Abstract
Genetic algorithms require a fitness function to evaluate individuals in a population. The fitness function essentially captures the dependence of the phenotype on the genotype. In the Phenomic approach we represent the phenotype of each individual in a simulated environment where phenotypic interactions are enforced. In reconstruction type of problems, the model is reconstructed from the data that maps the input to the output. In the phenomic algorithm, we use this data to replace the fitness function. Thus we achieve survival-of-the-fittest without the need for a fitness function. Though limited to reconstruction type problems where such mapping data is available, this novel approach nonetheless overcomes the daunting task of providing the elusive fitness function, which has been a stumbling block so far to the widespread use of genetic algorithms. We present an algorithm called Integrated Pheneto-Genetic Algorithm (IPGA), wherein the genetic algorithm is used to process genotypic information and the phenomic algorithm is used to process phenotypic information, thereby providing a holistic approach which completes the evolutionary cycle. We apply this novel evolutionary algorithm to the problem of elucidation of gene networks from microarray data. The algorithm performs well and provides stable and accurate results when compared to some other existing algorithms.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Preview
Unable to display preview. Download preview PDF.
Similar content being viewed by others
References
Goldberg, D.E.: Genetic Algorithms for Search, Optimization, and Machine Learning. Addison-Wesley, Reading (1989)
Deb, K.: Multi-objective Optimization using Evolutionary Algorithms. Wiley, Chichester (2001)
Lewis, P.S., Mosher, J.C.: Genetic algorithms for neuromagnetic source reconstruction. In: 1994 IEEE International Conference on Acoustics, Speech, and Signal Processing, ICASSP 1994, Adelaide, vol. 5, pp. 293–296 (1994)
Munshi, P.: X-ray and ultrasonic tomography. Insight - Non-Destructive Testing and Condition Monitoring 45(1), 47–50 (2003)
Kodali, S.P., Bandaru, S., Deb, K., Munshi, P., Kishore, N.N.: Applicability of genetic algorithms to reconstruction of projected data from ultrasonic tomography. In: Proceedings of the 10th Annual Conference on Genetic and Evolutionary Computation, Atlanta, pp. 1705–1706 (2008)
Mou, C., Peng, L., Yao, D., Xiao, D.: Image Reconstruction Using a Genetic Algorithm for Electrical Capacitance Tomography. Tsinghua Science & Technology, Science Direct 10(5), 587–592 (2005)
Li, X., Kodama, T., Uchikawa, Y.: A reconstruction method of surface morphology with genetic algorithms in the scanning electron microscope. J. Electron Microscopy (Tokyo) 49(5), 599–606 (2000)
Huang, C.-H., Lu, H.-C., Chiu, C.-C., Wysocki, T.A., Wysocki, B.J.: Image reconstruction of buried multiple conductors by genetic algorithms. International Journal of Imaging Systems and Technology 18(4), 276–281 (2008)
Xiyu, L., Mingxi, T., Frazer, J.H.: Shape reconstruction by genetic algorithms and artificial neural networks. Engineering Computations 20(2), 129–151 (2003)
Fayolle, P.-A., Rosenberger, C., Toinard, C.: 3D Shape Reconstruction of Template Models Using Genetic Algorithms. In: 17th International Conference on Pattern Recognition (ICPR 2004), vol. 2, pp. 269–272 (2004)
Somogyi, R., Fuhrman, S., Askenazi, M., Wuensche, A.: The gene expression matrix: towards the extraction of genetic network architectures. In: Proc. of Second World Cong. of Nonlinear Analysts (WCNA 1996), vol. 30(3), pp. 1815–1824 (1996)
Liang, S., Fuhrman, S., Somogyi, R.: REVEAL, a general reverse engineering algorithm for inference of genetic network architectures. In: Pacific Symp. on Biocomputing, vol. 3, pp. 18–29 (1998)
Akutsu, T., Miyano, S., Kuhara, S.: Identification of genetic networks from a small number of gene expression patterns under the boolean network model. In: Pacific Symp. on Biocomputing, vol. 4, pp. 17–28 (1999)
Akutsu, T., Miyano, S., Kuhara, S.: Algorithms for inferring qualitative models of biological networks. In: Pacific Symp. on Biocomputing (2000)
D’haeseleer, P., Liang, S., Somogyi, R.: Genetic network inference: from co-expression clustering to reverse engineering. Bioinformatics 16(8), 707–726 (2000)
Savageau, M.A.: Power-law formalism: a canonical nonlinear approach to modeling and analysis. In: Proceedings of the World Congress of Nonlinear Analysts 1992, pp. 3323–3334 (1992)
Spieth, C., Streichert, F., Speer, N., Zell, A.: Optimizing Topology and Parameters of Gene Regulatory Network Models from Time Series Experiments. In: Deb, K., et al. (eds.) GECCO 2004. LNCS, vol. 3102, pp. 461–470. Springer, Heidelberg (2004)
Noman, N., Iba, H.: Reverse engineering genetic networks using evolutionary computation. Genome Informatics 16(2), 205–214 (2005)
Lubovac, Z., Olsson, B.: Towards reverse engineering of genetic regulatory networks. Technical Report No. HS-IDA-TR-03-003, University of Skovde, Sweden (2003)
Kampis, G.: A Causal Model of Evolution. In: Proc. of 4th Asia-Pacific Conf. on Simulated Evol. and Learning (SEAL 2002), pp. 836–840 (2002)
Dawkins, R.: The blind watchmaker. Penguin Books (1988)
D’Souza, R.G.L., Chandra Sekaran, K., Kandasamy, A.: A Phenomic Algorithm for Reconstruction of Gene Networks. In: IV International Conference on Computational Intelligence and Cognitive Informatics, Venice, CICI 2007, WASET, pp. 53–58 (2007)
D’Souza, R.G.L., Chandra Sekaran, K., Kandasamy, A.: Reconstruction of Gene Networks Using Phenomic Algorithms. International Journal of Artificial Intelligence and Applications (IJAIA) 1(2) (2010)
Chu, S., DeRisi, J., Eisen, M., et al.: The transcriptional program of sporulation in budding yeast. Science 282, 699–705 (1998)
Kupiec, M., Ayers, B., Esposito, R.E., Mitchell, A.P.: The molecular and cellular biology of the yeast Saccaromyces. Cold Spring Harbor, 889–1036 (1997)
Author information
Authors and Affiliations
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2010 Springer-Verlag Berlin Heidelberg
About this paper
Cite this paper
D’Souza, R.G.L., Chandra Sekaran, K., Kandasamy, A. (2010). A Phenomic Approach to Genetic Algorithms for Reconstruction of Gene Networks. In: Ranka, S., et al. Contemporary Computing. IC3 2010. Communications in Computer and Information Science, vol 94. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-14834-7_19
Download citation
DOI: https://doi.org/10.1007/978-3-642-14834-7_19
Publisher Name: Springer, Berlin, Heidelberg
Print ISBN: 978-3-642-14833-0
Online ISBN: 978-3-642-14834-7
eBook Packages: Computer ScienceComputer Science (R0)