Udalova Irina A, Mott Richard, Field Dawn, Kwiatkowski Dominic
Wellcome Trust Centre for Human Genetics, University of Oxford, Roosevelt Drive, Oxford OX3 7BN, UK. iudalova@
Proc Natl Acad Sci U S A. 2002 Jun 11;99(12):8167-72. doi: 10.1073/pnas.102674699. Epub 2002 Jun 4.
We describe a general method based on principal coordinates analysis to predict the effects of single-nucleotide polymorphisms within regulatory sequences on DNA-protein interactions. We use binding data for the transcription factor NF-kappaB as a test system. The method incorporates the effects of interactions between base pair positions in the binding site, and we demonstrate that such interactions are present for NF-kappaB. Prediction accuracy is higher than with profile models, confirmed by crossvalidation and by the experimental verification of our predictions for additional sequences. The binding affinities of all potential NF-kappaB sites on human chromosome 22, together with the effects of known single-nucleotide polymorphisms, are calculated to determine likely functional variants. We propose that this approach may be valuable, either on its own or in combination with other methods, when standard profile models are disadvantaged by complex internucleotide interactions.
我们描述了一种基于主坐标分析的通用方法,用于预测调控序列内单核苷酸多态性对DNA-蛋白质相互作用的影响。我们使用转录因子NF-κB的结合数据作为测试系统。该方法纳入了结合位点中碱基对位置之间相互作用的影响,并且我们证明NF-κB存在这种相互作用。通过交叉验证以及对其他序列预测的实验验证,预测准确性高于轮廓模型。计算了人类22号染色体上所有潜在NF-κB位点的结合亲和力以及已知单核苷酸多态性的影响,以确定可能的功能变体。我们提出,当标准轮廓模型因复杂的核苷酸间相互作用而处于劣势时,这种方法本身或与其他方法结合使用可能具有价值。