用隐式和显式参数表示的三维纳米级脑细胞核包膜的形状分析

Q2 Engineering
Marco Agus , Maria Veloz Castillo , Javier F. Garnica Molina , Enrico Gobbetti , Heikki Lehväslaiho , Alex Morales Tapia , Pierre J. Magistretti , Markus Hadwiger , Corrado Calí
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引用次数: 8

摘要

细胞核形状分析在生物学和医学中变得越来越重要。最近的研究结果表明,细胞核形状和大小的巨大变化对许多生物过程具有重要影响。目前的分析技术包括自动检测和分割组织学和显微镜图像的方法,但大多是在二维中进行的。3D形状分析的方法,通过能够提供纳米级3D重建的新兴采集方法成为可能,仍然处于早期阶段,并且通常假设一个简单的球形。我们在这里介绍了一个框架,用于分析三维纳米级重建的脑细胞(主要是神经元)的细胞核,获得了半自动分割的电子显微照片。我们的方法考虑了两种参数表示:第一种是自定义隐式超二次方程,它特别适合于凸形状,而后者考虑了显式径向表示的球面谐波分解。从图像数据中提取核包络点云,将其拟合到参数化模型中,然后进行统计分析和形状比较。我们报告了从幼年大鼠体感觉皮层获得的121个脑细胞核的分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Shape analysis of 3D nanoscale reconstructions of brain cell nuclear envelopes by implicit and explicit parametric representations

Shape analysis of 3D nanoscale reconstructions of brain cell nuclear envelopes by implicit and explicit parametric representations

Shape analysis of cell nuclei is becoming increasingly important in biology and medicine. Recent results have identified that large variability in shape and size of nuclei has an important impact on many biological processes. Current analysis techniques involve automatic methods for detection and segmentation of histology and microscopy images, but are mostly performed in 2D. Methods for 3D shape analysis, made possible by emerging acquisition methods capable to provide nanometric-scale 3D reconstructions, are still at an early stage, and often assume a simple spherical shape. We introduce here a framework for analyzing 3D nanoscale reconstructions of nuclei of brain cells (mostly neurons), obtained by semiautomatic segmentation of electron micrographs. Our method considers two parametric representations: the first one customizes the implicit hyperquadricsformulation and it is particularly suited for convex shapes, while the latter considers a spherical harmonics decomposition of the explicit radial representation. Point clouds of nuclear envelopes, extracted from image data, are fitted to the parameterized models which are then used for performing statistical analysis and shape comparisons. We report on the analysis of a collection of 121 nuclei of brain cells obtained from the somatosensory cortex of a juvenile rat.

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来源期刊
Computers and Graphics: X
Computers and Graphics: X Engineering-Engineering (all)
CiteScore
3.30
自引率
0.00%
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审稿时长
20 weeks
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