首页> 外文期刊>Frontiers in Neuroanatomy >A three-dimensional image processing program for accurate, rapid, and semi-automated segmentation of neuronal somata with dense neurite outgrowth
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A three-dimensional image processing program for accurate, rapid, and semi-automated segmentation of neuronal somata with dense neurite outgrowth

机译:三维图像处理程序,用于精确,快速和半自动化的神经突状体密集密集神经突生长的分割

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Three-dimensional (3-D) image analysis techniques provide a powerful means to rapidly and accurately assess complex morphological and functional interactions between neural cells. Current software-based identification methods of neural cells generally fall into two applications: (1) segmentation of cell nuclei in high-density constructs or (2) tracing of cell neurites in single cell investigations. We have developed novel methodologies to permit the systematic identification of populations of neuronal somata possessing rich morphological detail and dense neurite arborization throughout thick tissue or 3-D in vitro constructs. The image analysis incorporates several novel automated features for the discrimination of neurites and somata by initially classifying features in 2-D and merging these classifications into 3-D objects; the 3-D reconstructions automatically identify and adjust for over and under segmentation errors. Additionally, the platform provides for software-assisted error corrections to further minimize error. These features attain very accurate cell boundary identifications to handle a wide range of morphological complexities. We validated these tools using confocal z-stacks from thick 3-D neural constructs where neuronal somata had varying degrees of neurite arborization and complexity, achieving an accuracy of ≥95%. We demonstrated the robustness of these algorithms in a more complex arena through the automated segmentation of neural cells in ex vivo brain slices. These novel methods surpass previous techniques by improving the robustness and accuracy by: (1) the ability to process neurites and somata, (2) bidirectional segmentation correction, and (3) validation via software-assisted user input. This 3-D image analysis platform provides valuable tools for the unbiased analysis of neural tissue or tissue surrogates within a 3-D context, appropriate for the study of multi-dimensional cell-cell and cell-extracellular matrix interactions.
机译:三维(3-D)图像分析技术为快速准确地评估神经细胞之间复杂的形态和功能相互作用提供了强大的手段。当前基于软件的神经细胞识别方法通常可分为两种应用:(1)高密度构建体中的细胞核分割或(2)在单细胞研究中追踪神经突。我们已经开发出新颖的方法,可以系统地鉴定在整个厚组织或3-D体外构建物中具有丰富的形态学细节和密集的轴突树状化的神经元躯体。图像分析通过先对二维特征进行分类并将这些分类合并为3-D对象,从而结合了多种新颖的自动特征来区分神经突和躯体。 3-D重建会自动识别并调整分割错误。此外,该平台还提供了软件辅助的错误纠正功能,以进一步减少错误。这些特征获得非常准确的细胞边界识别,以处理广泛的形态复杂性。我们使用厚的3-D神经构造的共聚焦z堆栈对这些工具进行了验证,这些构造的神经元躯体具有不同程度的神经突状树突和复杂性,从而达到了≥95%的准确度。我们通过离体脑切片中神经细胞的自动分割,证明了这些算法在更复杂的领域中的鲁棒性。这些新颖的方法通过以下方面的改进来提高鲁棒性和准确性,从而超越了先前的技术:(1)处理神经突和躯体的能力;(2)双向分割校正;(3)通过软件辅助的用户输入进行验证。这个3-D图像分析平台为在3-D上下文中对神经组织或组织替代物进行无偏分析提供了有价值的工具,适用于多维细胞-细胞和细胞-细胞外基质相互作用的研究。

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