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Large-scale analyses of functional interactions in the human brain.

机译:人脑功能相互作用的大规模分析。

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摘要

A grand challenge in neuroscience is to understand how a human brain functions. Much previous research has focused on studying the activities of brain regions. However, the functional interactions between brain regions are not well understood. This dissertation focuses on computational methods to analyze data from functional magnetic resonance imaging (fMRI) scanners to study the functional interactions in the human brain.;This dissertation proposes, designs and implements efficient systems to conduct full correlation matrix analysis (FCMA) as an unbiased way to explore functional interactions in the human brain. Since a straightforward way to study FCMA would take years to complete one run with a typical neuroscience study dataset on a modern compute server, no previous attempt has been made in the past. This dissertation makes several contributions. First, we proposed and implemented parallel algorithms and optimizations on a multi-processor cluster, which improved FCMA computation by three orders of magnitude.;Second, we demonstrated that FCMA can effectively show functional interactions in the human brain by conducting a neuroscience study on an fMRI dataset. Our study successfully identified functional interactions between certain brain regions.;Third, we proposed and implemented optimization methods for FCMA for emerging many-core processors such as the IntelRTM Xeon(TM) Phi coprocessors and improved the performance of computing FCMA by another order of magnitude. On a 96-node Xeon Phi cluster, our system can finish an FCMA study with a typical dataset in minutes.;Finally, we proposed, designed and implemented a service for real-time, closed loop neuroscience studies. Our real-time FCMA can process and analyze brain volumes from multiple fMRI experiments on a 40-node compute cluster simultaneously and send the neurofeedback to each fMRI scanner over the Internet within 1.5 seconds. This system uses a novel method to improve the performance and utilization of compute nodes while meeting the real-time requirements in the presence of node failures.
机译:神经科学面临的一大挑战是了解人脑的功能。以前的许多研究都集中在研究大脑区域的活动。但是,人们对大脑区域之间的功能相互作用尚不甚了解。本文主要研究功能磁共振成像(fMRI)扫描仪数据的分析方法,以研究人脑中的功能相互作用。本文提出,设计和实现了高效的系统来进行无偏相关的全相关矩阵分析(FCMA)。探索人脑中功能相互作用的方法。由于研究FCMA的直接方法要花费数年时间才能在现代计算服务器上完成典型神经科学研究数据集的运行,因此以前没有做过任何尝试。论文做出了一些贡献。首先,我们在多处理器集群上提出并实施了并行算法和优化方法,将FCMA计算提高了三个数量级;其次,我们证明了FCMA可以通过对神经网络进行神经科学研究来有效显示人脑的功能相互作用。 fMRI数据集。我们的研究成功地确定了某些大脑区域之间的功能相互作用。第三,我们提出并实施了针对新兴多核处理器(如IntelRTM Xeon(TM)Phi协处理器)的FCMA优化方法,并将计算FCMA的性能提高了另一个数量级。 。在一个有96个节点的Xeon Phi集群上,我们的系统可以在几分钟内完成具有典型数据集的FCMA研究。最后,我们提出,设计并实现了实时,闭环神经科学研究的服务。我们的实时FCMA可以在40个节点的计算集群上同时处理和分析来自多个功能磁共振成像实验的大脑体积,并将神经反馈在1.5秒内通过互联网发送给每个功能磁共振成像扫描仪。该系统使用一种新颖的方法来提高计算节点的性能和利用率,同时在存在节点故障的情况下满足实时要求。

著录项

  • 作者

    Wang, Yida.;

  • 作者单位

    Princeton University.;

  • 授予单位 Princeton University.;
  • 学科 Computer science.;Neurosciences.;Psychobiology.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 171 p.
  • 总页数 171
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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