Department of Computer Science, Duke University, Durham, 27708, NC, USA.
Berlin Institute for Medical Systems Biology, Max Delbrück Center for Molecular Medicine, Berlin, 13125, Germany.
Genome Biol. 2017 Oct 26;18(1):199. doi: 10.1186/s13059-017-1316-x.
Transcriptional enhancers regulate spatio-temporal gene expression. While genomic assays can identify putative enhancers en masse, assigning target genes is a complex challenge. We devised a machine learning approach, McEnhancer, which links target genes to putative enhancers via a semi-supervised learning algorithm that predicts gene expression patterns based on enriched sequence features. Predicted expression patterns were 73-98% accurate, predicted assignments showed strong Hi-C interaction enrichment, enhancer-associated histone modifications were evident, and known functional motifs were recovered. Our model provides a general framework to link globally identified enhancers to targets and contributes to deciphering the regulatory genome.
转录增强子调节时空基因表达。虽然基因组分析可以大规模识别潜在的增强子,但确定靶基因是一个复杂的挑战。我们设计了一种机器学习方法 McEnhancer,它通过半监督学习算法将靶基因与潜在的增强子联系起来,该算法根据富集的序列特征预测基因表达模式。预测的表达模式的准确性为 73-98%,预测的分配显示出强烈的 Hi-C 相互作用富集,增强子相关的组蛋白修饰是明显的,并且恢复了已知的功能基序。我们的模型为将全局鉴定的增强子与靶基因联系起来提供了一个通用框架,并有助于破译调控基因组。