School of Life Sciences, University of Essex, Colchester, CO4 3SQ, UK.
School of Computer Science and Electronic Engineering, University of Essex, Colchester, CO4 3SQ, UK.
Genome Biol. 2021 Nov 8;22(1):308. doi: 10.1186/s13059-021-02532-7.
Enhancers are non-coding regions of the genome that control the activity of target genes. Recent efforts to identify active enhancers experimentally and in silico have proven effective. While these tools can predict the locations of enhancers with a high degree of accuracy, the mechanisms underpinning the activity of enhancers are often unclear.
Using machine learning (ML) and a rule-based explainable artificial intelligence (XAI) model, we demonstrate that we can predict the location of known enhancers in Drosophila with a high degree of accuracy. Most importantly, we use the rules of the XAI model to provide insight into the underlying combinatorial histone modifications code of enhancers. In addition, we identified a large set of putative enhancers that display the same epigenetic signature as enhancers identified experimentally. These putative enhancers are enriched in nascent transcription, divergent transcription and have 3D contacts with promoters of transcribed genes. However, they display only intermediary enrichment of mediator and cohesin complexes compared to previously characterised active enhancers. We also found that 10-15% of the predicted enhancers display similar characteristics to super enhancers observed in other species.
Here, we applied an explainable AI model to predict enhancers with high accuracy. Most importantly, we identified that different combinations of epigenetic marks characterise different groups of enhancers. Finally, we discovered a large set of putative enhancers which display similar characteristics with previously characterised active enhancers.
增强子是基因组中的非编码区域,可控制靶基因的活性。最近在实验和计算上识别活性增强子的努力已被证明是有效的。虽然这些工具可以高度准确地预测增强子的位置,但增强子活性的机制往往不清楚。
我们使用机器学习 (ML) 和基于规则的可解释人工智能 (XAI) 模型,证明我们可以高度准确地预测果蝇中已知增强子的位置。最重要的是,我们使用 XAI 模型的规则来深入了解增强子的组合组蛋白修饰代码。此外,我们鉴定了一大组具有与实验鉴定的增强子相同的表观遗传特征的假定增强子。这些假定的增强子在新生转录、发散转录中富集,并且与转录基因的启动子具有 3D 接触。然而,与以前表征的活性增强子相比,它们仅表现出中等丰度的中介体和黏合复合物。我们还发现,预测的增强子中有 10-15% 显示出与在其他物种中观察到的超级增强子相似的特征。
在这里,我们应用了一种可解释的人工智能模型来高度准确地预测增强子。最重要的是,我们确定了不同的表观遗传标记组合可表征不同组的增强子。最后,我们发现了一大组具有与以前表征的活性增强子相似特征的假定增强子。