2017
DOI: 10.1038/s41598-017-16322-4
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Rama: a machine learning approach for ribosomal protein prediction in plants

Abstract: 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 particul… Show more

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Cited by 13 publications
(11 citation statements)
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“…Recently, increasing numbers of ML models have been developed and applied for solving problems in genomics. For example, ML approaches have been used to predict gene enhancer regions (Fernandez and Miranda-Saavedra, 2012), DNA-and RNA-binding protein sequences (Alipanahi et al, 2015), ribosomal proteins in plants (Carvalho et al, 2017), and long non-coding RNAs (Cao et al, 2018). ML frameworks have also been applied in TE analysis, including LTR retrotransposon identification (Schietgat et al, 2018) and general hierarchical TE classification (Nakano et al, 2017).…”
Section: Discussion Ensemble Pipeline For Tir Transposable Element Anmentioning
confidence: 99%
“…Recently, increasing numbers of ML models have been developed and applied for solving problems in genomics. For example, ML approaches have been used to predict gene enhancer regions (Fernandez and Miranda-Saavedra, 2012), DNA-and RNA-binding protein sequences (Alipanahi et al, 2015), ribosomal proteins in plants (Carvalho et al, 2017), and long non-coding RNAs (Cao et al, 2018). ML frameworks have also been applied in TE analysis, including LTR retrotransposon identification (Schietgat et al, 2018) and general hierarchical TE classification (Nakano et al, 2017).…”
Section: Discussion Ensemble Pipeline For Tir Transposable Element Anmentioning
confidence: 99%
“…ML can be applied to any data to generate predictive models (Carvalho et al, 2017). To make such a model first data set is cleaned, outliers are removed and missing values are imputed.…”
Section: Machine Learningmentioning
confidence: 99%
“…In plant science, ML has been applied for viral gene identification [ 58 ], the diagnosis of bacterial infection [ 59 ], salt stress tolerance [ 60 ], and the taxonomy of grapevine [ 61 ], in addition to global analysis of gene expression, in response to hormones and environmental stresses [ 62 ], plant immunity, and miRNA network prediction [ 54 ]. Trained models have also been successfully used for functional protein classification in plant genomes [ 63 ].…”
Section: Introductionmentioning
confidence: 99%