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Construction of Gene Interaction Networks from Gene Expression Data Based on Evolutionary Computation

진화연산에 기반한 유전자 발현 데이터로부터의 유전자 상호작용 네트워크 구성

  • 정성훈 (한성대학교 정보공학부) ;
  • 조광현 (서울대학교 의과대학 의학과 및 서울대학교 생명공학연구원)
  • Published : 2004.12.01

Abstract

This paper investigates construction of gene (interaction) networks from gene expression time-series data based on evolutionary computation. To illustrate the proposed approach in a comprehensive way, we first assume an artificial gene network and then compare it with the reconstructed network from the gene expression time-series data generated by the artificial network. Next, we employ real gene expression time-series data (Spellman's yeast data) to construct a gene network by applying the proposed approach. From these experiments, we find that the proposed approach can be used as a useful tool for discovering the structure of a gene network as well as the corresponding relations among genes. The constructed gene network can further provide biologists with information to generate/test new hypotheses and ultimately to unravel the gene functions.

Keywords

References

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