首页> 外文期刊>Journal of Neuroscience Methods >Localization of presynaptic inputs on dendrites of individually labeled neurons in three dimensional space using a center distance algorithm.
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Localization of presynaptic inputs on dendrites of individually labeled neurons in three dimensional space using a center distance algorithm.

机译:使用中心距离算法,在三维空间中单个标记的神经元的树突上突触前输入的定位。

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The spatial distribution of synaptic inputs on the dendritic tree of a neuron can have significant influence on neuronal function. Consequently, accurate anatomical reconstructions of neuron morphology and synaptic localization are critical when modeling and predicting physiological responses of individual neurons. Historically, generation of three-dimensional (3D) neuronal reconstructions together with comprehensive mapping of synaptic inputs has been an extensive task requiring manual identification of putative synaptic contacts directly from tissue samples or digital images. Recent developments in neuronal tracing software applications have improved the speed and accuracy of 3D reconstructions, but localization of synaptic sites through the use of pre- and/or post-synaptic markers has remained largely a manual process. To address this problem, we have developed an algorithm, based on 3D distance measurements between putative pre-synaptic terminals and the post-synaptic dendrite, to automate synaptic contact detection on dendrites of individually labeled neurons from 3D immunofluorescence image sets. In this study, the algorithm is implemented with custom routines in Matlab, and its effectiveness is evaluated through analysis of primary sensory afferent terminals on motor neurons. Optimization of algorithm parameters enabled automated identification of synaptic contacts that matched those identified by manual inspection with low incidence of error. Substantial time savings and the elimination of variability in contact detection introduced by different users are significant advantages of this method.
机译:神经元树突树上突触输入的空间分布可能对神经元功能产生重大影响。因此,在建模和预测单个神经元的生理反应时,神经元形态和突触定位的准确解剖重建至关重要。从历史上看,生成3维(3D)神经元重构以及突触输入的全面映射一直是一项繁重的任务,需要直接从组织样本或数字图像中手动识别假定的突触接触。神经元追踪软件应用程序的最新发展提高了3D重建的速度和准确性,但是通过使用突触前和/或突触后标记对突触位点进行定位在很大程度上仍然是手动过程。为了解决这个问题,我们基于推定的突触前末端和突触后树突之间的3D距离测量,开发了一种算法,可自动对3D免疫荧光图像集中单个标记的神经元的树突进行突触接触检测。在这项研究中,该算法是用Matlab中的自定义例程实现的,并且通过分析运动神经元上的主要感觉传入终端来评估其有效性。通过优化算法参数,可以自动识别与人工检查相匹配的突触接触,且错误发生率低。此方法的显着优点是节省了大量时间,并消除了不同用户引入的接触检测的可变性。

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