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A Segmentation Scheme for Complex Neuronal Arbors and Application to Vibration Sensitive Neurons in the Honeybee Brain

机译:复杂神经元乔木的分割方案及其在蜜蜂脑中对振动敏感的神经元中的应用

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摘要

The morphology of a neuron is strongly related to its physiological properties, application of logical product and thus to information processing functions. Optical microscope images are widely used for extracting the structure of neurons. Although several approaches have been proposed to trace and extract complex neuronal structures from microscopy images, available methods remain prone to errors. In this study, we present a practical scheme for processing confocal microscope images and reconstructing neuronal structures. We evaluated this scheme using image data samples and associated “gold standard” reconstructions from the BigNeuron Project. In these samples, dendritic arbors belonging to multiple projection branches of the same neuron overlapped in space, making it difficult to automatically and accurately trace their structural connectivity. Our proposed scheme, which combines several software tools for image masking and filtering with an existing tool for dendritic segmentation and tracing, outperformed state-of-the-art automatic methods in reconstructing such neuron structures. For evaluating our scheme, we applied it to a honeybee local interneuron, DL-Int-1, which has complex arbors and is considered to be a critical neuron for encoding the distance information indicated in the waggle dance of the honeybee.
机译:神经元的形态与其生理特性,逻辑乘积的应用以及信息处理功能密切相关。光学显微镜图像被广泛用于提取神经元的结构。尽管已经提出了几种从显微镜图像中追踪和提取复杂神经元结构的方法,但是可用的方法仍然容易出错。在这项研究中,我们提出了一种用于处理共聚焦显微镜图像和重建神经元结构的实用方案。我们使用BigNeuron项目的图像数据样本和相关的“黄金标准”重建方案对该方案进行了评估。在这些样本中,属于同一神经元的多个投影分支的树突状乔木在空间上重叠,因此很难自动准确地追踪其结构连通性。我们提出的方案结合了几种用于图像掩蔽和滤波的软件工具,以及用于树突分割和追踪的现有工具,在重建此类神经元结构方面的性能超过了最新的自动方法。为了评估我们的方案,我们将其应用于蜜蜂局部中间神经元DL-Int-1,该神经元具有复杂的乔木,被认为是编码蜜蜂摇摆舞中指示的距离信息的关键神经元。

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