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Data Quality Metrics for Genome Wide Association Studies

Tipo
Paper de conferencia
Año
2010
Páginas
105
Abstract

Genome Wide Association Studies ({GWAS)} are developed to find direct or indirect relations from given genomic configurations to physical characteristics or specific diseases. In order to build new {GWAS}, avoiding the complexities of field based studies, a statistical technique called meta-analysis can be used. Bad or unknown data quality has been largely identified as a major problem in meta-analysis since it generates lack of confidence and inhibits its exploitation. This paper addresses {GWAS} data quality issues and presents a domain specific model for data quality assessment, which has been developed taking into account meta-analysis requirements.

Autores

Lorena Etcheverry
Citekey
etcheverry_data_2010
doi
10.1109/DEXA.2010.40
Keywords
component
data analysis
Data models
data quality
data quality assessment
data quality metrics
disease
diseases
genome wide association studies
genomics
{GWAS}
meta data
meta-analysis
statistical analysis
statistical technique
Accuracy
Bioinformatics
Biological system modeling
biotechnology