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NeuronMetrics: Software for Semi-Automated Processing of Cultured-Neuron Images

机译:NeuronMetrics:半自动处理培养的神经元图像的软件

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摘要

Using primary cell culture to screen for changes in neuronal morphology requires specialized analysis software. We developed >NeuronMetrics™ for semi-automated, quantitative analysis of two-dimensional (2D) images of fluorescently labeled cultured neurons. It skeletonizes the neuron image using two complementary image-processing techniques, capturing fine terminal neurites with high fidelity. An algorithm was devised to span wide gaps in the skeleton. NeuronMetrics uses a novel strategy based on geometric features called faces to extract a branch-number estimate from complex arbors with numerous neurite-to-neurite contacts, without creating a precise, contact-free representation of the neurite arbor. It estimates total neurite length, branch number, primary neurite number, territory (the area of the convex polygon bounding the skeleton and cell body), and Polarity Index (a measure of neuronal polarity). These parameters provide fundamental information about the size and shape of neurite arbors, which are critical factors for neuronal function. NeuronMetrics streamlines optional manual tasks such as removing noise, isolating the largest primary neurite, and correcting length for self-fasciculating neurites. Numeric data are output in a single text file, readily imported into other applications for further analysis. Written as modules for ImageJ, NeuronMetrics provides practical analysis tools that are easy to use and support batch processing. Depending on the need for manual intervention, processing time for a batch of ~60 2D images is 1.0–2.5 hours, from a folder of images to a table of numeric data. NeuronMetrics’ output accelerates the quantitative detection of mutations and chemical compounds that alter neurite morphology in vitro, and will contribute to the use of cultured neurons for drug discovery.
机译:使用原代细胞培养物筛选神经元形态变化需要专门的分析软件。我们开发了> NeuronMetrics™用于荧光标记的培养神经元的二维(2D)图像的半自动化,定量分析。它使用两种互补的图像处理技术来使神经元图像骨骼化,从而以高保真度捕获精细的末端神经突。设计了一种算法来跨越骨骼中的巨大空白。 NeuronMetrics使用一种基于称为面孔的几何特征的新颖策略,从具有大量神经突到神经突接触的复杂心轴中提取分支数估计,而无需创建精确,无接触的神经突心轴表示。它估计了总的神经突长度,分支数,初级神经突数,区域(包围骨骼和细胞体的凸多边形的面积)和极性指数(神经元极性的量度)。这些参数提供有关神经突柄的大小和形状的基本信息,这些是神经元功能的关键因素。 NeuronMetrics简化了可选的手动任务,例如消除噪音,隔离最​​大的初级神经突和校正自聚焦神经突的长度。数值数据以单个文本文件输出,可轻松导入其他应用程序以进行进一步分析。 NeuronMetrics作为ImageJ的模块编写,提供了易于使用的实用分析工具,并支持批处理。根据手动干预的需要,大约60张2D图像的处理时间为1.0–2.5小时,从图像文件夹到数字数据表。 NeuronMetrics的输出加快了对体外改变神经突形态的突变和化学化合物的定量检测,并将有助于将培养的神​​经元用于药物发现。

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