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首页> 外文期刊>Journal of Theoretical Biology >Robust feature generation for protein subchloroplast location prediction with a weighted GO transfer model
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Robust feature generation for protein subchloroplast location prediction with a weighted GO transfer model

机译:利用加权GO转移模型生成蛋白质叶绿体位置预测的强大特征生成

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摘要

Chloroplasts are crucial organelles of green plants and eukaryotic algae since they conduct photosynthesis. Predicting the subchloroplast location of a protein can provide important insights for understanding its biological functions. The performance of subchloroplast location prediction algorithms often depends on deriving predictive and succinct features from genomic and proteomic data. In this work, a novel weighted Gene Ontology (GO) transfer model is proposed to generate discriminating features from sequence data and GO Categories. This model contains two components. First, we transfer the GO terms of the homologous protein, and then assign the bit-score as weights to GO features. Second, we employ term-selection methods to determine weights for GO terms. This model is capable of improving prediction accuracy due to the tolerance of the noise derived from homolog knowledge transfer. The proposed weighted GO transfer method based on bit-score and a logarithmic transformation of CHI-square (WS-LCHI) performs better than the baseline models, and also outperforms the four off-the-shelf subchloroplast prediction methods. (C) 2014 Elsevier Ltd. All rights reserved.
机译:叶绿体是绿色植物和真核藻类的重要细胞器,因为它们进行光合作用。预测蛋白质的亚叶绿体位置可以为理解其生物学功能提供重要的见解。叶绿体位置预测算法的性能通常取决于从基因组和蛋白质组数据中得出预测和简洁特征。在这项工作中,提出了一种新颖的加权基因本体(GO)传输模型,以从序列数据和GO类别中生成区分特征。此模型包含两个组件。首先,我们转移同源蛋白的GO项,然后将位分数作为权重分配给GO特征。其次,我们采用术语选择方法来确定GO术语的权重。由于对同系知识转移产生的噪声的容忍度,该模型能够提高预测准确性。提出的基于位分数和CHI平方的对数转换的加权GO传输方法(WS-LCHI)的性能优于基线模型,并且也优于四种现成的亚叶绿体预测方法。 (C)2014 Elsevier Ltd.保留所有权利。

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