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Prediction and validation of protein–protein interactors from genome-wide DNA-binding data using a knowledge-based machine-learning approach

机译:使用基于知识的机器学习方法从全基因组DNA结合数据预测和验证蛋白质间相互作用

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摘要

The ability to accurately predict the DNA targets and interacting cofactors of transcriptional regulators from genome-wide data can significantly advance our understanding of gene regulatory networks. NKX2-5 is a homeodomain transcription factor that sits high in the cardiac gene regulatory network and is essential for normal heart development. We previously identified genomic targets for NKX2-5 in mouse HL-1 atrial cardiomyocytes using DNA-adenine methyltransferase identification (DamID). Here, we apply machine learning algorithms and propose a knowledge-based feature selection method for predicting NKX2-5 protein : protein interactions based on motif grammar in genome-wide DNA-binding data. We assessed model performance using leave-one-out cross-validation and a completely independent DamID experiment performed with replicates. In addition to identifying previously described NKX2-5-interacting proteins, including GATA, HAND and TBX family members, a number of novel interactors were identified, with direct protein : protein interactions between NKX2-5 and retinoid X receptor (RXR), paired-related homeobox (PRRX) and Ikaros zinc fingers (IKZF) validated using the yeast two-hybrid assay. We also found that the interaction of RXRα with NKX2-5 mutations found in congenital heart disease (Q187H, R189G and R190H) was altered. These findings highlight an intuitive approach to accessing protein–protein interaction information of transcription factors in DNA-binding experiments.
机译:从全基因组数据准确预测DNA靶标和转录调节因子相互作用的辅助因子的能力可以大大提高我们对基因调节网络的了解。 NKX2-5是一个同源结构域转录因子,在心脏基因调节网络中占有较高的位置,对于正常的心脏发育至关重要。我们以前使用DNA腺嘌呤甲基转移酶鉴定(DamID)在小鼠HL-1心房心肌细胞中确定了NKX2-5的基因组靶标。在这里,我们应用机器学习算法并提出了一种基于知识的特征选择方法,用于预测NKX2-5蛋白质:基于全基因组DNA结合数据中的主题语法的蛋白质相互作用。我们使用留一法交叉验证和重复进行的完全独立的DamID实验评估了模型性能。除了鉴定先前描述的NKX2-5相互作用蛋白(包括GATA,HAND和TBX家族成员)外,还鉴定了许多新颖的相互作用蛋白,它们与NKX2-5和类维生素A X受体(RXR)之间直接的蛋白相互作用:相关的同源盒(PRRX)和Ikaros锌指(IKZF)使用酵母两杂交测定法进行了验证。我们还发现,RXRα与先天性心脏病(Q187H,R189G和R190H)中发现的NKX2-5突变的相互作用被改变。这些发现突出了在DNA结合实验中访问转录因子的蛋白质相互作用的直观方法。

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