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iNR-PhysChem: A Sequence-Based Predictor for Identifying Nuclear Receptors and Their Subfamilies via Physical-Chemical Property Matrix

机译:iNR-PhysChem:通过物理化学性质矩阵识别核受体及其亚科的基于序列的预测器

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摘要

Nuclear receptors (NRs) form a family of ligand-activated transcription factors that regulate a wide variety of biological processes, such as homeostasis, reproduction, development, and metabolism. Human genome contains 48 genes encoding NRs. These receptors have become one of the most important targets for therapeutic drug development. According to their different action mechanisms or functions, NRs have been classified into seven subfamilies. With the avalanche of protein sequences generated in the postgenomic age, we are facing the following challenging problems. Given an uncharacterized protein sequence, how can we identify whether it is a nuclear receptor? If it is, what subfamily it belongs to? To address these problems, we developed a predictor called iNR-PhysChem in which the protein samples were expressed by a novel mode of pseudo amino acid composition (PseAAC) whose components were derived from a physical-chemical matrix via a series of auto-covariance and cross-covariance transformations. It was observed that the overall success rate achieved by iNR-PhysChem was over 98% in identifying NRs or non-NRs, and over 92% in identifying NRs among the following seven subfamilies: NR1thyroid hormone like, NR2HNF4-like, NR3estrogen like, NR4nerve growth factor IB-like, NR5fushi tarazu-F1 like, NR6germ cell nuclear factor like, and NR0knirps like. These rates were derived by the jackknife tests on a stringent benchmark dataset in which none of protein sequences included has pairwise sequence identity to any other in a same subset. As a user-friendly web-server, iNR-PhysChem is freely accessible to the public at either http://www.jci-bioinfo.cn/iNR-PhysChem or http://icpr.jci.edu.cn/bioinfo/iNR-PhysChem. Also a step-by-step guide is provided on how to use the web-server to get the desired results without the need to follow the complicated mathematics involved in developing the predictor. It is anticipated that iNR-PhysChem may become a useful high throughput tool for both basic research and drug design.
机译:核受体(NRs)形成了一系列配体激活的转录因子,可调节多种生物过程,例如体内稳态,繁殖,发育和新陈代谢。人类基因组包含48个编码NR的基因。这些受体已经成为治疗药物开发的最重要的靶标之一。根据NRs的不同作用机制或功能,它们被分为七个亚科。随着后基因组时代产生的大量蛋白质序列,我们面临以下挑战。给定一个未表征的蛋白质序列,我们如何确定它是否为核受体?如果是,它属于哪个亚科?为了解决这些问题,我们开发了一种称为iNR-PhysChem的预测因子,其中的蛋白质样品通过一种新型的伪氨基酸组成(PseAAC)模式表达,其成分是通过一系列自协方差从物理化学矩阵中衍生出来的,互协方差转换。观察到,在以下七个亚家族中,iNR-PhysChem在鉴定NRs或非NRs方面的总体成功率超过98%,在鉴定NRs方面超过92%:NR1甲状腺激素样,NR2HNF4-样,NR3雌激素样,NR4nerve生长因子IB类,NR5fushi tarazu-F1类,NR6germ细胞核因子类和NR0knirps类。这些比率是通过在严格的基准数据集上进行的折刀测试得出的,其中所包含的蛋白质序列在同一子集中没有一个与其他任何蛋白质具有成对的序列同一性。作为用户友好的网络服务器,iNR-PhysChem可以通过http://www.jci-bioinfo.cn/iNR-PhysChem或http://icpr.jci.edu.cn/bioinfo/免费向公众开放iNR-PhysChem。此外,还提供了有关如何使用Web服务器获得所需结果的分步指南,而无需遵循开发预测变量所涉及的复杂数学。预计iNR-PhysChem可能成为基础研究和药物设计的有用的高通量工具。

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  • 年度 2012
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