Comparison of properties of tests for assessing tumor clonality Journal Article


Authors: Ostrovnaya, I.; Seshan, V. E.; Begg, C. B.
Article Title: Comparison of properties of tests for assessing tumor clonality
Abstract: In a recent article Begg et al. (2007, Biometrics 63, 522-530) proposed a statistical test to determine whether or not a diagnosed second primary tumor is biologically independent of the original primary tumor, by comparing patterns of allelic losses at candidate genetic loci. The proposed concordant mutations test is a conditional test, an adaptation of Fisher's exact test, that requires no knowledge of the marginal mutation probabilities. The test was shown to have generally good properties, but is susceptible to anticonservative bias if there is wide variation in mutation probabilities between loci, or if the individual mutation probabilities of the parental alleles for individual patients differ substantially from each other. In this article, a likelihood ratio test is derived in an effort to address these validity issues. This test requires prespecification of the marginal mutation probabilities at each locus, parameters for which some information will typically be available in the literature. In simulations this test is shown to be valid, but to be considerably less efficient than the concordant mutations test for sample sizes (numbers of informative loci) typical of this problem. Much of the efficiency deficit can be recovered, however, by restricting the allelic imbalance parameter estimate to a prespecified range, assuming that this parameter is in the prespecified range. © 2008, The International Biometric Society.
Keywords: somatic mutation; mutation; comparative study; allele; validation study; mathematical model; clonal variation; heterozygosity loss; neoplasms, second primary; tumor; loss of heterozygosity; statistical model; clone cells; measurement error; biometry; clonality; likelihood functions; concordant mutations test; likelihood ratio test; testing method
Journal Title: Biometrics
Volume: 64
Issue: 4
ISSN: 0006-341X
Publisher: Wiley Blackwell  
Date Published: 2008-12-01
Start Page: 1018
End Page: 1022
Language: English
DOI: 10.1111/j.1541-0420.2008.00988.x
PUBMED: 18266893
PROVIDER: scopus
PMCID: PMC2761024
DOI/URL:
Notes: --- - "Cited By (since 1996): 4" - "Export Date: 17 November 2011" - "CODEN: BIOMA" - "Source: Scopus"
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  1. Colin B Begg
    306 Begg