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NcPred for Accurate Nuclear Protein Prediction Using n-mer Statistics with Various Classification Algorithms

机译:使用n-mer统计数据和各种分类算法进行NcPred进行准确的核蛋白预测

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摘要

Prediction of nuclear proteins is one of the major challenges in genome annotation. A method, NcPred is described, for predicting nuclear proteins with higher accuracy exploiting n-mer statistics with different classification algorithms namely Alternating Decision (AD) Tree, Best First (BF) Tree, Random Tree and Adaptive (Ada) Boost. On BaCello dataset [1], NcPred improves about 20% accuracy with Random Tree and about 10% sensitivity with Ada Boost for Animal proteins compared to existing techniques. It also increases the accuracy of Fungal protein prediction by 20% and recall by 4% with AD Tree. In case of Human protein, the accuracy is improved by about 25% and sensitivity about 10% with BF Tree. Performance analysis of NcPred clearly demonstrates its suitability over the contemporary in-silico nuclear protein classification research.
机译:核蛋白的预测是基因组注释中的主要挑战之一。描述了一种方法NcPred,该方法用于利用具有不同分类算法(交替决策(AD)树,最佳优先(BF)树,随机树和自适应(Ada)Boost)的n-mer统计信息更准确地预测核蛋白。在BaCello数据集[1]上,与现有技术相比,NcPred使用Random Tree可以将动物蛋白的准确度提高约20%,使用Ada Boost来提高动物蛋白的敏感性约10%。它还可以使真菌蛋白预测的准确性提高20%,而使用AD Tree可以使召回率提高4%。对于人类蛋白质,BF树的准确性提高了约25%,灵敏度提高了约10%。 NcPred的性能分析清楚地证明了其对当代计算机内核蛋白分类研究的适用性。

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