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基于微分同胚模板的海马体分割中的外观与不完全标签匹配

Appearance and incomplete label matching for diffeomorphic template based hippocampus segmentation.

作者信息

Pluta John, Avants Brian B, Glynn Simon, Awate Suyash, Gee James C, Detre John A

机构信息

Department of Radiology, University of Pennsylvania, Philadelphia, Pennsylvania 19104, USA.

出版信息

Hippocampus. 2009 Jun;19(6):565-71. doi: 10.1002/hipo.20619.

Abstract

We present a robust, high-throughput, semiautomated template-based protocol for segmenting the hippocampus in temporal lobe epilepsy. The semiautomated component of this approach, which minimizes user effort while maximizing the benefit of human input to the algorithm, relies on "incomplete labeling." Incomplete labeling requires the user to quickly and approximately segment a few key regions of the hippocampus through a user-interface. Subsequently, this partial labeling of the hippocampus is combined with image similarity terms to guide volumetric diffeomorphic normalization between an individual brain and an unbiased disease-specific template, with fully labeled hippocampi. We solve this many-to-few and few-to-many matching problem, and gain robustness to inter and intrarater variability and small errors in user labeling, by embedding the template-based normalization within a probabilistic framework that examines both label geometry and appearance data at each label. We evaluate the reliability of this framework with respect to manual labeling and show that it increases minimum performance levels relative to fully automated approaches and provides high inter-rater reliability. Thus, this approach does not require expert neuroanatomical training and is viable for high-throughput studies of both the normal and the highly atrophic hippocampus.

摘要

我们提出了一种用于颞叶癫痫中海马体分割的强大、高通量、基于模板的半自动协议。该方法的半自动组件依赖于“不完全标注”,它在最大限度减少用户工作量的同时,最大化了人类输入对算法的益处。不完全标注要求用户通过用户界面快速且大致地分割海马体的几个关键区域。随后,海马体的这种部分标注与图像相似性项相结合,以指导个体大脑与具有完全标注海马体的无偏疾病特异性模板之间的体积微分同胚归一化。我们通过将基于模板的归一化嵌入到一个概率框架中来解决这种多对少和少对多的匹配问题,并提高对评分者间和评分者内变异性以及用户标注中的小误差的鲁棒性,该概率框架在每个标注处检查标注几何形状和外观数据。我们评估了该框架相对于手动标注的可靠性,并表明它相对于全自动方法提高了最低性能水平,并提供了较高的评分者间可靠性。因此,这种方法不需要专业的神经解剖学训练,对于正常和高度萎缩海马体的高通量研究都是可行的。

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