A Teaching-Learning-Based Optimization for Operon Prediction

Authors

  • Mei-Lee Hwang
  • Yi-Cheng Chiang
  • Yu-Da Lin
  • Li-Yeh Chuang
  • Cheng-Hong Yang Dept. of Electronic Eng., National Kaohsiung University of Applied Sciences, Kaohsiung, Taiwan

Keywords:

operon prediction, teaching-learning-based optimization, intergenic distance, metabolic pathway, cluster of orthologous groups

Abstract

Operons are the basic unit of transcription and can be used to understand the transcription regulation in a given prokaryotic genome. Currently, the sequence and gene coordinates of organisms can be rapidly identified, but their operons remain unknown. Moreover, the experimental methods detecting operons are extremely difficult and time-consuming to execute. Operon prediction as pretreatment can greatly reduce the cost of performing an experimental assay. Many algorithms and biological properties have been proposed but the resulting predictions still require improvement in terms of sensitivity, specificity, and accuracy. This study uses a teaching-learning-based optimization (TLBO) algorithm with three biological properties for operon prediction: the intergenic distance, the metabolic pathway, and the cluster of orthologous groups (COG). These properties for the Escherichia coli genome are used to train the evaluation standards of fitness function of gene pairs. The experimental results use the accuracy (ACC), sensitivity (SN) and specificity (SP) to evaluate our prediction method and as a basis for comparison with other methods to validate that the proposed method can effectively solve operon prediction problems.

References

E. Jacob, R. Sasikumar, and K. N. Nair, "A fuzzy guided genetic algorithm for operon prediction," Bioinformatics, vol. 21, pp. 1403-1407, Apr 15 2005.

R. W. Brouwer, O. P. Kuipers, and S. A. van Hijum, "The relative value of operon predictions," Brief Bioinform, vol. 9, pp. 367-375, Sep 2008.

Y. Zheng, J. D. Szustakowski, L. Fortnow, R. J. Roberts, and S. Kasif, "Computational identification of operons in microbial genomes," Genome Res, vol. 12, pp. 1221-1230, Aug 2002.

R. L. Tatusov, E. V. Koonin, and D. J. Lipman, "A genomic perspective on protein families," Science, vol. 278, pp. 631-637, Oct 24 1997.

M. Ashburner, C. A. Ball, J. A. Blake, D. Botstein, H. Butler, J. M. Cherry, A. P. Davis, K. Dolinski, S. S. Dwight, J. T. Eppig, M. A. Harris, D. P. Hill, L. Issel-Tarver, A. Kasarskis, S. Lewis, J. C. Matese, J. E. Richardson, M. Ringwald, G. M. Rubin, and G. Sherlock, "Gene ontology: tool for the unification of biology. The Gene Ontology Consortium," Nat Genet, vol. 25, pp. 25-29, May 2000.

T. Yada, M. Nakao, Y. Totoki, and K. Nakai, "Modeling and predicting transcriptional units of Escherichia coligenes using hidden Markov models," Bioinformatics, vol. 15, pp. 987-993, 1999.

G. Q. Zhang, Z. W. Cao, Q. M. Luo, Y. D. Cai, and Y. X. Li, "Operon prediction based on SVM," Comput Biol Chem, vol. 30, pp. 233-240, Jun 2006.

M. Craven, D. Page, J. Shavlik, J. Bockhorst, and J. Glasner, "A probabilistic learning approach to whole-genome operon prediction," Proc Int Conf Intell Syst Mol Biol, vol. 8, pp. 116-127, 2000.

J. Bockhorst, M. Craven, D. Page, J. Shavlik, and J. Glasner, "A Bayesian network approach to operon prediction," Bioinformatics, vol. 19, pp. 1227-1235, Jul 1 2003.

S. Wang, Y. Wang, W. Du, F. Sun, X. Wang, C. Zhou, and Y. Liang, "A multi-approaches-guided genetic algorithm with application to operon prediction," Artif Intell Med, vol. 41, pp. 151-159, Oct 2007.

R. Rao, V. Savsani, and D. Vakharia, "Teaching–learning-based optimization: A novel method for constrained mechanical design optimization problems," Computer-Aided Design, vol. 43, pp. 303-315, 2011.

Y. Yan and J. Moult, "Detection of operons," Proteins, vol. 64, pp. 615-628, Aug 15 2006.

P. Romero and P. D. Karp, "Using functional and organizational information to improve genome-wide computational prediction of transcription units on pathway-genome databases," Bioinformatics, vol. 20, pp. 709-717, 2004.

M. Pertea, K. Ayanbule, M. Smedinghoff, and S. L. Salzberg, "OperonDB: a comprehensive database of predicted operons in microbial genomes," Nucleic Acids Res, vol. 37, pp. D479-D482, Jan 2009.

N. Sierro, Y. Makita, M. de Hoon, and K. Nakai, "DBTBS: a database of transcriptional regulation in Bacillus subtilis containing upstream intergenic conservation information," Nucleic Acids Res, vol. 36, pp. D93-D96, Jan 2008.

S. Okuda, T. Katayama, S. Kawashima, S. Goto, and M. Kanehisa, "ODB: a database of operons accumulating known operons across multiple genomes," Nucleic Acids Res, vol. 34, pp. D358-D362, Jan 1 2006.

P. Dam, V. Olman, K. Harris, Z. Su, and Y. Xu, "Operon prediction using both genome-specific and general genomic information," Nucleic Acids Res, vol. 35, pp. 288-298, 2007.

H. Salgado, G. Moreno-Hagelsieb, T. F. Smith, and J. Collado-Vides, "Operons in Escherichia coli: genomic analyses and predictions," Proc Natl Acad Sci U S A, vol. 97, pp. 6652-6657, Jun 6 2000.

L.-Y. Chuang, J.-H. Tsai, and C.-H. Yang, "Binary particle swarm optimization for operon prediction," Nucleic Acids Res, vol. 38, pp. e128-e128, 2010.

G. Li, D. Che, and Y. Xu, "A universal operon predictor for prokaryotic genomes," J Bioinform Comput Biol, vol. 7, pp. 19-38, Feb 2009.

P. Dam, V. Olman, K. Harris, Z. Su, and Y. Xu, "Operon prediction using both genome-specific and general genomic information," Nucleic Acids Res, vol. 35, pp. 288-298, 2007.

X. Chen, Z. Su, P. Dam, B. Palenik, Y. Xu, and T. Jiang, "Operon prediction by comparative genomics: an application to the Synechococcus sp. WH8102 genome," Nucleic Acids Res, vol. 32, pp. 2147-2157, 2004.

L. Wang, J. D. Trawick, R. Yamamoto, and C. Zamudio, "Genome-wide operon prediction in Staphylococcus aureus," Nucleic Acids Res, vol. 32, pp. 3689-3702, 2004.

P. Roback, J. Beard, D. Baumann, C. Gille, K. Henry, S. Krohn, H. Wiste, M. I. Voskuil, C. Rainville, and R. Rutherford, "A predicted operon map for Mycobacterium tuberculosis," Nucleic Acids Res, vol. 35, pp. 5085-5095, 2007.

Downloads

Published

2014-10-15

How to Cite

A Teaching-Learning-Based Optimization for Operon Prediction. (2014). Asian Journal of Engineering and Technology, 2(5). https://ajouronline.com/index.php/AJET/article/view/1865

Similar Articles

21-30 of 77

You may also start an advanced similarity search for this article.