用Kidera因子凝聚位置特异性评分矩阵,用于配体结合位点预测。

IF 0.2 4区 生物学 Q4 MATHEMATICAL & COMPUTATIONAL BIOLOGY International Journal of Data Mining and Bioinformatics Pub Date : 2015-01-01 DOI:10.1504/ijdmb.2015.068954
Chun Fang, Tamotsu Noguchi, Hayato Yamana
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引用次数: 3

摘要

位置特异性评分矩阵(PSSM)被广泛用于蛋白质功能位点的鉴定。然而,它是20维的,包含许多冗余特征。据报道,Kidera因子包含了与氨基酸几乎所有物理性质有关的信息,但它需要适当的加权系数来表达它们的性质。我们开发了一种新的方法,命名为KSPSSMpred,该方法将PSSM和Kidera因子集成到一个10维矩阵(KSPSSM)中,用于配体结合位点预测。本研究选择黄素腺嘌呤二核苷酸(FAD)作为代表性配体。当在基准数据集上与其他五种基于特征的方法进行比较时,KSPSSMpred表现最好。研究表明,KSPSSM是一种有效的特征提取方法,它可以在不丢失PSSM中包含的信息的情况下,将188个残基的物理性质信息丰富到PSSM中,并将特征维数降低50%。
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Condensing position-specific scoring matrixs by the Kidera factors for ligand-binding site prediction.

Position-specific scoring matrix (PSSM) has been widely used for identifying protein functional sites. However, it is 20-dimentional and contains many redundant features. The Kidera factors were reported to contain information relating almost all physical properties of amino acids, but it requires appropriate weighting coefficients to express their properties. We developed a novel method, named as KSPSSMpred, which integrated PSSM and the Kidera Factors into a 10-dimensional matrix (KSPSSM) for ligand-binding site prediction. Flavin adenine dinucleotide (FAD) was chosen as a representative ligand for this study. When compared with five other feature-based methods on a benchmark dataset, KSPSSMpred performed the best. This study demonstrates that, KSPSSM is an effective feature extraction method which can enrich PSSM with information relating 188 physical properties of residues, and reduce 50% feature dimensions without losing information included in the PSSM.

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来源期刊
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期刊介绍: Mining bioinformatics data is an emerging area at the intersection between bioinformatics and data mining. The objective of IJDMB is to facilitate collaboration between data mining researchers and bioinformaticians by presenting cutting edge research topics and methodologies in the area of data mining for bioinformatics. This perspective acknowledges the inter-disciplinary nature of research in data mining and bioinformatics and provides a unified forum for researchers/practitioners/students/policy makers to share the latest research and developments in this fast growing multi-disciplinary research area.
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