期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
Disease gene identification by using graph kernels and Markov random fields 被引量:5
1
作者 CHEN BoLin LI Min +1 位作者 WANG JianXin WU FangXiang 《Science China(Life Sciences)》 SCIE CAS 2014年第11期1054-1063,共10页
Genes associated with similar diseases are often functionally related.This principle is largely supported by many biological data sources,such as disease phenotype similarities,protein complexes,protein-protein intera... Genes associated with similar diseases are often functionally related.This principle is largely supported by many biological data sources,such as disease phenotype similarities,protein complexes,protein-protein interactions,pathways and gene expression profiles.Integrating multiple types of biological data is an effective method to identify disease genes for many genetic diseases.To capture the gene-disease associations based on biological networks,a kernel-based Markov random field(MRF)method is proposed by combining graph kernels and the MRF method.In the proposed method,three kinds of kernels are employed to describe the overall relationships of vertices in five biological networks,respectively,and a novel weighted MRF method is developed to integrate those data.In addition,an improved Gibbs sampling procedure and a novel parameter estimation method are proposed to generate predictions from the kernel-based MRF method.Numerical experiments are carried out by integrating known gene-disease associations,protein complexes,protein-protein interactions,pathways and gene expression profiles.The proposed kernel-based MRF method is evaluated by the leave-one-out cross validation paradigm,achieving an AUC score of 0.771 when integrating all those biological data in our experiments,which indicates that our proposed method is very promising compared with many existing methods. 展开更多
关键词 disease gene identification data integration Markov random field graph kernel Bayesian analysis
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部