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Alignment and supervised learning with functional neuroimaging data.

机译:功能神经影像数据的对齐和监督学习。

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摘要

Cortical alignment is an essential link in the processing chain for establishing neurological relationships across multiple subjects. This thesis addresses multi-subject cortical alignment using functional magnetic resonance imaging (fMRI) data. Starting from a correlation-based alignment metric, we derive hyperalignment, a previously-established method that has demonstrated significant improvement over anatomical alignment through the use of a common, synchronous stimulus. We then introduce a regularized form of hyperalignment, revealing qualitative connections with canonical correlation analysis (CCA) and further improving hyperalignment.;Extending hyperalignment beyond inter-subject correlations, we then investigate hyperalignment via intra-subject correlations, yielding a functional connectivity hyperalignment (FCH) problem. Weakened by severe identifiability issues from a lack of synchrony, FCH grossly underperforms. We show, however, that with a small injection of synchrony, FCH can match the performance levels of anatomical alignment. Next, we address the scalability of hyperalignment, where we focus on an efficient means of hyperaligning the entire cortex. Reformulating the hyperalignment problem in terms of a voxel-derived feature set, which generally increases dimensionality, we form a kernelized hyperalignment procedure. Using positive definite kernels as generalized measures of similarity, kernel hyperalignment proves robust and competitive.;Beyond alignment, this thesis presents two supervised learning methods fit for fMRI data analysis. The first is linear regression with the Pairwise Elastic Net (PEN), a regularization term that can encode local and sparse groupings of the linear weights. We use PEN for binary classification with support vector machines (SVM) in the fMRI setting, demonstrating its ability to automatically select a sparse set of spatially-grouped voxels. The second method is VIBoost, a boosting-like algorithm emanating from variational inference. The VIBoost algorithm can generate a binary classifier along with meaningful statistics about the label noise. Such statistics are vital when there is a lack of ground truth, as in the case of fMRI data.
机译:皮质对齐是加工链中建立跨多个受试者的神经关系的必不可少的环节。本文利用功能磁共振成像(fMRI)数据解决了多对象皮层对齐问题。从基于相关的比对度量出发,我们推导出超对准,这是一种先前建立的方法,通过使用通用的同步刺激,该方法已显示出比解剖对准更显着的进步。然后,我们引入规整形式的超对齐方式,通过规范相关分析(CCA)揭示质性联系,并进一步改善超对齐方式;;将超对齐方式扩展到受试者间关联以外,然后通过受试者内部相关性研究超对齐方式,从而产生功能连接性超对齐方式(FCH) )问题。由于缺乏同步性,由于严重的可识别性问题而受到削弱,FCH的表现严重不佳。但是,我们证明,通过少量同步注入,FCH可以匹配解剖对准的性能水平。接下来,我们讨论超对齐的可伸缩性,在此我们专注于超对齐整个皮质的有效方法。根据体素派生的特征集(通常会增加维数)重新构造超对齐问题,我们形成了内核化超对齐过程。使用正定核作为相似性的通用度量,核超对齐被证明是稳健和有竞争力的。除了对齐,本文还提出了两种适合fMRI数据分析的监督学习方法。首先是使用成对弹性网(PEN)的线性回归,该正规化项可以对线性权重的局部和稀疏分组进行编码。在功能磁共振成像设置中,我们将PEN与支持向量机(SVM)一起用于二进制分类,这表明PEN能够自动选择稀疏的空间分组体素集。第二种方法是VIBoost,这是一种基于变分推理的增强算法。 VIBoost算法可以生成二进制分类器以及有关标签噪声的有意义的统计信息。当缺乏基本事实时(例如fMRI数据),此类统计至关重要。

著录项

  • 作者

    Lorbert, Alexander.;

  • 作者单位

    Princeton University.;

  • 授予单位 Princeton University.;
  • 学科 Engineering Electronics and Electrical.;Health Sciences Radiology.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 190 p.
  • 总页数 190
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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