途径分析自动化代谢途径预测

L. Pireddu, B. Poulin, D. Szafron, P. Lu, D. Wishart
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引用次数: 15

摘要

代谢途径对我们理解生物学至关重要。新生物测序的速度超过了我们通过实验确定其代谢途径信息的能力。近年来,通过实验或预测,已经成功地实现了对这些生物体中单个蛋白质的自动化注释。然而,为了利用代谢途径的成功,我们需要在我们快速增长的测序生物体列表中自动识别它们。我们提出了一个原型系统,用于预测重要反应的催化剂,并将预测的催化剂和反应组织到先前定义的代谢途径中。我们比较了包括序列相似性(BLAST)、隐马尔可夫模型(HMM)和支持向量机(SVM)在内的各种预测器。我们发现对不同的反应使用不同的预测因子是有好处的。我们在13种生物的10种代谢途径上验证了我们的原型,在预测所有反应的催化剂蛋白方面,我们获得了71.5%的交叉验证精度和91.5%的召回率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pathway Analyst Automated Metabolic Pathway Prediction
Metabolic pathways are crucial to our understanding of biology. The speed at which new organisms are being sequenced is outstripping our ability to experimentally determine their metabolic pathway information. In recent years several initiatives have been successful in automating the annotations of individual proteins in these organisms, either experimentally or by prediction. However, to leverage the success of metabolic pathways we need to automate their identification in our rapidly growing list of sequenced organisms. We present a prototype system for predicting the catalysts of important reactions and for organizing the predicted catalysts and reactions into previously defined metabolic pathways. We compare a variety of predictors that incorporate sequence similarity (BLAST), hidden Markov models (HMM) and Support Vector Machines (SVM). We found that there is an advantage to using different predictors for different reactions. We validate our prototype on 10 metabolic pathways across 13 organisms for which we obtained a cross-validation precision of 71.5% and recall of 91.5% in predicting the catalyst proteins of all reactions.
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