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NeuroBFD: Size-independent automated classification of neurons using conditional distributions of morphological features

机译:neurobfd:使用形态特征的条件分布,神经元定制自动分类神经元

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Automated classification and characterization of digitally-traced neurons poses a challenge in constructing the neurome of human brain. The complex anatomical structure of each neuron causes observable morphological and geometrical variations between different cell types and within cell types. Given a graph model of a neuron, one of the major bottlenecks in encoding such variation followed by the within-cell and between-cell comparisons is the size of the neuron. In this work, we define size-independent statistical morphometrics as feature descriptors for each neuron. The customized morphometrics are built by extracting three raw features, which are bifurcation angle, branch fragmentation, and spatial arborization density of a neuron. Next, the local variation in each of the raw features is encoded by constructing a conditional distribution for that feature, which provides an effective and discriminatory feature assembly. In addition, the algorithm is automatic, scalable, and coordinate-independent. The comparative approach is shown to outperform the existing state-of-the-art methods.
机译:数字追踪神经元的自动分类和表征在构建人脑神经元方面存在挑战。每个神经元的复杂解剖结构导致不同细胞类型和细胞类型内的可观察到的形态学和几何变化。给定神经元的图形模型,编码这种变异后的主要瓶颈之一,然后是细胞内和细胞比较是神经元的大小。在这项工作中,我们将大小无关的统计形态量测定仪定义为每个神经元的特征描述符。通过提取三种原始特征来构建定制的形态化学,这些原始特征是神经元的分支角度,分支碎片和空间树脂植物密度。接下来,通过构建该特征的条件分布来编码每个原始特征的局部变化,其提供有效和辨别特征组件。此外,该算法是自动,可伸缩的和坐标无关的。比较方法显示出优于现有的最先进方法。

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