Computational identification of N4-methylcytosine sites in the mouse genome with machine-learning method
Hasan Zulfiqar, Rida Sarwar Khan, Farwa Hassan, Kyle Hippe, Cassandra Hunt, Hui Ding, Xiaoming Song, Renzhi Cao
Abstract
-spaced nucleic acid pairs. Subsequently, these features were optimized by using minimum redundancy maximum relevance (mRMR) with incremental feature selection (IFS) and five-fold cross-validation. The obtained optimal features were inputted into random forest classifier for discriminating 4mC from non-4mC sites in mouse. On the independent dataset, our model could yield the overall accuracy of 85.41%, which was approximately 3.8% -6.3% higher than the two existing models, i4mC-Mouse and 4mCpred-EL respectively. The data and source code of the model can be freely download from https://github.com/linDing-groups/model_4mc.
Topics & Concepts
Random forestComputer scienceGenomeComputational biologyCoding (social sciences)Source codeArtificial intelligenceRedundancy (engineering)Feature selectionClassifier (UML)DNAMachine learningBiologyGeneticsMathematicsGeneProgramming languageOperating systemStatisticsMachine Learning in BioinformaticsGenomics and Phylogenetic StudiesRNA and protein synthesis mechanisms