Strategies for conditional two-locus nonparametric linkage analysis

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In this article we deal with two-locus nonparametric linkage (NPL) analysis, mainly in the context of conditional analysis. This means that one incorporates single-locus analysis information through conditioning when performing a two-locus analysis. Here we describe different strategies for using this approach. Cox et al. [Nat Genet 1999;21:213-215] implemented this as follows: (i) Calculate the one-locus NPL process over the included genome region(s). (ii) Weight the individual pedigree NPL scores using a weighting function depending on the NPL scores for the corresponding pedigrees at specific conditioning loci. We generalize this by conditioning with respect to the inheritance vector rather than the NPL score and by separating between the case of known (predefined) and unknown (estimated) conditioning loci. In the latter case we choose conditioning locus, or loci, according to predefined criteria. The most general approach results in a random number of selected loci, depending on the results from the previous one-locus analysis. Major topics in this article include discussions on optimal score functions with respect to the noncentrality parameter (NCP), and how to calculate adequate p values and perform power calculations. We also discuss issues related to multiple tests which arise from the two-step procedure with several conditioning loci as well as from the genome-wide tests.

Original languageEnglish
JournalHuman Heredity
Volume66
Issue number3
Pages (from-to)138-156
Number of pages19
ISSN0001-5652
DOIs
Publication statusPublished - 1 Jul 2008

    Research areas

  • Conditional linkage analysis, Conditioning loci, Genome-wide significance and power calculations, Monte Carlo simulation, Noncentrality parameter, Nonparametric linkage analysis, ROC curves, Score functions, Two-locus linkage analysis, Two-step procedure

ID: 203374273