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首页> 外文期刊>NeuroImage >Anatomically constrained region deformation for the automated segmentation of the hippocampus and the amygdala: Method and validation on controls and patients with Alzheimer's disease.
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Anatomically constrained region deformation for the automated segmentation of the hippocampus and the amygdala: Method and validation on controls and patients with Alzheimer's disease.

机译:用于海马和杏仁核自动分割的解剖学约束区域变形:方法和对对照组和阿尔茨海默氏病患者的验证。

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摘要

We describe a new algorithm for the automated segmentation of the hippocampus (Hc) and the amygdala (Am) in clinical Magnetic Resonance Imaging (MRI) scans. Based on homotopically deforming regions, our iterative approach allows the simultaneous extraction of both structures, by means of dual competitive growth. One of the most original features of our approach is the deformation constraint based on prior knowledge of anatomical features that are automatically retrieved from the MRI data. The only manual intervention consists of the definition of a bounding box and positioning of two seeds; total execution time for the two structures is between 5 and 7 min including initialisation. The method is evaluated on 16 young healthy subjects and 8 patients with Alzheimer's disease (AD) for whom the atrophy ranged from limited to severe. Three aspects of the performances are characterised for validating the method: accuracy (automated vs. manual segmentations), reproducibility of the automated segmentation and reproducibility of the manual segmentation. For 16 young healthy subjects, accuracy is characterised by mean relative volume error/overlap/maximal boundary distance of 7%/84%/4.5 mm for Hc and 12%/81%/3.9 mm for Am; for 8 Alzheimer's disease patients, it is 9%/84%/6.5 mm for Hc and 15%/76%/4.5 mm for Am. We conclude that the performance of this new approach in data from healthy and diseased subjects in terms of segmentation quality, reproducibility and time efficiency compares favourably with that of previously published manual and automated segmentation methods. The proposed approach provides a new framework for further developments in quantitative analyses of the pathological hippocampus and amygdala in MRI scans.
机译:我们描述了一种新的算法,用于在临床磁共振成像(MRI)扫描中对海马(Hc)和杏仁核(Am)进行自动分割。基于同位异形区域,我们的迭代方法允许通过双重竞争性增长同时提取两个结构。我们方法的最原始特征之一是基于从MRI数据自动检索的解剖特征的先验知识的变形约束。唯一的人工干预包括定义边界框和放置两个种子。包括初始化在内,这两个结构的总执行时间为5至7分钟。对16名年轻健康受试者和8名萎缩程度从严重到严重的阿尔茨海默氏病(AD)患者进行了评估。为验证该方法的性能,从三个方面进行了描述:准确性(自动分割与手动分割),自动分割的可重复性和手动分割的可重复性。对于16名年轻健康受试者,准确度的特征是Hc的平均相对体积误差/重叠/最大边界距离为7%/ 84%/ 4.5 mm,Am的平均相对体积误差/重叠/最大边界距离为12%/ 81%/ 3.9 mm;对于8名阿尔茨海默氏病患者,Hc为9%/ 84%/ 6.5 mm,Am为15%/ 76%/ 4.5 mm。我们得出结论,在分割质量,可重复性和时间效率方面,该新方法在来自健康和患病受试者的数据中的性能与以前发布的手动和自动分割方法相比具有优势。所提出的方法为在MRI扫描中对病理性海马和杏仁核进行定量分析提供了新的框架。

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