Institute of Physics at São Carlos, University of São Paulo, PO Box 369, São Carlos, SP, CEP 13.560-970, Brazil.
Neuroinformatics. 2012 Oct;10(4):379-89. doi: 10.1007/s12021-012-9150-5.
We report a morphology-based approach for the automatic identification of outlier neurons, as well as its application to the NeuroMorpho.org database, with more than 5,000 neurons. Each neuron in a given analysis is represented by a feature vector composed of 20 measurements, which are then projected into a two-dimensional space by applying principal component analysis. Bivariate kernel density estimation is then used to obtain the probability distribution for the group of cells, so that the cells with highest probabilities are understood as archetypes while those with the smallest probabilities are classified as outliers. The potential of the methodology is illustrated in several cases involving uniform cell types as well as cell types for specific animal species. The results provide insights regarding the distribution of cells, yielding single and multi-variate clusters, and they suggest that outlier cells tend to be more planar and tortuous. The proposed methodology can be used in several situations involving one or more categories of cells, as well as for detection of new categories and possible artifacts.
我们报告了一种基于形态的方法,用于自动识别异常神经元,并将其应用于拥有超过 5000 个神经元的 NeuroMorpho.org 数据库。在给定的分析中,每个神经元都由一个由 20 个测量值组成的特征向量表示,然后通过应用主成分分析将其投影到二维空间中。然后使用双变量核密度估计来获得细胞群的概率分布,从而将具有最高概率的细胞理解为原型,而将具有最小概率的细胞分类为异常值。该方法的潜力在涉及均匀细胞类型以及特定动物物种的细胞类型的几个案例中得到了说明。结果提供了有关细胞分布的见解,产生了单变量和多变量聚类,并且表明异常细胞往往更平面化和扭曲。所提出的方法可用于涉及一个或多个细胞类别的几种情况,以及用于检测新类别和可能的伪影。