首页> 外文期刊>The Journal of Comparative Neurology >Three-dimensional statistical modeling of neuronal populations: illustration with spatial localization of supernumerary neurons in the locus coeruleus of quaking mutant mice.
【24h】

Three-dimensional statistical modeling of neuronal populations: illustration with spatial localization of supernumerary neurons in the locus coeruleus of quaking mutant mice.

机译:神经元群体的三维统计建模:地震突变小鼠轨迹蓝斑中多余神经元的空间定位说明。

获取原文
获取原文并翻译 | 示例
           

摘要

An algorithm for the three-dimensional statistical representation of neuronal populations was designed and implemented. Using this algorithm a series of 3D models, calculated from repeated histological experiments, can be combined to provide a synthetic vision of a population of neurons taking into account biological and experimental variability. Based on the point process theory, our algorithm allows computation of neuronal density maps from which isodensity surfaces can be readily extracted and visualized as surface models revealing the statistical organization of the neuronal population under study. This algorithm was applied to the spatial distribution of locus coeruleus (LC) neurons of 30- and 90-day-old control and quaking mice. By combining 12 3D models of the LC, a region of the nucleus in which a subpopulation of neurons loses its noradrenergic phenotype between 30 and 90 days postnatally was demonstrated in control mice but not in quaking mice, leading to the hyperplasia previously reported in adult mutants. Altogether, this algorithm allows computation of 3D statistical and graphical models of neuronal populations, providing a contribution to quantitative 3D neuroanatomical modeling.
机译:设计并实现了一种用于神经元群体的三维统计表示的算法。使用此算法,可以将通过重复的组织学实验计算出的一系列3D模型组合在一起,以提供考虑到生物学和实验变异性的神经元群体的综合视野。基于点过程理论,我们的算法允许计算神经元密度图,从中可以轻松提取等密度面并将其可视化为表面模型,从而揭示正在研究的神经元群体的统计组织。该算法应用于30和90天大的对照组和地震小鼠的蓝斑(LC)神经元的空间分布。通过组合LC的12个3D模型,在对照小鼠中证实了神经元亚群在出生后30到90天之间失去其去甲肾上腺素能表型的细胞核区域,但在震颤小鼠中没有,导致先前在成人突变体中报道的增生。总而言之,该算法允许计算神经元群体的3D统计和图形模型,为定量3D神经解剖学建模做出了贡献。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号