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Local manifold learning for multiatlas segmentation: application to hippocampal segmentation in healthy population and Alzheimer's disease

机译:局部流形学习用于多图谱分割:在健康人群和阿尔茨海默氏病海马分割中的应用

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Aims: Automated hippocampal segmentation is an important issue in many neuroscience studies. Methods: We presented and evaluated a novel segmentation method that utilized a manifold learning technique under the multiatlas-based segmentation scenario. A manifold representation of local patches for each voxel was achieved by applying an Isomap algorithm, which can then be used to obtain spatially local weights of atlases for label fusion. The obtained atlas weights potentially depended on all pairwise similarities of the population, which is in contrast to most existing label fusion methods that only rely on similarities between the target image and the atlases. The performance of the proposed method was evaluated for hippocampal segmentation and compared with two representative local weighted label fusion methods, that is, local majority voting and local weighted inverse distance voting, on an in-house dataset of 28 healthy adolescents (age range: 10-17 years) and two ADNI datasets of 100 participants (age range: 60-89 years). We also implemented hippocampal volumetric analysis and evaluated segmentation performance using atlases from a different dataset. Results: The median Dice similarities obtained by our proposed method were approximately 0.90 for healthy subjects and above 0.88 for two mixed diagnostic groups of ADNI subjects. Conclusion: The experimental results demonstrated that the proposed method could obtain consistent and significant improvements over label fusion strategies that are implemented in the original space.
机译:目的:海马自动分割是许多神经科学研究中的重要问题。方法:我们提出并评估了一种新颖的分割方法,该方法在基于多图集的分割场景下利用了多种学习技术。通过应用Isomap算法,可以获得每个体素的局部斑块的多种表示形式,然后可以将其用于获取地图集的空间局部权重以进行标签融合。获得的图谱权重可能取决于群体的所有成对相似性,这与大多数现有的仅依靠目标图像和图谱之间的相似性的标签融合方法相反。在28个健康青少年(年龄范围:10岁)的内部数据集上,评估了所提出方法的性能以进行海马分割,并与两种代表性的局部加权标签融合方法进行了比较,即局部多数投票和局部加权反距离投票。 -17岁)和两个100名参与者的ADNI数据集(年龄范围:60-89岁)。我们还实施了海马体积分析,并使用来自不同数据集的地图集评估了分割效果。结果:通过我们提出的方法获得的Dice相似度中值,对于健康受试者约为0.90,对于两个混合诊断ADNI受试者组,高于0.88。结论:实验结果表明,与在原始空间中实施的标签融合策略相比,该方法可以获得一致且显着的改进。

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