Literature DB >> 11037338

Sequential methods of analysis for genome scans.

M A Province1.   

Abstract

As the preceding chapters illustrate, now that whole-genome scan analyses are becoming more common, there is considerable disagreement about the best way to balance between false positives and false negatives (traditionally called type I and type II errors in the statistical parlance). Type I and type II errors can be simultaneously controlled, if we are willing to let the sample size of analysis vary. This is the secret that Wald (1947) discovered in the 1940s that led to the theory of sequential sampling and was the inspiration for Newton Morton in developing the lod score method. We can exploit this idea further and capitalize on an old, but nearly forgotten theory: sequential multiple decision procedures (SMDP) (Bechhoffer, et al., 1968), which generalizes the standard "two-hypotheses" tests to consider multiple alternative hypotheses. Using this theory, we can develop a single, genome-wide test that simultaneously partitions all markers into "signal" and "noise" groups, with tight control over both type I and type II errors (Province, 2000). Conceiving this approach as an analysis tool for fixed sample designs (instead of a true sequential sampling scheme), we can let the data decide at which point we should move from the hypothesis generation phase of a genome scan (where multiple comparisons make the interpretation of p values and significance levels difficult and controversial), to a true hypothesis-testing phase (where the problem of multiple comparisons has been all but eliminated so that p values may be accepted at face value).

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Year:  2001        PMID: 11037338     DOI: 10.1016/s0065-2660(01)42039-6

Source DB:  PubMed          Journal:  Adv Genet        ISSN: 0065-2660            Impact factor:   1.944


  4 in total

1.  Some capabilities for model-based and model-free linkage analysis using the program package S.A.G.E. (Statistical Analysis for Genetic Epidemiology).

Authors:  A H Schnell; X Sun; R P Igo; R C Elston
Journal:  Hum Hered       Date:  2011-12-23       Impact factor: 0.444

2.  Mining genetic epidemiology data with Bayesian networks I: Bayesian networks and example application (plasma apoE levels).

Authors:  Andrei S Rodin; Eric Boerwinkle
Journal:  Bioinformatics       Date:  2005-05-24       Impact factor: 6.937

3.  Epistasis interaction of QTL effects as a genetic parameter influencing estimation of the genetic additive effect.

Authors:  Jan Bocianowski
Journal:  Genet Mol Biol       Date:  2013-03-04       Impact factor: 1.771

4.  Linkage studies of catechol-O-methyltransferase (COMT) and dopamine-beta-hydroxylase (DBH) cDNA expression levels.

Authors:  Chao Xing; Monica Torres-Caban; Tao Wang; Qing Lu; Guan Xing; Robert C Elston
Journal:  BMC Proc       Date:  2007-12-18
  4 in total

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