Prediction of DNA-binding protein based on alpha shape modeling

Weiqiang Zhou, Hong Yan
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引用次数: 3

Abstract

Previous studies about protein-DNA interaction focused on the bound structure of DNA-binding proteins and provided good but not practical results. In our work, we apply an alpha shape model to represent the surface structure of the protein-DNA complex and use structural alignment to develop an interface-atom curvature-dependent conditional probability discriminatory function for the prediction of unbound DNA-binding protein. The proposed method provides good performance in predicting unbound structure of DNA-binding protein which is potentially useful in many fields. Computer experiment results show that the curvature-dependent formalism with the optimal parameters can achieve sensitivity ranges from 48.08% to 44.23% and specificity ranges from 73.82% to 84.29%.
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基于α形状模型的dna结合蛋白预测
以往关于蛋白质- dna相互作用的研究主要集中在dna结合蛋白的结合结构上,取得了较好的但不实用的结果。在我们的工作中,我们应用α形状模型来表示蛋白质- dna复合物的表面结构,并使用结构比对来开发界面原子曲率依赖的条件概率判别函数,用于预测未结合的dna结合蛋白。该方法在预测dna结合蛋白的非结合结构方面具有良好的性能,在许多领域具有潜在的应用价值。计算机实验结果表明,采用最优参数的曲率相关形式可以实现48.08% ~ 44.23%的灵敏度和73.82% ~ 84.29%的特异度。
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