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Homology-Free Prediction of Functional Class of Proteins and Peptides by Support Vector Machines

机译:支持向量机对蛋白质和多肽功能类别的无均相预测

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摘要

Protein and peptide sequences contain clues for functional prediction.A challenge is to predict sequences that show low or no homology to proteins or peptides of known function.A machine learning method,support vector machines (SVM),has recently been explored for predicting functional class of proteins and peptides from sequence-derived properties irrespective of sequence similarity,which has shown impressive performance for predicting a wide range of protein and peptide classes including certain low- and non- homologous sequences.This method serves as a new and valuable addition to complement the extensively-used alignment-based,clustering-based,and structure-based functional prediction methods.This article evaluates the strategies,current progresses,reported prediction performances,available software tools,and underlying difficulties in using SVM for predicting the functional class of proteins and peptides.
机译:蛋白质和肽序列包含功能预测的线索。面临的挑战是预测与已知功能的蛋白质或肽的同源性低或没有同源性的序列。最近已经探索了一种机器学习方法,支持向量机(SVM)来预测功能类别不论序列相似性如何,都可以从序列衍生的特性中分离出蛋白质和多肽,这在预测各种蛋白质和多肽类别(包括某些低同源和非同源序列)方面表现出令人印象深刻的性能。广泛使用的基于比对,基于聚类和基于结构的功能预测方法。本文评估了使用SVM预测蛋白质功能类别的策略,当前进展,报告的预测性能,可用的软件工具以及潜在的困难。和肽。

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