Title
MULTiPly: a novel multi-layer predictor for discovering general and specific types of promoters.
Abstract
Motivation: Promoters are short DNA consensus sequences that are localized proximal to the transcription start sites of genes, allowing transcription initiation of particular genes. However, the precise prediction of promoters remains a challenging task because individual promoters often differ from the consensus at one or more positions. Results: In this study, we present a new multi-layer computational approach, called MULTiPly, for recognizing promoters and their specific types. MULTiPly took into account the sequences themselves, including both local information such as k-tuple nucleotide composition, dinucleotide-based auto covariance and global information of the entire samples based on bi-profile Bayes and k-nearest neighbour feature encodings. Specifically, the F-score feature selection method was applied to identify the best unique type of feature prediction results, in combination with other types of features that were subsequently added to further improve the prediction performance of MULTiPly. Benchmarking experiments on the benchmark dataset and comparisons with five state-of-the-art tools show that MULTiPly can achieve a better prediction performance on 5-fold cross-validation and jackknife tests. Moreover, the superiority of MULTiPly was also validated on a newly constructed independent test dataset. MULTiPly is expected to be used as a useful tool that will facilitate the discovery of both general and specific types of promoters in the post-genomic era.
Year
DOI
Venue
2019
10.1093/bioinformatics/btz016
BIOINFORMATICS
Field
DocType
Volume
Data mining,Promoter,Multi layer,Computer science
Journal
35
Issue
ISSN
Citations 
17
1367-4803
3
PageRank 
References 
Authors
0.38
19
9
Name
Order
Citations
PageRank
Meng Zhang130.38
Fuyi Li29711.25
Tatiana T. Marquez-Lago3779.01
André Leier419719.87
Cunshuo Fan530.38
Chee Keong Kwoh6375.52
Kuo-Chen Chou794664.26
Jiangning Song837441.93
Cangzhi Jia930.72