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DeepBouton: Automated Identification of Single-Neuron Axonal Boutons at the Brain-Wide Scale

机译:DeepBouton:在全脑范围内自动识别单神经元轴突性核纽

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摘要

Fine morphological reconstruction of individual neurons across the entire brain is essential for mapping brain circuits. Inference of presynaptic axonal boutons, as a key part of single-neuron fine reconstruction, is critical for interpreting the patterns of neural circuit wiring schemes. However, automated bouton identification remains challenging for current neuron reconstruction tools, as they focus mainly on neurite skeleton drawing and have difficulties accurately quantifying bouton morphology. Here, we developed an automated method for recognizing single-neuron axonal boutons in whole-brain fluorescence microscopy datasets. The method is based on deep convolutional neural networks and density-peak clustering. High-dimensional feature representations of bouton morphology can be learned adaptively through convolutional networks and used for bouton recognition and subtype classification. We demonstrate that the approach is effective for detecting single-neuron boutons at the brain-wide scale for both long-range pyramidal projection neurons and local interneurons.
机译:整个大脑中单个神经元的精细形态重建对于绘制大脑回路至关重要。作为单个神经元精细重建的关键部分,突触前轴突突的推断对于解释神经回路接线方案的模式至关重要。但是,对于当前的神经元重建工具,自动bouton识别仍然具有挑战性,因为它们主要关注神经突骨架图,并且难以准确量化bouton形态。在这里,我们开发了一种自动方法来识别全脑荧光显微镜数据集中的单个神经元轴突突。该方法基于深度卷积神经网络和密度峰聚类。可以通过卷积网络自适应地学习布顿形态的高维特征表示,并用于布顿识别和子类型分类。我们证明了该方法对于远程金字塔形投影神经元和局部中间神经元都可以有效地检测全脑范围内的单个神经元boutons。

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