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Featured researches published by Shoulian Dong.


Nature Biotechnology | 2003

Large-scale genotyping of complex DNA

Giulia C. Kennedy; Hajime Matsuzaki; Shoulian Dong; Wei-Min Liu; Jing Huang; Guoying Liu; Xing Su; Manqiu Cao; Wenwei Chen; Jane Zhang; Weiwei Liu; Geoffrey Yang; Xiaojun Di; Thomas B. Ryder; Zhijun He; Urvashi Surti; Michael S. Phillips; Michael T. Boyce-Jacino; Stephen P. A. Fodor; Keith W. Jones

Genetic studies aimed at understanding the molecular basis of complex human phenotypes require the genotyping of many thousands of single-nucleotide polymorphisms (SNPs) across large numbers of individuals. Public efforts have so far identified over two million common human SNPs; however, the scoring of these SNPs is labor-intensive and requires a substantial amount of automation. Here we describe a simple but effective approach, termed whole-genome sampling analysis (WGSA), for genotyping thousands of SNPs simultaneously in a complex DNA sample without locus-specific primers or automation. Our method amplifies highly reproducible fractions of the genome across multiple DNA samples and calls genotypes at >99% accuracy. We rapidly genotyped 14,548 SNPs in three different human populations and identified a subset of them with significant allele frequency differences between groups. We also determined the ancestral allele for 8,386 SNPs by genotyping chimpanzee and gorilla DNA. WGSA is highly scaleable and enables the creation of ultrahigh density SNP maps for use in genetic studies.


Nature Methods | 2004

Genotyping over 100,000 SNPs on a pair of oligonucleotide arrays

Hajime Matsuzaki; Shoulian Dong; Halina Loi; Xiaojun Di; Guoying Liu; Earl Hubbell; Jane Law; Tam Berntsen; Monica Chadha; Henry Hui; Geoffrey Yang; Giulia C. Kennedy; Teresa Webster; Simon Cawley; P. Sean Walsh; Keith W. Jones; Stephen P. A. Fodor; Rui Mei

We present a genotyping method for simultaneously scoring 116,204 SNPs using oligonucleotide arrays. At call rates >99%, reproducibility is >99.97% and accuracy, as measured by inheritance in trios and concordance with the HapMap Project, is >99.7%. Average intermarker distance is 23.6 kb, and 92% of the genome is within 100 kb of a SNP marker. Average heterozygosity is 0.30, with 105,511 SNPs having minor allele frequencies >5%.


Bioinformatics | 2003

Algorithms for large-scale genotyping microarrays.

Wei-min Liu; Xiaojun Di; Geoffrey Yang; Hajime Matsuzaki; Jing Huang; Rui Mei; Thomas B. Ryder; Teresa A. Webster; Shoulian Dong; Guoying Liu; Keith W. Jones; Giulia C. Kennedy; David Kulp

MOTIVATION Analysis of many thousands of single nucleotide polymorphisms (SNPs) across whole genome is crucial to efficiently map disease genes and understanding susceptibility to diseases, drug efficacy and side effects for different populations and individuals. High density oligonucleotide microarrays provide the possibility for such analysis with reasonable cost. Such analysis requires accurate, reliable methods for feature extraction, classification, statistical modeling and filtering. RESULTS We propose the modified partitioning around medoids as a classification method for relative allele signals. We use the average silhouette width, separation and other quantities as quality measures for genotyping classification. We form robust statistical models based on the classification results and use these models to make genotype calls and calculate quality measures of calls. We apply our algorithms to several different genotyping microarrays. We use reference types, informative Mendelian relationship in families, and leave-one-out cross validation to verify our results. The concordance rates with the single base extension reference types are 99.36% for the SNPs on autosomes and 99.64% for the SNPs on sex chromosomes. The concordance of the leave-one-out test is over 99.5% and is 99.9% higher for AA, AB and BB cells. We also provide a method to determine the gender of a sample based on the heterozygous call rate of SNPs on the X chromosome. See http://www.affymetrix.com for further information. The microarray data will also be available from the Affymetrix web site. AVAILABILITY The algorithms will be available commercially in the Affymetrix software package.


Genome Research | 2004

Parallel genotyping of over 10,000 SNPs using a one-primer assay on a high-density oligonucleotide array

Hajime Matsuzaki; Halina Loi; Shoulian Dong; Ya-Yu Tsai; Joy Fang; Jane Law; Xiaojun Di; Wei-Min Liu; Geoffrey Yang; Guoying Liu; Jing Huang; Giulia C. Kennedy; Thomas B. Ryder; Gregory Marcus; P. Sean Walsh; Mark D. Shriver; Jennifer M. Puck; Keith W. Jones; Rui Mei


Bioinformatics | 2005

Dynamic model based algorithms for screening and genotyping over 100K SNPs on oligonucleotide microarrays

Xiaojun Di; Hajime Matsuzaki; Teresa Webster; Earl Hubbell; Guoying Liu; Shoulian Dong; Dan Bartell; Jing Huang; Richard Chiles; Geoffrey Yang; Mei-Mei Shen; David Kulp; Giulia C. Kennedy; Rui Mei; Keith W. Jones; Simon Cawley


Archive | 2001

Target nucleic acid enrichment and amplification for array analysis

Shoulian Dong; Giulia C. Kennedy; Linda Mcallister; Xing Su


Archive | 2002

Large scale genotyping methods

Giulia C. Kennedy; Hajime Matsuzaki; Shoulian Dong; Xing Su; Keith W. Jones; Wei-Min Liu


Archive | 2001

Target enrichment and amplification

Shoulian Dong; Giulia C. Kennedy; Linda Mcallister; Xing Su


Archive | 2001

Concentration and amplification of target for analyzing array

Shoulian Dong; Giulia C. Kennedy; Linda Mcallister; Xing Su; ケネディー,ジュリア; スー,シン; ドン,ショウリアン; マカリスター,リンダ


Archive | 2003

Methoden zur Genotypisierung

Shoulian Dong; Keith W. Jones; Giulia C. Kennedy; Weiwei Liu; Hajime Matsuzaki; Michael H. Shapero

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