部场,使用主成分分析来学习低维表示。为了捕获跨局部变换的可能依赖关系,对学习到的低维空间中的每对局部速度执行规范的相关性分析。在健康的大脑图像上进行的实验表明,该模型可以捕获亚毫米级精度的对象到模板变形场的规范变化。该方法已在模拟的脑部病变图像上进行了验证,并在具有病理学的真实脑部图像上进行了测试,与非统计方法相比,该方法产生的结果明显更平滑,更可靠。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号