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Accurate Automatic Detection of Densely Distributed Cell Nuclei in 3D Space

机译:在3D空间中精确自动检测密集分布的细胞核

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摘要

To measure the activity of neurons using whole-brain activity imaging, precise detection of each neuron or its nucleus is required. In the head region of the nematode C. elegans, the neuronal cell bodies are distributed densely in three-dimensional (3D) space. However, no existing computational methods of image analysis can separate them with sufficient accuracy. Here we propose a highly accurate segmentation method based on the curvatures of the iso-intensity surfaces. To obtain accurate positions of nuclei, we also developed a new procedure for least squares fitting with a Gaussian mixture model. Combining these methods enables accurate detection of densely distributed cell nuclei in a 3D space. The proposed method was implemented as a graphical user interface program that allows visualization and correction of the results of automatic detection. Additionally, the proposed method was applied to time-lapse 3D calcium imaging data, and most of the nuclei in the images were successfully tracked and measured.
机译:为了使用全脑活动成像来测量神经元的活动,需要精确检测每个神经元或其核。在线虫秀丽隐杆线虫的头部区域中,神经元细胞体密集地分布在三维(3D)空间中。但是,没有现有的图像分析计算方法可以足够准确地将它们分开。在这里,我们提出了一种基于等强度面曲率的高精度分割方法。为了获得精确的原子核位置,我们还开发了一种新的程序,用于最小二乘拟合与高斯混合模型。结合使用这些方法,可以准确检测3D空间中密集分布的细胞核。所提出的方法被实现为允许可视化和校正自动检测结果的图形用户界面程序。此外,该方法被应用于延时3D钙成像数据,并且成功跟踪和测量了图像中的大多数核。

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