小鼠大脑三维神经元图像分割

Peng Wang, Mengya Chen
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引用次数: 0

摘要

神经元形态高度复杂,全脑图像巨大,神经图像中经常出现强噪声、不连续信号、信号相互干扰等现象。上述问题大大增加了神经元形态计算与分析的难度,因此神经元形态计算与分析被广泛认为是计算神经科学中最具挑战性的计算任务之一。本文介绍了一种端到端学习方法3D-segmentation-net,该方法可以从稀疏标注中自动分割三维神经元图像。在自动分割验证实验中,我们实现了平均IoU为0.86。该网络是从头开始训练的,尚未针对此应用程序进行优化。它适用于任何小鼠脑图像分割任务,实现了对海量神经图像的自动分割、跟踪、融合和实时手动修改一系列跟踪方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D neuronal image segmentation of the mouse brain
Neurons are highly morphologically complex, the whole brain image is huge, and strong noise, discontinuous signals, and mutual interference of signals often appear in neural images. The above problems have greatly increased the difficulty of neuron morphological calculation and analysis, so neuron morphology computation and analysis is widely regarded as one of the most challenging computational tasks in computational neuroscience. This paper introduces 3D-segmentation-net, an end-to-end learning method that can automatically segment 3D neuron images from sparse annotations. In automated segmentation validation experiments, we achieved an average IoU of 0.86. The network was trained from scratch and has not been optimized for this application. It is suitable for any mouse brain image segmentation task, and realizes automatic segmentation, tracking, fusion and real-time manual revision of a series of tracking schemes for massive neural images.
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