电子显微镜下突触的自动分类和神经递质预测

Biological imaging Pub Date : 2022-07-29 eCollection Date: 2022-01-01 DOI:10.1017/S2633903X2200006X
Angela Zhang, S Shailja, Cezar Borba, Yishen Miao, Michael Goebel, Raphael Ruschel, Kerrianne Ryan, William Smith, B S Manjunath
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引用次数: 0

摘要

摘要本文提出了一种基于深度学习的工作流程,用于在原始肠索细胞(Ciona intestinalis)的电镜(EM)图像中检测突触并预测其神经递质类型。从EM图像中识别突触以构建神经元之间连接的完整地图是一个劳动密集型过程,需要大量的领域专业知识。突触分类的自动化将加速连接体的产生和分析。此外,在许多情况下,从突触特征推断神经元类型和功能是困难的。找到突触结构和功能之间的联系是充分理解连接体的重要一步。源自卷积神经网络的类激活图提供了基于细胞类型和功能的突触重要特征的见解。这项工作的主要贡献是通过神经递质类型的EM图像中的结构信息来区分突触。这使得能够预测Ciona神经元的神经递质类型,而这些类型以前是未知的。GitHub上提供了带有代码的预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic classification and neurotransmitter prediction of synapses in electron microscopy.

This paper presents a deep-learning-based workflow to detect synapses and predict their neurotransmitter type in the primitive chordate Ciona intestinalis (Ciona) electron microscopic (EM) images. Identifying synapses from EM images to build a full map of connections between neurons is a labor-intensive process and requires significant domain expertise. Automation of synapse classification would hasten the generation and analysis of connectomes. Furthermore, inferences concerning neuron type and function from synapse features are in many cases difficult to make. Finding the connection between synapse structure and function is an important step in fully understanding a connectome. Class Activation Maps derived from the convolutional neural network provide insights on important features of synapses based on cell type and function. The main contribution of this work is in the differentiation of synapses by neurotransmitter type through the structural information in their EM images. This enables the prediction of neurotransmitter types for neurons in Ciona, which were previously unknown. The prediction model with code is available on GitHub.

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