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Rama: a machine learning approach for ribosomal protein prediction in plants

机译:Rama:一种用于植物核糖体蛋白质预测的机器学习方法

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摘要

Ribosomal proteins (RPs) play a fundamental role within all type of cells, as they are major components of ribosomes, which are essential for translation of mRNAs. Furthermore, these proteins are involved in various physiological and pathological processes. The intrinsic biological relevance of RPs motivated advanced studies for the identification of unrevealed RPs. In this work, we propose a new computational method, termed Rama, for the prediction of RPs, based on machine learning techniques, with a particular interest in plants. To perform an effective classification, Rama uses a set of fundamental attributes of the amino acid side chains and applies a two-step procedure to classify proteins with unknown function as RPs. The evaluation of the resultant predictive models showed that Rama could achieve mean sensitivity, precision, and specificity of 0.91, 0.91, and 0.82, respectively. Furthermore, a list of proteins that have no annotation in Phytozome v.10, and are annotated as RPs in Phytozome v.12, were correctly classified by our models. Additional computational experiments have also shown that Rama presents high accuracy to differentiate ribosomal proteins from RNA-binding proteins. Finally, two novel proteins of Arabidopsis thaliana were validated in biological experiments. Rama is freely available at .
机译:核糖体蛋白(RPs)在所有类型的细胞中都起着基本作用,因为它们是核糖体的主要成分,而核糖体对于mRNA的翻译至关重要。此外,这些蛋白质参与各种生理和病理过程。 RPs的内在生物学相关性推动了对未公开RPs鉴定的深入研究。在这项工作中,我们提出了一种新的计算方法,称为Rama,用于基于机器学习技术对RP进行预测,对植物特别感兴趣。为了进行有效的分类,Rama使用了氨基酸侧链的一组基本属性,并应用了两步过程将功能未知的蛋白质分类为RP。对所得预测模型的评估表明,Rama可以分别达到0.91、0.91和0.82的平均灵敏度,精确度和特异性。此外,我们的模型正确分类了在Phytozome v.10中没有注释且在Phytozome v.12中被注释为RP的蛋白质列表。额外的计算实验还表明,Rama具有很高的区分RNA结合蛋白和核糖体蛋白的准确性。最后,在生物学实验中验证了拟南芥的两种新蛋白。可以在以下位置免费获得Rama。

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