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An open-source tool for analysis and automatic identification of dendritic spines using machine learning

机译:使用机器学习分析和自动识别树突棘的开源工具

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摘要

Synaptic plasticity, the cellular basis for learning and memory, is mediated by a complex biochemical network of signaling proteins. These proteins are compartmentalized in dendritic spines, the tiny, bulbous, post-synaptic structures found on neuronal dendrites. The ability to screen a high number of molecular targets for their effect on dendritic spine structural plasticity will require a high-throughput imaging system capable of stimulating and monitoring hundreds of dendritic spines in various conditions. For this purpose, we present a program capable of automatically identifying dendritic spines in live, fluorescent tissue. Our software relies on a machine learning approach to minimize any need for parameter tuning from the user. Custom thresholding and binarization functions serve to “clean” fluorescent images, and a neural network is trained using features based on the relative shape of the spine perimeter and its corresponding dendritic backbone. Our algorithm is rapid, flexible, has over 90% accuracy in spine detection, and bundled with our user-friendly, open-source, MATLAB-based software package for spine analysis.
机译:突触可塑性是学习和记忆的细胞基础,是由信号蛋白的复杂生化网络介导的。这些蛋白质在树突棘中间隔开,树突棘是在神经元树突中发现的微小的球根突触后结构。筛选大量分子靶标对树突棘结构可塑性的影响的能力将需要一种高通量成像系统,该系统能够在各种条件下刺激和监测数百个树突棘。为此,我们提出了一种能够自动识别活的荧光组织中的树突棘的程序。我们的软件依靠机器学习方法来最大程度地减少用户对参数调整的任何需求。自定义阈值和二值化功能用于“清洁”荧光图像,并使用基于脊柱周长及其相应的树突状主干的相对形状的特征来训练神经网络。我们的算法快速,灵活,在脊柱检测中的准确性超过90%,并且与我们友好的,基于MATLAB的开源,基于MATLAB的软件包捆绑在一起。

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