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Mathematical/computational challenges in creating deformable and probabilistic atlases of the human brain

机译:创建人脑可变形和概率图谱的数学/计算挑战

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摘要

Striking variations in brain structure, especially in the gyral patterns of the human cortex, present fundamental challenges in human brain mapping. Probabilistic brain atlases, which encode information on structural and functional variability in large human populations, are powerful research tools with broad applications. Knowledge‐based imaging algorithms can also leverage atlased information on anatomic variation. Applications include automated image labeling, pathology detection in individuals or groups, and investigating how regional anatomy is altered in disease, and with age, gender, handedness and other clinical or genetic factors. In this report, we illustrate some of the mathematical challenges involved in constructing population‐based brain atlases. A ‐ is constructed to represent the human brain in Alzheimer's disease (AD). Specialized strategies are developed for population‐based averaging of anatomy. Sets of high‐dimensional elastic mappings, based on the principles of continuum mechanics, reconfigure the anatomy of a large number of subjects in an anatomic image database. These mappings generate a local encoding of anatomic variability and are used to create a crisp anatomical image template with highly resolved structures in their mean spatial location. Specialized approaches are also developed to average cortical topography. Since cortical patterns are altered in a variety of diseases, gyral pattern matching is used to encode the magnitude and principal directions of local cortical variation. In the resulting cortical templates, subtle features emerge. Regional asymmetries appear that are not apparent in individual anatomies. Population‐based maps of cortical variation reveal a mosaic of variability patterns that segregate sharply according to functional specialization and cytoarchitectonic boundaries. Hum. Brain Mapping 9:81–92, 2000. © 2000 Wiley‐Liss, Inc.
机译:大脑结构的惊人变化,尤其是人类大脑皮层的回旋模式,对人类大脑映射提出了根本性挑战。概率大脑地图集可编码大量人群的结构和功能变异性信息,是功能广泛的强大研究工具。基于知识的成像算法还可以利用有关解剖变异的地图集信息。应用包括自动图像标记,个体或群体中的病理学检测,以及研究疾病中的区域解剖结构是如何变化的,以及年龄,性别,惯用性和其他临床或遗传因素的变化。在本报告中,我们说明了构建基于人群的脑图谱时涉及的一些数学难题。构造了一个‐以代表人类大脑患有阿尔茨海默氏病(AD)。针对基于人群的平均解剖学,开发了专门的策略。基于连续体力学原理的高维弹性映射集重新配置了解剖图像数据库中大量对象的解剖结构。这些映射生成解剖变异性的局部编码,并用于创建在其平均空间位置具有高度解析的结构的清晰的解剖图像模板。还开发了专门的方法来平均皮层地形。由于在各种疾病中皮质模式都会改变,因此回旋模式匹配可用于编码局部皮质变化的大小和主要方向。在最终的皮质模板中,出现了微妙的特征。出现局部不对称现象,在个别解剖结构中不明显。基于群体的皮质变异图显示出变异模式的镶嵌,这些变异根据功能专长和细胞构造边界而急剧分离。哼。 Brain Mapping 9:81–92,2000。©2000 Wiley-Liss,Inc.

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