[期刊论文]


Immuno-hybrid algorithm: a novel hybrid approach for GRN reconstruction

作   者:
A. S. Jereesh;V. K. Govindan;

出版年:2016

页    码:222 - 222
出版社:Springer Nature


摘   要:

Bio-inspired algorithms are widely used to optimize the model parameters of GRN. In this paper, focus is given to develop improvised versions of bio-inspired algorithm for the specific problem of reconstruction of gene regulatory network. The approach is applied to the data set that was developed by the DNA microarray technology through biological experiments in the lab. This paper introduced a novel hybrid method, which combines the clonal selection algorithm and BFGS Quasi-Newton algorithm. The proposed approach implemented for real world E. coli data set and identified most of the relations. The results are also compared with the existing methods and proven to be efficient.



关键字:

BFGS Quasi-Newton;Clonal selection algorithm;DNA microarray;Gene regulatory network;Immuno-hybrid algorithm;Optimization algorithm


所属期刊
3 Biotech
ISSN: 2190-572X
来自:Springer Nature