Crossref journal-article
SAGE Publications
In Silico Biology: Journal of Biological Systems Modeling and Multi-Scale Simulation (179)
Abstract

The translation initiation site (TIS) prediction problem is about how to correctly identify TIS in mRNA, cDNA, or other types of genomic sequences. High prediction accuracy can be helpful in a better understanding of protein coding from nucleotide sequences. This is an important step in genomic analysis to determine protein coding from nucleotide sequences. In this paper, we present an in silico method to predict translation initiation sites in vertebrate cDNA or mRNA sequences. This method consists of three sequential steps as follows. In the first step, candidate features are generated using k-gram amino acid patterns. In the second step, a small number of top-ranked features are selected by an entropy-based algorithm. In the third step, a classification model is built to recognize true TISs by applying support vector machines or ensembles of decision trees to the selected features. We have tested our method on several independent data sets, including two public ones and our own extracted sequences. The experimental results achieved are better than those reported previously using the same data sets. Our high accuracy not only demonstrates the feasibility of our method, but also indicates that there might be "amino acid" patterns around TIS in cDNA and mRNA sequences.

Bibliography

Liu, H., Han, H., Li, J., & Wong, L. (2004). Using Amino Acid Patterns to Accurately Predict Translation Initiation Sites. In Silico Biology: Journal of Biological Systems Modeling and Multi-Scale Simulation, 4(3), 255–269.

Authors 4
  1. Huiqing Liu (first)
  2. Hao Han (additional)
  3. Jinyan Li (additional)
  4. Limsoon Wong (additional)
References 0 Referenced 25

None

Dates
Type When
Created 7 months, 1 week ago (Jan. 20, 2025, 5:56 a.m.)
Deposited 5 months, 3 weeks ago (March 10, 2025, 12:33 p.m.)
Indexed 1 month, 4 weeks ago (July 4, 2025, 2:22 p.m.)
Issued 21 years, 8 months ago (Jan. 1, 2004)
Published 21 years, 8 months ago (Jan. 1, 2004)
Published Online 21 years, 8 months ago (Jan. 1, 2004)
Published Print 21 years, 1 month ago (Aug. 1, 2004)
Funders 0

None

@article{Liu_2004, title={Using Amino Acid Patterns to Accurately Predict Translation Initiation Sites}, volume={4}, ISSN={1434-3207}, url={http://dx.doi.org/10.3233/isb-00132}, DOI={10.3233/isb-00132}, number={3}, journal={In Silico Biology: Journal of Biological Systems Modeling and Multi-Scale Simulation}, publisher={SAGE Publications}, author={Liu, Huiqing and Han, Hao and Li, Jinyan and Wong, Limsoon}, year={2004}, month=jan, pages={255–269} }