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Correcting errors due to species correlations in the marginal probability density evolution algorithm.

机译:在边际概率密度演化算法中纠正由于物种相关性引起的误差。

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摘要

Synthetic biology is an emerging field that integrates and applies engineering design methods to biological systems. Its aim is to make biology an "engineerable" science. Over the years, biologists and engineers alike have abstracted biological systems into functional models that behave similarly to electric circuits, thus the creation of the subfield of genetic circuits. Mathematical models have been devised to simulate the behavior of genetic circuits in silico. Most models can be classified into deterministic and stochastic models. The work in this dissertation is for stochastic models.;Although ordinary differential equation (ODE) models are generally amenable to simulate genetic circuits, they wrongly assume that a system's chemical species vary continuously and deterministically, thus making erroneous predictions when applied to highly stochastic systems. Stochastic methods have been created to take into account the variability, unpredictability, and discrete nature of molecular populations. The most popular stochastic method is the stochastic simulation algorithm (SSA). These methods provide a single path of the overall pool of possible system's behavior. A common practice is to take several independent SSA simulations and take the average of the aggregate. This approach can perform well in low noise systems. However, it produces incorrect results when applied to networks that can take multiple modes or that are highly stochastic.;Incremental SSA or iSSA is a set of algorithms that have been created to obtain aggregate information from multiple SSA runs. The marginal probability density evolution (MPDE) algorithm is a subset of iSSA which seeks to reveal the most likely "qualitative" behavior of a genetic circuit by providing a marginal probability function or statistical envelope for every species in the system, under the appropriate conditions. MPDE assumes that species are statistically independent given the rest of the system. This assumption is satisfied by some systems. However, most of the interesting biological systems, both synthetic and in nature, have correlated species forming conservation laws. Species correlation imposes constraints in the system that are broken by MPDE. This work seeks to devise a mathematical method and algorithm to correct conservation constraints errors in MPDE. Furthermore, it aims to identify these constraints a priori and efficiently deliver a trustworthy result faithful to the true behavior of the system.
机译:合成生物学是一个新兴领域,将工程设计方法整合并应用于生物系统。其目的是使生物学成为一门“可工程的”科学。多年来,生物学家和工程师都将生物系统抽象为功能模型,这些模型的行为类似于电路,从而创造了遗传电路的子领域。已经设计了数学模型来模拟计算机中遗传电路的行为。大多数模型可以分为确定性模型和随机模型。本文中的工作是针对随机模型的。尽管通常可以用普通微分方程(ODE)模型来模拟遗传电路,但他们错误地认为系统的化学物种会连续且确定地变化,因此在应用于高度随机系统时会做出错误的预测。 。已经创建了随机方法来考虑分子种群的可变性,不可预测性和离散性。最受欢迎的随机方法是随机仿真算法(SSA)。这些方法为可能的系统行为的整体池提供了一条单一路径。常见的做法是进行几个独立的SSA模拟,并取总计的平均值。这种方法可以在低噪声系统中很好地执行。但是,当将其应用于可以采用多种模式或高度随机的网络时,它会产生错误的结果。增量SSA或iSSA是一组算法,已创建这些算法以从多个SSA运行中获取汇总信息。边际概率密度演化(MPDE)算法是iSSA的子集,它旨在通过在适当条件下为系统中的每个物种提供边际概率函数或统计包络来揭示遗传电路最可能的“定性”行为。 MPDE假设在系统的其余部分中物种在统计上是独立的。一些系统满足该假设。然而,大多数有趣的生物系统,无论是合成的还是自然界的,都与形成保护规律的物种相关。物种相关性在系统中施加了MPDE打破的约束。这项工作旨在设计一种数学方法和算法来纠正MPDE中的守恒约束误差。此外,它旨在事先确定这些约束条件,并有效地交付忠实于系统真实行为的可信赖结果。

著录项

  • 作者

    Tejeda, Abiezer.;

  • 作者单位

    Utah State University.;

  • 授予单位 Utah State University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 M.S.
  • 年度 2013
  • 页码 90 p.
  • 总页数 90
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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