Title of article :
Prediction of RNA- and DNA-Binding Proteins Using Various Machine Learning Classifiers
Author/Authors :
Poursheikhali Asghari ، Mehdi - Tarbiat Modares University , Abdolmaleki ، Parviz - Tarbiat Modares University
Abstract :
Background: Nucleic acid-binding proteins play major roles in different biological processes, such as transcription, splicing and translation. Therefore, the nucleic acidbinding function prediction of proteins is a step toward full functional annotation of proteins. The aim of our research was the improvement of nucleic-acid binding function prediction. Methods: In the current study, nine machine-learning algorithms were used to predict RNA- and DNA-binding proteins and also to discriminate between RNA-binding proteins and DNA-binding proteins. The electrostatic features were utilized for prediction of each function in corresponding adapted protein datasets. The leave-one-out crossvalidation process was used to measure the performance of employed classifiers. Results: Radial basis function classifier gave the best results in predicting RNA- and DNA-binding proteins in comparison with other classifiers applied. In discriminating between RNA- and DNA-binding proteins, multilayer perceptron classifier was the best one. Conclusion: Our findings show that the prediction of nucleic acid-binding function based on these simple electrostatic features can be improved by applied classifiers. Moreover, a reasonable progress to distinguish between RNA- and DNA-binding proteins has been achieved.
Keywords :
DNA , binding proteins , Machine , learning algorithms , RNA , binding proteins
Journal title :
Avicenna Journal of Medical Biotechnology
Journal title :
Avicenna Journal of Medical Biotechnology