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Neuron Image Analyzer: Automated and Accurate Extraction of Neuronal Data from Low Quality Images

机译:Neuron Image Analyzer:从低质量图像中自动准确地提取神经元数据

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Image analysis software is an essential tool used in neuroscience and neural engineering to evaluate changes in neuronal structure following extracellular stimuli. Both manual and automated methods in current use are severely inadequate at detecting and quantifying changes in neuronal morphology when the images analyzed have a low signal-to-noise ratio (SNR). This inadequacy derives from the fact that these methods often include data from non-neuronal structures or artifacts by simply tracing pixels with high intensity. In this paper, we describe Neuron Image Analyzer (NIA), a novel algorithm that overcomes these inadequacies by employing Laplacian of Gaussian filter and graphical models (i.e., Hidden Markov Model, Fully Connected Chain Model) to specifically extract relational pixel information corresponding to neuronal structures (i.e., soma, neurite). As such, NIA that is based on vector representation is less likely to detect false signals (i.e., non-neuronal structures) or generate artifact signals (i.e., deformation of original structures) than current image analysis algorithms that are based on raster representation. We demonstrate that NIA enables precise quantification of neuronal processes (e.g., length and orientation of neurites) in low quality images with a significant increase in the accuracy of detecting neuronal changes post-stimulation.
机译:图像分析软件是神经科学和神经工程中用于评估细胞外刺激后神经元结构变化的重要工具。当前使用的手动和自动方法在分析图像的信噪比(SNR)低时都严重不足以检测和量化神经元形态的变化。这种不足源自以下事实:这些方法通常通过简单地跟踪高强度像素来包含非神经结构或伪像的数据。在本文中,我们描述了神经元图像分析器(NIA),该算法通过采用高斯滤波器的拉普拉斯算子和图形模型(即,隐马尔可夫模型,全连接链模型)来专门提取与神经元相对应的关系像素信息,从而克服了这些不足。结构(即躯体,神经突)。这样,与基于栅格表示的当前图像分析算法相比,基于矢量表示的NIA不太可能检测到错误信号(即非神经结构)或生成伪像信号(即原始结构变形)。我们证明了NIA可以在低质量图像中精确量化神经元过程(例如神经突的长度和方向),并显着提高刺激后检测神经元变化的准确性。

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