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Integrative approaches for biological network inferences.

机译:生物网络推理的综合方法。

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摘要

Inferring biological networks from high-throughput bioinformatics data is one of the most interesting areas in the systems biology research in order to elucidate cellular and physiological mechanisms. In this thesis, network inference methods are proposed to solve biological problems.;We first investigated how the exposure to low dose ionizing radiation (IR) affects the human body by observing the signaling pathway associated with Ataxia Telangiectasia mutated using Reverse Phase Protein Array and isogenic human Ataxia Telangiectasia cells under different amounts and durations of IR exposure. DNA damage-caused pathways are derived from learning Bayesian networks in integration with prior knowledge such as Protein-Protein Interactions and signaling pathways from well-known databases. The experimental results show which proteins are involved in signaling pathways under IR, how the inferred pathways are different under low and high doses of IR, and how the selected proteins regulate each other in the inferred pathways.;In network inference research, there are two issues to solve. First, depending on the structural or computational model of inference method, the performance tends to be inconsistent due to innately different advantages and limitations of the methods. Second, sparse linear regression that is penalized by the regularization parameter and bootstrapping-based sparse linear regression methods were suggested as state of the art in recent related works for network inference. However, they are not effective for a small sample size data and also a true regulator could be missed if the target gene is strongly affected by an indirect regulator with high correlation or another true regulator. To solve the limitations of bootstrapping, a lasso-based random feature selection algorithm is proposed to achieve better performance.;In order to elucidate the overall relationships between gene expressions and genetic perturbations, we propose a network inference method to infer gene regulatory network where Single Nucleotide Polymorphism (SNP) is involved as a regulator of genes. In the most of the network inferences named as SNP-Gene Regulatory Network (SGRN) inference, pairs of SNP-gene are given by separately performing expression Quantitative Trait Loci (eQTL) mappings. A SGRN inference method without pre-defined eQTL information is proposed assuming a gene is regulated by a single SNP at most.;We also studied how a medicine can be customized to individual patients considering biological features of the patients, i.e., Personalized Medicine. Our goal is to predict drug sensitivity levels of cancer patients in order to provide an optimal drug to the patients avoiding a waste of time with ineffective treatments. For the classification of patients to the optimal drug, we employed Bayesian Network Classifier (BNC) that consists of two components, parameters and network structure. Since the networks of BNC represent the dependency of proteins, these multiple networks of BNCs for multiple drugs also provide important information of relationships between proteins in order to identify the biomarkers of a target cancer from the integration of the multiple networks.
机译:为了阐明细胞和生理机制,从高通量生物信息学数据推断生物网络是系统生物学研究中最有趣的领域之一。本文提出了网络推理方法来解决生物学问题。我们首先观察低剂量电离辐射(IR)的暴露如何通过观察与反相蛋白阵列和等基因突变的共济失调毛细血管扩张相关的信号通路来影响人体。人共济失调毛细血管扩张细胞在不同数量和持续时间的红外照射下。 DNA损伤引起的途径是通过与先前的知识(例如蛋白质-蛋白质相互作用和知名数据库中的信号传导途径)整合而从学习贝叶斯网络中获得的。实验结果表明,在IR下信号传导途径中涉及哪些蛋白质,在高剂量和低剂量IR下推断的途径如何不同,以及所选蛋白质在推断的途径中如何相互调节。在网络推断研究中,有两种要解决的问题。首先,取决于推理方法的结构或计算模型,由于方法固有的不同优势和局限性,性能往往会不一致。其次,在最近的网络推理相关工作中,提出了以正则化参数为代价的稀疏线性回归和基于自举的稀疏线性回归方法。但是,它们对于小样本数据无效,并且如果目标基因受到具有高度相关性的间接调控因子或其他真实调控因子的强烈影响,则可能会错过真实调控因子。为了解决自举的局限性,提出了一种基于套索的随机特征选择算法,以达到更好的性能。核苷酸多态性(SNP)作为基因的调节剂。在大多数被称为SNP基因调控网络(SGRN)推断的网络推断中,通过分别执行表达定量性状基因座(eQTL)映射来给出SNP基因对。提出了一种没有预先定义的eQTL信息的SGRN推论方法,假设一个基因最多只能由一个SNP调控;我们还研究了如何根据患者的生物学特征针对个体患者定制药物,即个性化医学。我们的目标是预测癌症患者的药物敏感性水平,以便为患者提供最佳药物,从而避免因无效治疗而浪费时间。为了将患者分类为最佳药物,我们采用了贝叶斯网络分类器(BNC),该分类器由参数和网络结构两个部分组成。由于BNC的网络代表蛋白质的依赖性,因此用于多种药物的BNC的这些多个网络也提供了蛋白质之间关系的重要信息,以便从多个网络的整合中识别目标癌症的生物标记。

著录项

  • 作者

    Kim, Dongchul.;

  • 作者单位

    The University of Texas at Arlington.;

  • 授予单位 The University of Texas at Arlington.;
  • 学科 Computer science.;Bioinformatics.;Computer engineering.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 123 p.
  • 总页数 123
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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