Inferring Gene Regulatory Networks by Machine Learning Methods

J. Supper, H. Fröhlich, C. Spieth, Andreas Dräger, A. Zell
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引用次数: 6

Abstract

The ability to measure the transcriptional response after a stimulus has drawn much attention to the underlying gene regulatory networks. Several machine learning related methods, such as Bayesian networks and decision trees, have been proposed to deal with this difficult problem, but rarely a systematic comparison between different algorithms has been performed. In this work, we critically evaluate the application of multiple linear regression, SVMs, decision trees and Bayesian networks to reconstruct the budding yeast cell cycle network. The performance of these methods is assessed by comparing the topology of the reconstructed models to a validation network. This validation network is defined a priori and each interaction is specified by at least one publication. We also investigate the quality of the network reconstruction if a varying amount of gene regulatory dependencies is provided a priori.
用机器学习方法推断基因调控网络
在刺激后测量转录反应的能力引起了人们对潜在基因调控网络的关注。一些机器学习相关的方法,如贝叶斯网络和决策树,已经被提出来处理这个难题,但很少有不同算法之间的系统比较被执行。在这项工作中,我们批判性地评估了多元线性回归、支持向量机、决策树和贝叶斯网络在重建芽殖酵母细胞周期网络中的应用。通过将重建模型的拓扑结构与验证网络进行比较,评估了这些方法的性能。此验证网络是先验定义的,并且每个交互由至少一个发布指定。我们还研究了网络重建的质量,如果不同数量的基因调控依赖是先验的。
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