...
首页> 外文期刊>The Plant Cell >Identification of Novel Plant Peroxisomal Targeting Signals by a Combination of Machine Learning Methods and in Vivo Subcellular Targeting Analyses
【24h】

Identification of Novel Plant Peroxisomal Targeting Signals by a Combination of Machine Learning Methods and in Vivo Subcellular Targeting Analyses

机译:结合机器学习方法和体内亚细胞靶向分析鉴定新型植物过氧化物酶体靶向信号

获取原文
获取原文并翻译 | 示例
           

摘要

In the postgenomic era, accurate prediction tools are essential for identification of the proteomes of cell organelles. Prediction methods have been developed for peroxisome-targeted proteins in animals and fungi but are missing specifically for plants. For development of a predictor for plant proteins carrying peroxisome targeting signals type 1 (PTS1), we assembled more than 2500 homologous plant sequences, mainly from EST databases. We applied a discriminative machine learning approach to derive two different prediction methods, both of which showed high prediction accuracy and recognized specific targeting-enhancing patterns in the regions upstream of the PTS1 tripeptides. Upon application of these methods to the Arabidopsis thaliana genome, 392 gene models were predicted to be peroxisome targeted. These predictions were extensively tested in vivo, resulting in a high experimental verification rate of Arabidopsis proteins previously not known to be peroxisomal. The prediction methods were able to correctly infer novel PTS1 tripeptides, which even included novel residues. Twenty-three newly predicted PTS1 tripeptides were experimentally confirmed, and a high variability of the plant PTS1 motif was discovered. These prediction methods will be instrumental in identifying low-abundance and stress-inducible peroxisomal proteins and defining the entire peroxisomal proteome of Arabidopsis and agronomically important crop plants.
机译:在后基因组时代,准确的预测工具对于鉴定细胞器蛋白质组至关重要。已经开发出了针对动物和真菌中针对过氧化物酶体的蛋白质的预测方法,但是对于植物而言却是缺失的。为了开发携带过氧化物酶体靶向信号类型1(PTS1)的植物蛋白的预测因子,我们主要从EST数据库中组装了2500多个同源植物序列。我们应用了判别式机器学习方法来推导两种不同的预测方法,这两种方法均显示出较高的预测准确性,并在PTS1三肽上游区域中识别出特定的靶向增强模式。这些方法应用于拟南芥基因组后,预计392基因模型是过氧化物酶体靶向的。这些预测已在体内进行了广泛测试,从而导致以前未知的过氧化物酶体拟南芥蛋白的高实验验证率。预测方法能够正确推断新的PTS1三肽,甚至包括新的残基。实验证实了二十三个新预测的PTS1三肽,并发现了植物PTS1基序的高变异性。这些预测方法将有助于鉴定低丰度和胁迫诱导的过氧化物酶体蛋白,并确定拟南芥和重要农作物的整个过氧化物酶体蛋白质组。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号