Literature DB >> 12361094

Data acquisition, data storage, and data presentation in a modern genetics laboratory.

D E Geraghty1, S Fortelny, B Guthrie, M Irving, H Pham, R Wang, R Daza, B Nelson, J Stonehocker, L Williams, Q Vu.   

Abstract

Modern genetic analysis can be divided into three main areas of investigation. The first is data acquisition, in the form of genomic sequence and the cataloguing of polymorphism data of the single nucleotide polymorphism variety (so called SNPs). Once identified, such genetic information can be adapted into high throughput tests to examine genetic information in large populations, making the analysis of sufficiently large numbers both cost and time effective so that relatively low-penetrant genetic effects can be accurately detected. The third step is correlating variation with phenotype (e.g. disease susceptibility or resistance) for a variety of disorders is paramount in our motivation and indeed is a common goal of modern human genetic analysis. While the technology to acquire vast amounts of genetic data is now well established and continues to expand, the ability to deal with such data, from the process of acquisition, storage, and analysis depends fundamentally on a solid informatics infrastructure as an essential component. Indeed, most of the major gains in productivity in this field are to be realized on the informatics front, and involve automating data acquisition, defining and sorting data in databases for quality control and analysis and facilitating access to data for the large variety of data analyses. Informatics-related issues including those relating to data acquisition, database structure, and analysis tools are summarized here in an effort to define some of the issues relevant to establishing informatics infrastructure in a small genetics laboratory focused on resequencing human immune response genes. From inherited diseases to drug efficacy to the specific genetic changes occurring during tumor development, this new field of medical genetics promises a profound impact on the state of human health. Ultimately, any and all advances in this field will continue to depend on major investments in informatics.

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Year:  2000        PMID: 12361094

Source DB:  PubMed          Journal:  Rev Immunogenet        ISSN: 1398-1714


  4 in total

1.  HLA-E, HLA-F, and HLA-G polymorphism: genomic sequence defines haplotype structure and variation spanning the nonclassical class I genes.

Authors:  Chul-Woo Pyo; Luke M Williams; Yuki Moore; Hironobu Hyodo; Shuying Sue Li; Lue Ping Zhao; Noriko Sageshima; Akiko Ishitani; Daniel E Geraghty
Journal:  Immunogenetics       Date:  2006-03-29       Impact factor: 2.846

2.  Genetic divergence of the rhesus macaque major histocompatibility complex.

Authors:  Riza Daza-Vamenta; Gustavo Glusman; Lee Rowen; Brandon Guthrie; Daniel E Geraghty
Journal:  Genome Res       Date:  2004-08       Impact factor: 9.043

3.  Genetic association of the antiviral restriction factor TRIM5alpha with human immunodeficiency virus type 1 infection.

Authors:  Emily C Speelmon; Devon Livingston-Rosanoff; Shuying Sue Li; Quyen Vu; John Bui; Daniel E Geraghty; Lue Ping Zhao; M Juliana McElrath
Journal:  J Virol       Date:  2006-03       Impact factor: 5.103

4.  NemaFootPrinter: a web based software for the identification of conserved non-coding genome sequence regions between C. elegans and C. briggsae.

Authors:  Davide Rambaldi; Alessandro Guffanti; Paolo Morandi; Giuseppe Cassata
Journal:  BMC Bioinformatics       Date:  2005-12-01       Impact factor: 3.169

  4 in total

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