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NeuroSoL: Automated classification of neurons using the sorted Laplacian of a graph

机译:NeuroSoL:使用图的排序拉普拉斯算子对神经元进行自动分类

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摘要

One of the most exciting open problems in biological image analysis is the categorization of neurons based on observed morphology. Complex arborization patterns, varied orientations, different sizes, nonidentical alignments of local branches act as barriers to a systematic and quantitative analysis of neurons. This open problem demands a refined approach to capture salient and robust, global and local features to compare digitally-traced 3D neuron atlases. We propose NeuroSoL to consolidate global as well as local morphological and geometrical features by leveraging a specialized graph framework. Specifically, without imposing any restriction on the structure and connectivity, we use fully-sorted and mixed-sorted Laplacians of the neuron graph and the corresponding complementary graph. For meaningful clustering of neurons, we also develop a similarity metric after retrieving optimal local alignment between the feature descriptors of two neurons. Results on neuron datasets show the efficacy of our approach over state-of-the-art techniques.
机译:生物图像分析中最令人兴奋的开放性问题之一是基于观察到的形态对神经元进行分类。复杂的树状结构模式,不同的方向,不同的大小,局部分支的不同排列方式会阻碍对神经元进行系统和定量的分析。这个开放性问题需要一种精妙的方法来捕获显着且健壮的全局和局部特征,以比较数字跟踪的3D神经元图集。我们建议NeuroSoL通过利用专门的图形框架来整合全局以及局部形态和几何特征。具体而言,在不对结构和连通性施加任何限制的情况下,我们使用神经元图和相应的互补图的完全分类和混合分类的拉普拉斯算子。为了有意义地聚集神经元,我们还检索了两个神经元的特征描述符之间的最佳局部比对后,开发了一种相似性度量。神经元数据集上的结果表明,我们的方法优于最新技术。

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