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E1DS: catalytic site prediction based on 1D signatures of concurrent conservation.

机译:E1DS:基于同时保存的一维特征的催化位点预测。

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Large-scale automatic annotation of protein sequences remains challenging in postgenomics era. E1DS is designed for annotating enzyme sequences based on a repository of 1D signatures. The employed sequence signatures are derived using a novel pattern mining approach that discovers long motifs consisted of several sequential blocks (conserved segments). Each of the sequential blocks is considerably conserved among the protein members of an EC group. Moreover, a signature includes at least three sequential blocks that are concurrently conserved, i.e. frequently observed together in sequences. In other words, a sequence signature is consisted of residues from multiple regions of the protein sequence, which echoes the observation that an enzyme catalytic site is usually constituted of residues that are largely separated in the sequence. E1DS currently contains 5421 sequence signatures that in total cover 932 4-digital EC numbers. E1DS is evaluated based on a collection of enzymes with catalytic sites annotated in Catalytic Site Atlas. When compared to the famous pattern database PROSITE, predictions based on E1DS signatures are considered more sensitive in identifying catalytic sites and the involved residues. E1DS is available at http://e1ds.ee.ncku.edu.tw/ and a mirror site can be found at http://e1ds.csbb.ntu.edu.tw/.
机译:在后基因组学时代,蛋白质序列的大规模自动注释仍然具有挑战性。 E1DS设计用于基于一维签名库来注释酶序列。所使用的序列签名是使用一种新颖的模式挖掘方法得出的,该方法发现了由几个连续块(保守区段)组成的长基元。在EC组的蛋白质成员中,每个连续的嵌段都非常保守。此外,签名包括至少三个同时被守恒的序列块,即,经常在序列中一起被观察到。换句话说,序列标记由蛋白质序列中多个区域的残基组成,这与酶催化位点通常由序列中大量分离的残基组成的观点相呼应。 E1DS当前包含5421个序列签名,总共覆盖932个4数字EC编号。 E1DS是根据在催化位点图集中标注有催化位点的酶的集合进行评估的。当与著名的模式数据库PROSITE进行比较时,基于E1DS签名的预测被认为在识别催化位点和相关残基时更为敏感。 E1DS可以从http://e1ds.ee.ncku.edu.tw/获得,镜像站点可以在http://e1ds.csbb.ntu.edu.tw/找到。

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