Abstract

Since the importance of DNA-binding proteins in multiple biomolecular functions has been recognized, an increasing number of researchers are attempting to identify DNA-binding proteins. In recent years, the machine learning methods have become more and more compelling in the case of protein sequence data soaring, because of their favorable speed and accuracy. In this paper, we extract three features from the protein sequence, namely NMBAC (Normalized Moreau-Broto Autocorrelation), PSSM-DWT (Position-specific scoring matrix—Discrete Wavelet Transform), and PSSM-DCT (Position-specific scoring matrix—Discrete Cosine Transform). We also employ feature selection algorithm on these feature vectors. Then, these features are fed into the training SVM (support vector machine) model as classifier to predict DNA-binding proteins. Our method applys three datasets, namely PDB1075, PDB594 and PDB186, to evaluate the performance of our approach. The PDB1075 and PDB594 datasets are employed for Jackknife test and the PDB186 dataset is used for the independent test. Our method achieves the best accuracy in the Jacknife test, from 79.20% to 86.23% and 80.5% to 86.20% on PDB1075 and PDB594 datasets, respectively. In the independent test, the accuracy of our method comes to 76.3%. The performance of independent test also shows that our method has a certain ability to be effectively used for DNA-binding protein prediction. The data and source code are at https://doi.org/10.6084/m9.figshare.5104084.

Highlights

  • DNA-binding proteins play an important role in a variety of biomolecule functions, such as transcription, the detection of DNA damage and replication

  • In the Jackknife test, we apply our method on the PDB1075 and PDB594 datasets to analyze the effectiveness of feature extraction and feature selection, the performance of our method is compared with other methods

  • Our prediction model is tested on the independent dataset PDB186 and compared with the results of other methods

Read more

Summary

Introduction

DNA-binding proteins play an important role in a variety of biomolecule functions, such as transcription, the detection of DNA damage and replication. The importance of DNA-binding proteins is facilitating the development of various methods for identifying them. Experimental methods that have been applied to identify DNA-binding proteins include filter binding assays, genetic analysis, chromatin immune precipitation on microarrays and X-ray crystallography [1, 2]. In order to further facilitate the calculation process, there are some web servers have been developed to generate feature vectors of DNA, RNA or protein sequences, such as a web-server called Pse-in-One [7]. According to various feature information, the ML-based approachs are mainly composed of structure information-based [8,9,10,11,12,13,14,15,16,17,18] and sequence information-based method [1, 2, 19,20,21,22,23,24,25,26,27,28,29,30,31,32,33,34,35]

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call