Literature DB >> 12050125

Hormonal genomics.

Chandra P Leo1, Sheau Yu Hsu, Aaron J W Hsueh.   

Abstract

The availability of the human genomic sequence is changing the way in which biological questions are addressed. Based on the prediction of genes from nucleotide sequences, homologies among their encoded amino acids can be analyzed and used to place them in distinct families. This serves as a first step in building hypotheses for testing the structural and functional properties of previously uncharacterized paralogous genes. As genomic information from more organisms becomes available, these hypotheses can be refined through comparative genomics and phylogenetic studies. Instead of the traditional single-gene approach in endocrine research, we are beginning to gain an understanding of entire mammalian genomes, thus providing the basis to reveal subfamilies and pathways for genes involved in ligand signaling. The present review provides selective examples of postgenomic approaches in the analysis of novel genes involved in hormonal signaling and their chromosomal locations, polymorphisms, splicing variants, differential expression, and physiological function. In the postgenomic era, scientists will be able to move from a gene-by-gene approach to a reconstructionistic one by reading the encyclopedia of life from a global perspective. Eventually, a community-based approach will yield new insights into the complexity of intercellular communications, thereby offering us an understanding of hormonal physiology and pathophysiology.

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Year:  2002        PMID: 12050125     DOI: 10.1210/edrv.23.3.0467

Source DB:  PubMed          Journal:  Endocr Rev        ISSN: 0163-769X            Impact factor:   19.871


  2 in total

1.  Identification of candidate disease genes by EST alignments, synteny, and expression and verification of Ensembl genes on rat chromosome 1q43-54.

Authors:  Ursula Vitt; Darryl Gietzen; Kristian Stevens; Jim Wingrove; Shanya Becha; Sean Bulloch; John Burrill; Narinder Chawla; Jennifer Chien; Matthew Crawford; Craig Ison; Liam Kearney; Mary Kwong; Joe Park; Jennifer Policky; Mark Weiler; Renee White; Yuming Xu; Sue Daniels; Howard Jacob; Michael I Jensen-Seaman; Jozef Lazar; Laura Stuve; Jeanette Schmidt
Journal:  Genome Res       Date:  2004-04       Impact factor: 9.043

2.  Identification of candidate genes for human pituitary development by EST analysis.

Authors:  Yueyun Ma; Xiaofei Qi; Jianjun Du; Shaojun Song; Dongyun Feng; Jia Qi; Zhidong Zhu; Xin Zhang; Huasheng Xiao; Zeguang Han; Xiaoke Hao
Journal:  BMC Genomics       Date:  2009-03-15       Impact factor: 3.969

  2 in total

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