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Non-canonical peroxisome targeting signals: identification of novel PTS1 tripeptides and characterization of enhancer elements by computational permutation analysis

机译:非规范的过氧化物酶体靶向信号:新型PTS1三肽的鉴定和增强子元素的计算置换分析

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摘要

BackgroundHigh-accuracy prediction tools are essential in the post-genomic era to define organellar proteomes in their full complexity. We recently applied a discriminative machine learning approach to predict plant proteins carrying peroxisome targeting signals (PTS) type 1 from genome sequences. For Arabidopsis thaliana 392 gene models were predicted to be peroxisome-targeted. The predictions were extensively tested in vivo, resulting in a high experimental verification rate of Arabidopsis proteins previously not known to be peroxisomal.
机译:背景技术在后基因组时代,高精度预测工具对于定义完整复杂的细胞器蛋白质组至关重要。我们最近应用了一种判别式机器学习方法,以预测从基因组序列携带1型过氧化物酶体靶向信号(PTS)的植物蛋白。对于拟南芥,预计392基因模型是过氧化物酶体靶向的。在体内对这一预测进行了广泛的测试,从而导致了以前未知的过氧化物酶体拟南芥蛋白的高实验验证率。

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