首页> 外文期刊>Applied and Environmental Microbiology >Function-Based Classification of Carbohydrate-Active Enzymes by Recognition of Short, Conserved Peptide Motifs
【24h】

Function-Based Classification of Carbohydrate-Active Enzymes by Recognition of Short, Conserved Peptide Motifs

机译:通过识别短而保守的肽基序对碳水化合物活性酶进行基于功能的分类

获取原文
           

摘要

Functional prediction of carbohydrate-active enzymes is difficult due to low sequence identity. However, similar enzymes often share a few short motifs, e.g., around the active site, even when the overall sequences are very different. To exploit this notion for functional prediction of carbohydrate-active enzymes, we developed a simple algorithm, peptide pattern recognition (PPR), that can divide proteins into groups of sequences that share a set of short conserved sequences. When this method was used on 118 glycoside hydrolase 5 proteins with 9% average pairwise identity and representing four characterized enzymatic functions, 97% of the proteins were sorted into groups correlating with their enzymatic activity. Furthermore, we analyzed 8,138 glycoside hydrolase 13 proteins including 204 experimentally characterized enzymes with 28 different functions. There was a 91% correlation between group and enzyme activity. These results indicate that the function of carbohydrate-active enzymes can be predicted with high precision by finding short, conserved motifs in their sequences. The glycoside hydrolase 61 family is important for fungal biomass conversion, but only a few proteins of this family have been functionally characterized. Interestingly, PPR divided 743 glycoside hydrolase 61 proteins into 16 subfamilies useful for targeted investigation of the function of these proteins and pinpointed three conserved motifs with putative importance for enzyme activity. Furthermore, the conserved sequences were useful for cloning of new, subfamily-specific glycoside hydrolase 61 proteins from 14 fungi. In conclusion, identification of conserved sequence motifs is a new approach to sequence analysis that can predict carbohydrate-active enzyme functions with high precision.
机译:由于序列同一性低,因此很难预测碳水化合物活性酶的功能。然而,即使整个序列非常不同,相似的酶也经常在活性位点附近共享一些短的基序。为了将这一概念用于碳水化合物活性酶的功能预测,我们开发了一种简单的算法,即肽模式识别(PPR),可以将蛋白质分为共享一组短保守序列的序列组。当此方法用于118种糖苷水解酶5蛋白时,它们的平均成对一致性为9%,代表四种表征的酶功能,将97%的蛋白分为与其酶活性相关的组。此外,我们分析了8,138个糖苷水解酶13蛋白,包括204种经实验表征的具有28种不同功能的酶。组和酶活性之间存在91%的相关性。这些结果表明,通过在其序列中发现短的保守基序,可以高精度地预测碳水化合物活性酶的功能。糖苷水解酶61家族对于真菌生物量转化很重要,但是该家族中只有少数蛋白质具有功能性特征。有趣的是,PPR将743个糖苷水解酶61蛋白分为16个亚家族,可用于对这些蛋白的功能进行有针对性的研究,并确定了三个保守的基序,这些基序对酶的活性至关重要。此外,保守序列可用于从14种真菌克隆新的亚家族特异性糖苷水解酶61蛋白。总之,保守序列基序的鉴定是一种新的序列分析方法,可以高精度预测碳水化合物活性酶的功能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号