RNA-protein interactions have long being recognised as crucial regulators of gene expression. Recently, the development of scalable experimental techniques to measure these interactions has revolutionised the field, leading to the production of large-scale datasets which offer both opportunities and challenges for machine learning techniques. In this brief note, we will discuss some of the major stumbling blocks towards the use of machine learning in computational RNA biology, focusing specifically on the problem of predicting RNA-protein interactions from next-generation sequencing data.
Contents
- Review Article
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Requires Authentication UnlicensedChallenges for machine learning in RNA-protein interaction predictionLicensedMay 2, 2022
- Research Articles
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Requires Authentication UnlicensedDistinct characteristics of correlation analysis at the single-cell and the population levelLicensedAugust 2, 2022
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Requires Authentication UnlicensedpwrBRIDGE: a user-friendly web application for power and sample size estimation in batch-confounded microarray studies with dependent samplesLicensedOctober 10, 2022
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Requires Authentication UnlicensedUse of SVM-based ensemble feature selection method for gene expression data analysisLicensedJuly 14, 2022
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Requires Authentication UnlicensedA robust association test with multiple genetic variants and covariatesLicensedJune 6, 2022
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Requires Authentication UnlicensedEstimation of the covariance structure from SNP allele frequenciesLicensedMay 26, 2022
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Requires Authentication UnlicensedGMEPS: a fast and efficient likelihood approach for genome-wide mediation analysis under extreme phenotype sequencingLicensedMay 2, 2022
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Requires Authentication UnlicensedSparse latent factor regression models for genome-wide and epigenome-wide association studiesLicensedMarch 7, 2022