利用关联规则挖掘预测蛋白质- dna结合核心

Po-Yuen Wong, Tak-Ming Chan, M. Wong, K. Leung
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引用次数: 16

摘要

转录因子(tf)与转录因子结合位点(TFBSs)之间蛋白质- dna结合的研究是生物信息学的重要课题。高分辨率(长度;490)在不使用任何3D结构的情况下识别准确的绑定核心方面显示出前景。当前的关联规则挖掘方法只处理精确的序列,而最新的临时逼近方法不建立任何正式模型,并且受实验已知模式的限制。由于生物突变是常见的,因此有必要将精确模型正式扩展为近似模型。本文形式化了从序列数据中挖掘蛋白质- dna近似关联规则的问题,并提出了一种新的预测蛋白质- dna结合核心的高效算法。两阶段算法首先构建了频繁序列树(FS-Tree)和频繁序列类树(FSCTree)两个紧凑的中间结构。从结构中有效地生成近似关联规则,并进一步利用生物信息学概念(位置权重矩阵和信息内容)对无意义规则进行删减。实际数据的实验结果表明了该算法的性能和适用性。
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Predicting Approximate Protein-DNA Binding Cores Using Association Rule Mining
The studies of protein-DNA bindings between transcription factors (TFs) and transcription factor binding sites (TFBSs) are important bioinformatics topics. High-resolution (length<;10) TF-TFBS binding cores are discovered by expensive and time-consuming 3D structure experiments. Recent association rule mining approaches on low-resolution binding sequences (TF length>;490) are shown promising in identifying accurate binding cores without using any 3D structures. While the current association rule mining method on this problem addresses exact sequences only, the most recent ad hoc method for approximation does not establish any formal model and is limited by experimentally known patterns. As biological mutations are common, it is desirable to formally extend the exact model into an approximate one. In this paper, we formalize the problem of mining approximate protein-DNA association rules from sequence data and propose a novel efficient algorithm to predict protein-DNA binding cores. Our two-phase algorithm first constructs two compact intermediate structures called frequent sequence tree (FS-Tree) and frequent sequence class tree (FSCTree). Approximate association rules are efficiently generated from the structures and bioinformatics concepts (position weight matrix and information content) are further employed to prune meaningless rules. Experimental results on real data show the performance and applicability of the proposed algorithm.
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