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Computational neuroanatomy using brain deformations: From brain parcellation to multivariate pattern analysis and machine learning

机译:使用脑部变形的计算神经解剖学:从脑部分割到多元模式分析和机器学习

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The past 20 years have seen a mushrooming growth of the field of computational neuroanatomy. Much of this work has been enabled by the development and refinement of powerful, high-dimensional image warping methods, which have enabled detailed brain parcellation, voxel-based morphometric analyses, and multivariate pattern analyses using machine learning approaches. The evolution of these 3 types of analyses over the years has overcome many challenges. We present the evolution of our work in these 3 directions, which largely follows the evolution of this field. We discuss the progression from single atlas, single-registration brain parcellation work to current ensemble-based parcellation; from relatively basic mass-univariate t-tests to optimized regional pattern analyses combining deformations and residuals; and from basic application of support vector machines to generative-discriminative formulations of multivariate pattern analyses, and to methods dealing with heterogeneity of neuroanatomical patterns. We conclude with discussion of some of the future directions and challenges. (C) 2016 Published by Elsevier B.V.
机译:在过去的20年中,计算神经解剖学领域迅猛发展。强大的高维图像变形方法的开发和完善使许多工作得以实现,这些方法实现了详细的脑部分割,基于体素的形态计量分析以及使用机器学习方法的多元模式分析。多年来,这三种类型的分析的发展克服了许多挑战。我们介绍了我们在这三个方向上的工作进展,这很大程度上遵循了该领域的发展。我们讨论了从单一图集,单一注册的大脑拼凑工作到当前基于整体的拼凑工作的进展;从相对基本的质量单变量t检验到结合变形和残差的优化区域模式分析;从支持向量机的基本应用到多元模式分析的生成判别式表述,以及涉及神经解剖学模式异质性的方法。最后,我们讨论了一些未来的方向和挑战。 (C)2016由Elsevier B.V.发布

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