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Automatic segmentation of the hippocampus and the amygdala driven by hybrid constraints: Method and validation

机译:由混合约束驱动的海马和杏仁核自动分割:方法和验证

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摘要

The segmentation from MRI of macroscopically ill-defined and highly variable structures, such as the hippocampus (Hc) and the amygdala (Am), requires the use of specific constraints. Here, we describe and evaluate a fast fully automatic hybrid segmentation that uses knowledge derived from probabilistic atlases and anatomical landmarks, adapted from a semi-automatic method. The algorithm was designed at the outset for application on images from healthy subjects and patients with hippocampal sclerosis. Probabilistic atlases were built from 16 healthy subjects, registered using SPM5. Local mismatch in the atlas registration step was automatically detected and corrected. Quantitative evaluation with respect to manual segmentations was performed on the 16 young subjects, with a leave-one-out strategy, a mixed cohort of 8 controls and 15 patients with epilepsy with variable degrees of hippocampal sclerosis, and 8 healthy subjects acquired on a 3 T scanner. Seven performance indices were computed, among which error on volumes RV and Dice overlap K. The method proved to be fast, robust and accurate. For Hc, results with the new method were: 16 young subjects {RV = 5%, K = 87%}; mixed cohort {RV = 8%, K = 84%}; 3 T cohort {RV = 9%, K = 85%}. Results were better than with atlas-based (thresholded probability map) or semi-automatic segmentations. Atlas mismatch detection and correction proved efficient for the most sclerotic Hc. For Am, results were: 16 young controls {RV = 7%, K = 85%}; mixed cohort {RV = 19%, K = 78%}; 3 T cohort {RV = 10%, K = 77%}. Results were better than with the semi-automatic segmentation, and were also better than atlas-based segmentations for the 16 young subjects.
机译:从MRI上对宏观定义不清且高度可变的结构(例如海马(Hc)和杏仁核(Am))进行分割需要使用特定的约束条件。在这里,我们描述和评估一种快速的全自动混合分割方法,该方法使用了从概率图集和解剖学界标中提取的知识,并采用了一种半自动方法。该算法从一开始就设计用于健康受试者和海马硬化患者的图像。概率图谱由16名健康受试者构建而成,并使用SPM5进行了注册。自动检测并纠正了图集配准步骤中的局部不匹配。对16名年轻受试者进行手动分割的定量评估,采用一劳永逸的策略,由8名对照和15名海马硬化程度不同的癫痫患者组成的混合队列,以及3名获得3名健康受试者T型扫描仪。计算了七个性能指标,其中体积RV和Dice的误差与K重叠。该方法被证明是快速,可靠和准确的。对于Hc,新方法的结果是:16名年轻受试者{RV = 5%,K = 87%};混合队列{RV = 8%,K = 84%}; 3个同类群组{RV = 9%,K = 85%}。结果优于基于图集(阈值概率图)或半自动分割的结果。事实证明,Atlas错配检测和校正对大多数硬化性Hc都是有效的。对于Am,结果是:16个年轻对照组{RV = 7%,K = 85%};混合队列{RV = 19%,K = 78%}; 3个同类群组{RV = 10%,K = 77%}。结果优于16个年轻受试者的半自动分割,也优于基于图集的分割。

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