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Neuron recognition by parallel Potts segmentation.

机译:通过并行Potts分割进行神经元识别。

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摘要

Identifying neurons and their spatial coordinates in images of the cerebral cortex is a necessary step in the quantitative analysis of spatial organization in the brain. This is especially important in the study of Alzheimer's disease (AD), in which spatial neuronal organization and relationships are highly disrupted because of neuronal loss. To automate neuron recognition by using high-resolution confocal microscope images from human brain tissue, we propose a recognition method based on statistical physics that consists of image preprocessing, parallel image segmentation, and cluster selection on the basis of shape, optical density, and size. We segment a preprocessed digital image into clusters by applying Monte Carlo simulations of a q-state inhomogeneous Potts model. We then select the range of Potts segmentation parameters to yield an ideal recognition of simplified objects in the test image. We apply our parallel segmentation method to control individuals and to AD patients and achieve recognition of 98% (for a control) and 93% (for an AD patient), with at most 3% false clusters.
机译:识别大脑皮层图像中的神经元及其空间坐标是定量分析大脑空间组织的必要步骤。这在阿尔茨海默氏病(AD)研究中尤为重要,在该研究中,由于神经元丢失,空间神经元的组织和关系被高度破坏。为了使用来自人脑组织的高分辨率共聚焦显微镜图像实现神经元识别的自动化,我们提出了一种基于统计物理学的识别方法,该方法包括图像预处理,平行图像分割以及基于形状,光密度和大小的聚类选择。我们通过应用q状态不均匀Potts模型的蒙特卡罗模拟将预处理的数字图像划分为群集。然后,我们选择Potts分割参数的范围以对测试图像中的简化对象产生理想的识别。我们将并行分割方法应用于对照个体和AD患者,并获得98%(对于对照)和93%(对于AD患者)的识别,最多可识别3%的假簇。

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