Learning gene regulatory networks from gene expression measurements using non-parametric molecular kinetics
Author(s) -
Tarmo Äijö,
Harri Lähdesmäki
Publication year - 2009
Publication title -
bioinformatics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.599
H-Index - 390
eISSN - 1367-4811
pISSN - 1367-4803
DOI - 10.1093/bioinformatics/btp511
Subject(s) - computer science , gene regulatory network , inference , ode , parametric statistics , set (abstract data type) , dynamic bayesian network , ordinary differential equation , bayesian network , machine learning , bayes' theorem , data mining , artificial intelligence , bayesian probability , algorithm , mathematics , gene expression , biology , differential equation , gene , genetics , statistics , mathematical analysis , programming language
Regulation of gene expression is fundamental to the operation of a cell. Revealing the structure and dynamics of a gene regulatory network (GRN) is of great interest and represents a considerably challenging computational problem. The GRN estimation problem is complicated by the fact that the number of gene expression measurements is typically extremely small when compared with the dimension of the biological system. Further, because the gene regulation process is intrinsically complex, commonly used parametric models can provide too simple description of the underlying phenomena and, thus, can be unreliable. In this article, we propose a novel methodology for the inference of GRNs from time-series and steady-state gene expression measurements. The presented framework is based on the use of Bayesian analysis with ordinary differential equations (ODEs) and non-parametric Gaussian process modeling for the transcriptional-level regulation.
Accelerating Research
Robert Robinson Avenue,
Oxford Science Park, Oxford
OX4 4GP, United Kingdom
Address
John Eccles HouseRobert Robinson Avenue,
Oxford Science Park, Oxford
OX4 4GP, United Kingdom