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Network-based prediction of metabolic enzymes' subcellular localization

机译:基于网络的代谢酶的亚细胞定位预测

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Motivation: Revealing the subcellular localization of proteins within membrane-bound compartments is of a major importance for inferring protein function. Though' current high-throughput localization experiments provide valuable -data, they are costly and time-consuming, and due to technical difficulties not readily applicable for many Eukaryotes. Physical characteristics of proteins, such as sequence targeting signals and amino acid composition are commonly used to predict subcellular localizations using computational approaches. Recently it was shown that protein-protein interaction (PPI) networks can be used to significantly improve the prediction accuracy of protein subcellular localization. However, as high-throughput -PPI data depend on costly high-throughput experiments and are currently available for only a few organisms, the scope of such methods is yet limited. Results: This study presents a novel constraint-based method for predicting subcellular localization of enzymes based on their embedding metabolic network, relying on a parsimony principle of a minimal number of cross-membrane metabolite transporters. In a cross-validation test of predicting known subcellular localization of yeast enzymes, the. method is shown to be markedly robust, providing accurate localization predictions even when only 20% of the known enzyme localizations are given as input. It is shown to outperform pathway enrichment-based methods both in terms of prediction accuracy and in its ability to predict the subcellular localization of entire metabolic pathways when no a-priori pathway-specific localization data is available (and hence enrichment methods are bound to fail). With the number of available metabolic networks already reaching more than 600 and growing fast, the new method may significantly contribute to the identification of enzyme localizations in many different organisms.
机译:动机:揭示膜结合隔室内的蛋白质的亚细胞定位是推断蛋白质功能的主要重要性。尽管“目前的高通量定位实验提供了有价值的 - 达达,但它们是昂贵且耗时的,因此由于技术困难而不是容易适用于许多真核节。蛋白质的物理特性,例如序列靶向信号和氨基酸组合物通常使用计算方法来预测亚细胞本地化。最近,结果表明,蛋白质 - 蛋白质相互作用(PPI)网络可用于显着提高蛋白质亚细胞定位的预测准确性。然而,随着高通量-PPI数据依赖于昂贵的高通量实验,目前仅适用于少数生物,因此此类方法的范围尚未受到限制。结果:本研究提出了一种基于新的基于约束的方法,用于基于其嵌入代谢网络预测酶的亚细胞定位,依赖于最小数量的跨膜代谢物转运蛋白的分析原理。在预测酵母酶的已知亚细胞定位的交叉验证试验中,。方法显示是明显稳健的,即使仅给予20%的已知酶局部,也可以提供准确的定位预测。在预测准确性方面显示出优异的基于途径的富集的方法,并且当没有获得先验的途径的途径的定位数据时,其能够预测整个代谢途径的亚细胞定位(因此富集方法必将失败)。随着已经达到600多个并快速增长的可用代谢网络的数量,新方法可能会显着促进许多不同生物中酶局部鉴定。

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