نتایج جستجو برای: genotype imputation

تعداد نتایج: 107592  

2015
Po-Ru Loh Pier Francesco Palamara Alkes L Price

Recent work has leveraged the unique genealogical structure and extensive genotyping (>30%) of the Icelandic population to perform long-range phasing (LRP), enabling accurate imputation and association analysis of rare variants in target samples typed on genotyping arrays. Here, we develop a fast and accurate LRP method, Eagle, that extends this paradigm to outbred populations by harnessing lon...

2009
Douglas K Childers Guolian Kang Nianjun Liu Guimin Gao Kui Zhang

Most genetic association studies only genotype a small proportion of cataloged single-nucleotide polymorphisms (SNPs) in regions of interest. With the catalogs of high-density SNP data available (e.g., HapMap) to researchers today, it has become possible to impute genotypes at untyped SNPs. This in turn allows us to test those untyped SNPs, the motivation being to increase power in association ...

2015
Iryna O. Fedko Jouke-Jan Hottenga Carolina Medina-Gomez Irene Pappa Catharina E. M. van Beijsterveldt Erik A. Ehli Gareth E. Davies Fernando Rivadeneira Henning Tiemeier Morris A. Swertz Christel M. Middeldorp Meike Bartels Dorret I. Boomsma

Combining genotype data across cohorts increases power to estimate the heritability due to common single nucleotide polymorphisms (SNPs), based on analyzing a Genetic Relationship Matrix (GRM). However, the combination of SNP data across multiple cohorts may lead to stratification, when for example, different genotyping platforms are used. In the current study, we address issues of combining SN...

2014
Anthony L Hinrichs Robert C Culverhouse Brian K Suarez

The ideal genetic analysis of family data would include whole genome sequence on all family members. A strategy of combining sequence data from a subset of key individuals with inexpensive, genome-wide association study (GWAS) chip genotypes on all individuals to infer sequence level genotypes throughout the families has been suggested as a highly accurate alternative. This strategy was followe...

2016
Wen-Chi Chou Hou-Feng Zheng Chia-Ho Cheng Han Yan Li Wang Fang Han J. Brent Richards David Karasik Douglas P. Kiel Yi-Hsiang Hsu

Imputation using the 1000 Genomes haplotype reference panel has been widely adapted to estimate genotypes in genome wide association studies. To evaluate imputation quality with a relatively larger reference panel and a reference panel composed of different ethnic populations, we conducted imputations in the Framingham Heart Study and the North Chinese Study using a combined reference panel fro...

Journal: :Genetics 2014
B Emma Huang Chitra Raghavan Ramil Mauleon Karl W Broman Hei Leung

We consider genomic imputation for low-coverage genotyping-by-sequencing data with high levels of missing data. We compensate for this loss of information by utilizing family relationships in multiparental experimental crosses. This nearly quadruples the number of usable markers when applied to a large rice Multiparent Advanced Generation InterCross (MAGIC) study.

Journal: :Bioinformatics 2013
Androniki Menelaou Jonathan Marchini

MOTIVATION Given the current costs of next-generation sequencing, large studies carry out low-coverage sequencing followed by application of methods that leverage linkage disequilibrium to infer genotypes. We propose a novel method that assumes study samples are sequenced at low coverage and genotyped on a genome-wide microarray, as in the 1000 Genomes Project (1KGP). We assume polymorphic site...

2013
Andrew R. Wood John R. B. Perry Toshiko Tanaka Dena G. Hernandez Hou-Feng Zheng David Melzer J. Raphael Gibbs Michael A. Nalls Michael N. Weedon Tim D. Spector J. Brent Richards Stefania Bandinelli Luigi Ferrucci Andrew B. Singleton Timothy M. Frayling

Genome-wide association (GWA) studies have been limited by the reliance on common variants present on microarrays or imputable from the HapMap Project data. More recently, the completion of the 1000 Genomes Project has provided variant and haplotype information for several million variants derived from sequencing over 1,000 individuals. To help understand the extent to which more variants (incl...

2015
Farhad Pouladi Hojjat Salehinejad Amir Mohammad Gilani

In analyzing of modern biological data, we are often dealing with ill-posed problems and missing data, mostly due to high dimensionality and multicollinearity of the dataset. In this paper, we have proposed a system based on matrix factorization (MF) and deep recurrent neural networks (DRNNs) for genotype imputation and phenotype sequences prediction. In order to model the long-term dependencie...

Background Policy makers need models to be able to detect groups at high risk of HIV infection. Incomplete records and dirty data are frequently seen in national data sets. Presence of missing data challenges the practice of model development. Several studies suggested that performance of imputation methods is acceptable when missing rate is moderate. One of the issues which was of less concern...

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