首页> 外文学位 >EukaSimBioSys: A stochastic discrete event-based simulation software for in-silico study of insulin signaling and metabolism in cardiac myocytes.
【24h】

EukaSimBioSys: A stochastic discrete event-based simulation software for in-silico study of insulin signaling and metabolism in cardiac myocytes.

机译:EukaSimBioSys:基于随机离散事件的模拟软件,用于计算机模拟心肌细胞中胰岛素信号传导和代谢。

获取原文
获取原文并翻译 | 示例

摘要

In this dissertation we first elucidate how the Stochastic Discrete Event Simulation (SDES) could be applied in capturing the behavior of biological processes as sets of biological events (bioevents) with random holding times. Then we introduce the architecture of ‘ eukaSimBioSys’ which is designed for system-wide simulation of a eukaryotic cell. The model repository is one of the essential components of our proposed architecture, which comprises reusable modules of parametric models. Each of these parametric models once coupled with a proper parameter set is then applied to capture the holding time of a specific bioevent.;These models are physicochemical models that attempt to abstract bimolecular interactions (i.e. modifications, associations, translocations, localizations, etc.) into a parametric probability distribution function of time. Typical interactions include: reaction, receptor-ligand binding, protein-protein binding, chromatin remodeling, transcription, translation, splicing, etc. The previous researchers have already started building this model library and in this work we add four new models (i) ligand-receptor binding, (ii) DNA fluctuations, (ii) chromatin remodeling, and (iii) splicing. For the first one we have developed both the eukaryotic and prokaryotic variants of the model, where as the rest are specific to eukaryotes. These models have been validated with the published experimental data where empirical results were available.;Cell activity is the product of an intricate interaction among three main cellular networks: Signal Transduction Network (STN), Transcription Regulatory Network (TRN), and Metabolic Network (MTN). Each cellular function composed of one or more edges within or across these networks. Hence, system-wide study of a cell requires clear and explicit definition of these networks. We have incorporated the semantic of these networks in ‘eukaSimBioSys ’ by designing an object-oriented database to hold the layout of these three networks along with their inter-relationships. We have populated these databases for ‘human BCell’ and ‘ human cardiac myocyte’ from data available in literature and other databases.;Despite the advances in health science, and discovery of new drugs, still heart disease is the most life threatening disease in both industrial and developing countries. Cardiac myocytes are the main players of the perpetual heart contraction function and are among the most energy consuming tissues in the body. Any changes in their normal metabolism can lead to severe consequences for an individual. Glucose and fatty acids comprise the major sources of energy for the myocardial cells, the interplay between these two sources is predominantly controlled by insulin. As the ultimate goal of this dissertation we have incorporated all the models developed in this dissertation and elsewhere into ‘ eukaSimBioSys’ and utilized that to conduct unique in-silico experiments for studying the effects of insulin on metabolism of heart muscles.;We exploit the features and capacities of our software by conducting six in-silico experiments where we proved its outstanding potentials in regenerating the experiential data and performing hypothesis testings by applying the experimental conditions in-silico. The biological facts that we validated in-silico briefly include: plasticity of cardiac myocytes, contributions of exogenous glucose and fatty acid in myocardial energetics, transcription regulation of insulin, and the effect of genetic null-mutations on metabolic pathways.;One of the unique features of ‘eukaSimBioSys’ that was demonstrated throughout an in-silico experiment was the ability of the software to perform the system-wide simulation of myocardial cellular networks for a prolonged time (48 hours). To construct the SRN, TRN, and MTB for the experiment we incorporated the information from three major databases (i.e. KEGG, BiGG, HumanCyc) along with data from exhaustive literature searches.;‘eukaSimBioSys’ features variety of promising applications in the biology and health science. It could be applied to suggest the more promising experimental condition for the experimentalist or help investigating new pathways and regulatory mechanisms. Another very important application of this software is in rebuilding the disease scenarios such as hyperglycemia, diabetes, hypertension, ischemia, etc. In-silico investigation on the effects and side-effects of a new drug is another potential application of this emerging software. Note that utilizing ‘eukaSimBioSys ’ for the above purposes might subject to certain case based enhancements to the current version of the software. (Abstract shortened by UMI.).
机译:在本文中,我们首先阐明了随机离散事件模拟(SDES)如何可用于捕获生物过程的行为,并将其作为具有随机保持时间的一组生物事件(bioevents)。然后,我们介绍“ eukaSimBioSys”的体系结构,该体系结构用于真核细胞的全系统模拟。模型存储库是我们提出的体系结构的重要组成部分之一,该体系结构包含可重用的参数模型模块。这些参数模型中的每一个一旦加上适当的参数集,便被用于捕获特定生物事件的保持时间。这些模型是试图抽象化双分子相互作用(即修饰,缔合,易位,定位等)的物理化学模型。转化为时间的参数概率分布函数。典型的相互作用包括:反应,受体-配体结合,蛋白质-蛋白质结合,染色质重塑,转录,翻译,剪接等。以前的研究人员已经开始构建该模型库,在这项工作中,我们添加了四个新模型(i)配体-受体结合,(ii)DNA波动,(ii)染色质重塑和(iii)剪接。对于第一个,我们开发了该模型的真核和原核变异体,其余的则是真核生物特有的。这些模型已经用可获得经验结果的已发布实验数据进行了验证;细胞活性是三个主要细胞网络(信号转导网络(STN),转录调控网络(TRN)和代谢网络)之间复杂相互作用的产物MTN)。每个蜂窝功能由这些网络内或跨这些网络的一个或多个边缘组成。因此,对一个小区进行系统范围的研究需要对这些网络进行清晰明确的定义。通过设计一个面向对象的数据库来容纳这三个网络的布局及其相互关系,我们将这些网络的语义纳入了“ eukaSimBioSys”中。我们从文献和其他数据库中获得的数据中已为“人类BCell”和“人类心肌细胞”填充了这些数据库。尽管健康科学不断进步,并且发现了新药,但心脏病仍然是最致命的疾病工业和发展中国家。心肌细胞是永久性心脏收缩功能的主要参与者,并且是人体中最耗能的组织之一。正常代谢的任何变化都可能对个人造成严重后果。葡萄糖和脂肪酸是心肌细胞的主要能量来源,这两种来源之间的相互作用主要由胰岛素控制。作为本论文的最终目标,我们将本论文和其他地方开发的所有模型都整合到了“ eukaSimBioSys”中,并利用该模型进行了独特的计算机模拟实验,以研究胰岛素对心肌代谢的影响。通过进行六次计算机模拟实验来验证软件的性能和功能,我们通过应用计算机模拟实验条件证明了其在再生经验数据和进行假设检验方面的巨大潜力。我们在计算机上验证的生物学事实简要包括:心肌细胞的可塑性,心肌能量中外源葡萄糖和脂肪酸的贡献,胰岛素的转录调控以及遗传无效突变对代谢途径的影响。在整个计算机模拟实验中证明的“ eukaSimBioSys”的功能是该软件能够在较长时间内(48小时)执行心肌细胞网络的系统范围仿真。为了构建用于实验的SRN,TRN和MTB,我们结合了来自三个主要数据库(即KEGG,BiGG,HumanCyc)的信息以及来自详尽文献搜索的数据。'eukaSimBioSys'具有多种在生物学和健康方面有希望的应用科学。它可以被用来为实验者提供更为有希望的实验条件,或者帮助研究新的途径和调控机制。该软件的另一个非常重要的应用是重建高血糖,糖尿病,高血压,局部缺血等疾病。在计算机上研究新药的作用和副作用是该新兴软件的另一潜在应用。请注意,出于上述目的使用“ eukaSimBioSys”可能会受到基于特定情况的当前软件增强的影响。 (摘要由UMI缩短。)。

著录项

  • 作者

    Mazloom, Amin Reza.;

  • 作者单位

    The University of Texas at Arlington.;

  • 授予单位 The University of Texas at Arlington.;
  • 学科 Biology Bioinformatics.;Computer Science.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 250 p.
  • 总页数 250
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号