A Modified Statistically Optimal Null Filter Method for Recognizing Protein-coding Regions
- Author:
Zhang LEI
1
;
Tian FENGCHUN
;
Wang SHIYUAN
Author Information
1. College of Communication Engineering, Chongqing University, Chongqing 400044, China
- Keywords:
Gene prediction;
Biological signal processing;
Protein-coding region;
Square deviation gain
- From:
Genomics, Proteomics & Bioinformatics
2012;10(3):166-173
- CountryChina
- Language:Chinese
-
Abstract:
Computer-aided protein-coding gene prediction in uncharacterized genomic DNA sequences is one of the most important issues of biological signal processing.A modified filter method based on a statistically optimal null filter (SONF) theory is proposed for recognizing protein-coding regions.The square deviation gain (SDG) between the input and output of the model is used to identify the coding regions.The effective SDG amplification model with Class Ⅰ and Class Ⅱ enhancement is designed to suppress the non-coding regions.Also,an evaluation algorithm has been used to compare the modified model with most gene prediction methods currently available in terms of sensitivity,specificity and precision.The performance for identification of protein-coding regions has been evaluated at the nucleotide level using benchmark datasets and 91.4%,96%,93.7% were obtained for sensitivity,specificity and precision,respectively.These results suggest that the proposed model is potentially useful in gene finding field,which can help recognize protein-coding regions with higher precision and speed than present algorithms.