• Media type: Text; E-Book; Report
  • Title: Similarity Measures for Clustering SNP Data
  • Contributor: GENICA Network [Author]; Ickstadt, Katja [Author]; Selinski, Silvia [Author]
  • imprint: Eldorado - Repositorium der TU Dortmund, 2005-10-12
  • Language: English
  • DOI: https://doi.org/10.17877/DE290R-14501
  • Keywords: single nucleotide polymorphism (SNP) ; similarity ; cluster analysis ; Matching Coefficient ; Pearson's Corrected Coefficient of Contingency ; sporadic breast cancer ; GENICA ; Flexible Matching Coefficient
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  • Description: The issue of suitable similarity measures for a particular kind of genetic data – so called SNP data – arises from the GENICA (Interdisciplinary Study Group on Gene Environment Interaction and Breast Cancer in Germany) case-control study of sporadic breast cancer. The GENICA study aims to investigate the influence and interaction of single nucleotide polymorphic (SNP) loci and exogenous risk factors. A single nucleotide polymorphism is a point mutation that is present in at least 1 % of a population. SNPs are the most common form of human genetic variations. In particular, we consider 65 SNP loci and 2 insertions of longer sequences in genes involved in the metabolism of hormones, xenobiotics and drugs as well as in the repair of DNA and signal transduction. Assuming that these single nucleotide changes may lead, for instance, to altered enzymes or to a reduced or enhanced amount of the original enzymes – with each alteration alone having minor effects – we aim to detect combinations of SNPs that under certain environmental conditions increase the risk of sporadic breast cancer. The search for patterns in the present data set may be performed by a variety of clustering and classification approaches. We consider here the problem of suitable measures of proximity of two variables or subjects as an indispensable basis for a further cluster analysis. Generally, clustering approaches are a useful tool to detect structures and to generate hypothesis about potential relationships in complex data situations. Searching for patterns in the data there are two possible objectives: the identification of groups of similar objects or subjects or the identification of groups of similar variables within the whole or within subpopulations. Comparing the individual genetic profiles as well as comparing the genetic information across subpopulations we discuss possible choices of similarity measures, in particular similarity measures based on the counts of matches and mismatches. New matching coefficients are introduced with a more ...
  • Access State: Open Access
  • Rights information: In Copyright