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On the Complexity of Human Neuroanatomy at the Millimeter Morphome Scale: Developing Codes and Characterizing Entropy Indexed to Spatial Scale

机译:关于人类神经解剖学在毫米Morphome尺度上的复杂性:发展代码和表征索引到空间尺度的熵。

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In this work we devise a strategy for discrete coding of anatomical form as described by a Bayesian prior model, quantifying the entropy of this representation as a function of code rate (number of bits), and its relationship geometric accuracy at clinically relevant scales. We study the shape of subcortical gray matter structures in the human brain through diffeomorphic transformations that relate them to a template, using data from the Alzheimer's Disease Neuroimaging Initiative to train a multivariate Gaussian prior model. We find that the at 1 mm accuracy all subcortical structures can be described with less than 35 bits, and at 1.5 mm error all structures can be described with less than 12 bits. This work represents a first step towards quantifying the amount of information ordering a neuroimaging study can provide about disease status.
机译:在这项工作中,我们设计了一种由贝叶斯先验模型描述的解剖形式离散编码策略,量化了该表示形式的熵作为编码率(位数)及其在临床相关尺度下的几何精度关系的函数。我们使用来自阿尔茨海默氏病神经影像学计划的数据来训练多元高斯先验模型,通过将它们与模板相关联的变型转换来研究人脑中皮层下灰质结构的形状。我们发现,以1mm的精度可以用少于35位来描述所有皮层下结构,而以1.5mm的误差可以用少于12位来描述所有结构。这项工作代表了量化神经影像研究可以提供的有关疾病状态的信息量的第一步。

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