Singh Pankaj, Negi Pooran, Laezza Fernanda, Papadakis Manos, Labate Demetrio
Department of Mathematics, University of Houston, 4800 Calhoun Rd, Houston, TX, 77004, USA.
Department of Pharmacology and Toxicology, University of Texas Medical Branch, 301 University Blvd, Galveston, TX, 77555, USA.
Neuroinformatics. 2016 Oct;14(4):465-77. doi: 10.1007/s12021-016-9306-9.
The spatial organization of neurites, the thin processes (i.e., dendrites and axons) that stem from a neuron's soma, conveys structural information required for proper brain function. The alignment, direction and overall geometry of neurites in the brain are subject to continuous remodeling in response to healthy and noxious stimuli. In the developing brain, during neurogenesis or in neuroregeneration, these structural changes are indicators of the ability of neurons to establish axon-to-dendrite connections that can ultimately develop into functional synapses. Enabling a proper quantification of this structural remodeling would facilitate the identification of new phenotypic criteria to classify developmental stages and further our understanding of brain function. However, adequate algorithms to accurately and reliably quantify neurite orientation and alignment are still lacking. To fill this gap, we introduce a novel algorithm that relies on multiscale directional filters designed to measure local neurites orientation over multiple scales. This innovative approach allows us to discriminate the physical orientation of neurites from finer scale phenomena associated with local irregularities and noise. Building on this multiscale framework, we also introduce a notion of alignment score that we apply to quantify the degree of spatial organization of neurites in tissue and cultured neurons. Numerical codes were implemented in Python and released open source and freely available to the scientific community.
神经突是从神经元胞体发出的细长突起(即树突和轴突),其空间组织传递着大脑正常功能所需的结构信息。大脑中神经突的排列、方向和整体几何形状会因健康和有害刺激而不断重塑。在发育中的大脑、神经发生过程中或神经再生过程中,这些结构变化是神经元建立轴突与树突连接能力的指标,而这些连接最终可发展为功能性突触。实现对这种结构重塑的恰当量化将有助于确定用于分类发育阶段的新表型标准,并加深我们对大脑功能的理解。然而,目前仍缺乏能够准确可靠地量化神经突方向和排列的适当算法。为了填补这一空白,我们引入了一种新颖的算法,该算法依赖于多尺度方向滤波器,旨在测量多个尺度上的局部神经突方向。这种创新方法使我们能够将神经突的物理方向与与局部不规则性和噪声相关的更精细尺度现象区分开来。基于这个多尺度框架,我们还引入了排列分数的概念,用于量化组织和培养神经元中神经突的空间组织程度。数值代码用Python实现,并作为开源代码发布,可供科学界免费使用。