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Comparing histological data from different brains: sources of error and strategies for minimizing them.

机译:比较来自不同大脑的组织学数据:错误来源和将其最小化的策略。

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The recent development of brain atlases with computer graphics templates, and of huge databases of neurohistochemical data on the internet, has forced a systematic re-examination of errors associated with comparing histological features between adjacent sections of the same brain, between brains treated in the same way, and between brains from groups treated in different ways. The long-term goal is to compare as accurately as possible a broad array of data from experimental brains within the framework of reference atlases. Main sources of error, each of which ideally should be measured and minimized, include intrinsic biological variation, linear and nonlinear distortion of histological sections, plane of section differences between each brain, section alignment problems, and sampling errors. These variables are discussed, along with approaches to error estimation and minimization in terms of a specific example-the distribution of neuroendocrine neurons in the rat paraventricular nucleus. Based on the strategy developed here, the main conclusion is that the best long-term solution is a high-resolution 3D computer graphics model of the brain that can be sliced in any plane and used as the framework for quantitative neuroanatomy, databases, knowledge management systems, and structure-function modeling. However, any approach to the automatic annotation of neuroanatomical data-relating its spatial distribution to a reference atlas-should deal systematically with these sources of error, which reduce localization reliability.
机译:具有计算机图形模板的脑图谱的最新发展以及互联网上大量神经组织化学数据数据库的发展,迫使系统地重新检查与比较同一大脑的相邻部分之间,同一治疗的大脑之间的组织学特征有关的错误。方式,以及来自不同组的大脑之间。长期目标是在参考图集的框架内尽可能准确地比较来自实验大脑的大量数据。错误的主要来源,在理想情况下应进行测量和最小化,包括固有的生物学差异,组织切片的线性和非线性失真,每个大脑之间的切片差异平面,切片对齐问题以及采样错误。讨论了这些变量,以及根据具体示例(大鼠脑室旁核中神经内分泌神经元的分布)进行错误估计和最小化的方法。根据此处制定的策略,主要结论是,最佳的长期解决方案是可以在任何平面上切片的高分辨率3D计算机大脑图形模型,并用作定量神经解剖学,数据库,知识管理的框架系统和结构功能建模。但是,任何将神经解剖数据自动标注(将其空间分布与参考图集相关联)的方法都应系统地处理这些误差源,从而降低定位可靠性。

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