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Modeling time-varying networks with applications to neural flow and genetic regulation.

机译:建模时变网络,并将其应用于神经流和遗传调控。

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摘要

Many biological processes are effectively modeled as networks, but a frequent assumption is that these networks do not change during data collection. However, that assumption does not hold for many phenomena, such as neural growth during learning or changes in genetic regulation during cell differentiation. Approaches are needed that explicitly model networks as they change in time and that characterize the nature of those changes.;In this work, we develop a new class of graphical models in which the conditional dependence structure of the underlying data-generation process is permitted to change over time. We first present the model, explain how to derive it from Bayesian networks, and develop an efficient MCMC sampling algorithm that easily generalizes under varying levels of uncertainty about the data generation process. We then characterize the nature of evolving networks in several biological datasets.;We initially focus on learning how neural information flow networks change in songbirds with implanted electrodes. We characterize how they change in response to different sound stimuli and during the process of habituation. We continue to explore the neurobiology of songbirds by identifying changes in neural information flow in another habituation experiment using fMRI data. Finally, we briefly examine evolving genetic regulatory networks involved in Drosophila muscle differentiation during development.;We conclude by describing experimental methods for testing some of our results and suggesting new experimental directions and statistical extensions to the model for predicting novel neural flow results.
机译:许多生物过程被有效地建模为网络,但是经常假设这些网络在数据收集过程中不会改变。但是,该假设不适用于许多现象,例如学习过程中的神经生长或细胞分化过程中遗传调控的变化。需要一些方法来对网络随时间的变化进行显式建模,并表征这些变化的性质。在这项工作中,我们开发了一类新的图形模型,其中允许基础数据生成过程的条件依存结构用于随着时间的推移而变化。我们首先介绍该模型,解释如何从贝叶斯网络中导出该模型,并开发一种有效的MCMC采样算法,该算法可以轻松地在数据生成过程的各种不确定性水平下进行概括。然后,我们在几个生物学数据集中描述了进化网络的性质。我们最初专注于学习神经信息流网络如何在植入电极的鸣禽中发生变化。我们描述了它们如何响应于不同的声音刺激以及在习惯化过程中发生变化。我们通过使用fMRI数据在另一个习惯化实验中识别神经信息流的变化,继续探索鸣禽的神经生物学。最后,我们简要地检查了发育过程中与果蝇肌肉分化有关的不断发展的遗传调控网络。最后,我们描述了用于测试某些结果的实验​​方法,并提出了预测新神经流结果的模型的新实验方向和统计扩展。

著录项

  • 作者

    Robinson, Joshua Westly.;

  • 作者单位

    Duke University.;

  • 授予单位 Duke University.;
  • 学科 Biology Neuroscience.;Computer Science.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 199 p.
  • 总页数 199
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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