医学文献 >>
  • 检索发现
  • 增强检索
知识库 >>
  • 临床诊疗知识库
  • 中医药知识库
评价分析 >>
  • 机构
  • 作者
默认
×
热搜词:
换一批
论文 期刊
取消
高级检索

检索历史 清除

Experimental design and model reduction in systems biology

摘要Background:In systems biology,the dynamics of biological networks are often modeled with ordinary differential equations (ODEs) that encode interacting components in the systems,resulting in highly complex models.In contrast,the amount of experimentally available data is almost always limited,and insufficient to constrain the parameters.In this situation,parameter estimation is a very challenging problem.To address this challenge,two intuitive approaches are to perform experimental design to generate more data,and to perform model reduction to simplify the model.Experimental design and model reduction have been traditionally viewed as two distinct areas,and an extensive literature and excellent reviews exist on each of the two areas.Intriguingly,however,the intrinsic connections between the two areas have not been recognized.Results:Experimental design and model reduction are deeply related,and can be considered as one unified framework.There are two recent methods that can tackle both areas,one based on model manifold and the other based on profile likelihood.We use a simple sum-of-two-exponentials example to discuss the concepts and algorithmic details of both methods,and provide Matlab-based code and implementation which are useful resources for the dissemination and adoption of experimental design and model reduction in the biology community.Conclusions:From a geometric perspective,we consider the experimental data as a point in a high-dimensional data space and the mathematical model as a manifold living in this space.Parameter estimation can be viewed as a projection of the data point onto the manifold.By examining the singularity around the projected point on the manifold,we can perform both experimental design and model reduction.Experimental design identifies new experiments that expand the manifold and remove the singularity,whereas model reduction identifies the nearest boundary,which is the nearest singularity that suggests an appropriate form of a reduced model.This geometric interpretation represents one step toward the convergence of experimental design and model reduction as a unified framework.

更多
广告
作者单位 School of Electrical and Computer Engineering,Georgia Institute of Technology,Atlanta,GA 30318,USA [1] School of Biological Sciences,Georgia Institute of Technology,Atlanta,GA 30318,USA [2] Department of Physics and Astronomy,Brigham Young University,Provo,UT 84602,USA [3] School of Industrial and Systems Engineering,Georgia Institute of Technology,Atlanta,GA 30318,USA [4] Department of Biomedical Engineering,Georgia Institute of Technology,Atlanta,GA 30318,USA [5]
栏目名称
发布时间 2019-02-26(万方平台首次上网日期,不代表论文的发表时间)
基金项目
提交
  • 浏览4
  • 下载0
定量生物学(英文版)

加载中!

相似文献

  • 中文期刊
  • 外文期刊
  • 学位论文
  • 会议论文

加载中!

加载中!

加载中!

加载中!

法律状态公告日 法律状态 法律状态信息

特别提示:本网站仅提供医学学术资源服务,不销售任何药品和器械,有关药品和器械的销售信息,请查阅其他网站。

  • 客服热线:4000-115-888 转3 (周一至周五:8:00至17:00)

  • |
  • 客服邮箱:yiyao@wanfangdata.com.cn

  • 违法和不良信息举报电话:4000-115-888,举报邮箱:problem@wanfangdata.com.cn,举报专区

官方微信
万方医学小程序
new医文AI 翻译 充值 订阅 收藏 移动端

官方微信

万方医学小程序

使用
帮助
Alternate Text
调查问卷