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Dive into the research topics where Charles R. Scafe is active.

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Featured researches published by Charles R. Scafe.


pacific symposium on biocomputing | 2005

A tool for selecting SNPs for association studies based on observed linkage disequilibrium patterns.

Francisco M. De La Vega; Hadar Isaac; Charles R. Scafe

The design of genetic association studies using single-nucleotide polymorphisms (SNPs) requires the selection of subsets of the variants providing high statistical power at a reasonable cost. SNPs must be selected to maximize the probability that a causative mutation is in linkage disequilibrium (LD) with at least one marker genotyped in the study. The HapMap project performed a genome-wide survey of genetic variation with about a million SNPs typed in four populations, providing a rich resource to inform the design of association studies. A number of strategies have been proposed for the selection of SNPs based on observed LD, including construction of metric LD maps and the selection of haplotype tagging SNPs. Power calculations are important at the study design stage to ensure successful results. Integrating these methods and annotations can be challenging: the algorithms required to implement these methods are complex to deploy, and all the necessary data and annotations are deposited in disparate databases. Here, we present the SNPbrowser Software, a freely available tool to assist in the LD-based selection of markers for association studies. This stand-alone application provides fast query capabilities and swift visualization of SNPs, gene annotations, power, haplotype blocks, and LD map coordinates. Wizards implement several common SNP selection workflows including the selection of optimal subsets of SNPs (e.g. tagging SNPs). Selected SNPs are screened for their conversion potential to either TaqMan SNP Genotyping Assays or the SNPlex Genotyping System, two commercially available genotyping platforms, expediting the set-up of genetic studies with an increased probability of success.


Human Heredity | 2005

Power and Sample Size Calculations for Genetic Case/Control Studies Using Gene-Centric SNP Maps: Application to Human Chromosomes 6, 21, and 22 in Three Populations

Francisco M. De La Vega; Derek Gordon; Xiaoping Su; Charles R. Scafe; Hadar Isaac; Dennis A. Gilbert; Eugene Spier

Power and sample size calculations are critical parts of any research design for genetic association. We present a method that utilizes haplotype frequency information and average marker-marker linkage disequilibrium on SNPs typed in and around all genes on a chromosome. The test statistic used is the classic likelihood ratio test applied to haplotypes in case/control populations. Haplotype frequencies are computed through specification of genetic model parameters. Power is determined by computation of the test’s non-centrality parameter. Power per gene is computed as a weighted average of the power assuming each haplotype is associated with the trait. We apply our method to genotype data from dense SNP maps across three entire chromosomes (6, 21, and 22) for three different human populations (African-American, Caucasian, Chinese), three different models of disease (additive, dominant, and multiplicative) and two trait allele frequencies (rare, common). We perform a regression analysis using these factors, average marker-marker disequilibrium, and the haplotype diversity across the gene region to determine which factors most significantly affect average power for a gene in our data. Also, as a ‘proof of principle’ calculation, we perform power and sample size calculations for all genes within 100 kb of the PSORS1 locus (chromosome 6) for a previously published association study of psoriasis. Results of our regression analysis indicate that four highly significant factors that determine average power to detect association are: disease model, average marker-marker disequilibrium, haplotype diversity, and the trait allele frequency. These findings may have important implications for the design of well-powered candidate gene association studies. Our power and sample size calculations for the PSORS1 gene appear consistent with published findings, namely that there is substantial power (>0.99) for most genes within 100 kb of the PSORS1 locus at the 0.01 significance level.


American Journal of Human Genetics | 2004

A High-Density Admixture Map for Disease Gene Discovery in African Americans

Michael W. Smith; Nick Patterson; James A. Lautenberger; Ann L. Truelove; Gavin J. McDonald; Alicja Waliszewska; Bailey Kessing; Michael Malasky; Charles R. Scafe; Ernest Le; Philip L. De Jager; Andre A. Mignault; Zeng Yi; Myron Essex; Jean-Louis Sankalé; Jason H. Moore; Kwabena A. Poku; John P. Phair; James J. Goedert; David Vlahov; Scott M. Williams; Sarah A. Tishkoff; Cheryl A. Winkler; Francisco M. De La Vega; Trevor Woodage; John J. Sninsky; David A. Hafler; David Altshuler; Dennis A. Gilbert; Stephen J. O’Brien


Genome Research | 2002

Genome-Wide Analysis of the Odorant-Binding Protein Gene Family in Drosophila melanogaster

Daria S. Hekmat-Scafe; Charles R. Scafe; Aimee J. McKinney; Mark A. Tanouye


Genome Research | 2005

The linkage disequilibrium maps of three human chromosomes across four populations reflect their demographic history and a common underlying recombination pattern

Francisco M. De La Vega; Hadar Isaac; Andrew Collins; Charles R. Scafe; Bjarni V. Halldórsson; Xiaoping Su; Ross A. Lippert; Yu Wang; Marion Laig-Webster; Ryan T. Koehler; Janet S. Ziegle; Lewis T. Wogan; Junko Stevens; Kyle M. Leinen; Sheri Olson; Karl J. Guegler; Xiaoqing You; Lily Xu; Heinz Hemken; Francis Kalush; Mitsuo Itakura; Yi Zheng; Stephen J. O'Brien; Andrew G. Clark; Sorin Istrail; Michael W. Hunkapiller; Eugene Spier; Dennis A. Gilbert


Archive | 2003

Methods for placing, accepting, and filling orders for products and services

Ryan T. Koehler; Kenneth J. Livak; Junko Stevens; Francisco M. De La Vega; Michael Rhodes; Laurent R. Bellon; Janet S. Ziegle; Julie Williams; Dawn Madden; Dennis A. Gilbert; Charles R. Scafe; Hadar Avi-Itzhak; Yu Wang; Eugene Spier; Xiaoqing You; Lily Xu; Jeremy Heil; Stephen Glanowski; John Scott; Emily Susan Winn-Deen; Ivy McMullen; Lini Wu; Harold Gire; Susan K. Eddins; Michael W. Hunkapiller; Leila Smith


Arthritis & Rheumatism | 2007

Genetic association between the PRKCH gene encoding protein kinase Cη isozyme and rheumatoid arthritis in the Japanese population

Yoichiro Takata; Daisuke Hamada; Katsutoshi Miyatake; Shunji Nakano; Furnio Shinomiya; Charles R. Scafe; Vincent M. Reeve; Dai Osabe; Maki Moritani; Kiyoshi Kunika; Naoyuki Kamatani; Hiroshi Inoue; Natsuo Yasui; Mitsuo Itakura


Archive | 2002

Universal-tagged oligonucleotide primers and methods of use

Kai Qin Lao; Caifu Chen; Ryan T. Koehler; Charles R. Scafe; Gary Schroth


Arthritis & Rheumatism | 2005

Association Between Single-Nucleotide Polymorphisms in the SEC8L1 Gene, Which Encodes a Subunit of the Exocyst Complex, and Rheumatoid Arthritis in a Japanese Population

Daisuke Hamada; Yoichiro Takata; Dai Osabe; Kyoko Nomura; Syuichi Shinohara; Hiroshi Egawa; Syunji Nakano; Fumio Shinomiya; Charles R. Scafe; Vincent M. Reeve; Tatsuro Miyamoto; Maki Moritani; Kiyoshi Kunika; Hiroshi Inoue; Natsuo Yasui; Mitsuo Itakura


Archive | 2003

Methods of validating SNPs and compiling libraries of assays

Francisco M. De La Vega; Janet S. Ziegle; Hadar Avi-Itzhak; Charles R. Scafe; Eugene Spier; Yu Wang

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