Using familial information for variant filtering in high-throughput sequencing studies

被引:0
|
作者
Melanie Bahlo
Rick Tankard
Vesna Lukic
Karen L. Oliver
Katherine R. Smith
机构
[1] The Walter and Eliza Hall Institute of Medical Research,Department of Medical Biology
[2] University of Melbourne,Department of Mathematics and Statistics
[3] University of Melbourne,Epilepsy Research Centre
[4] The University of Melbourne,undefined
[5] Austin Health,undefined
来源
Human Genetics | 2014年 / 133卷
关键词
Causal Variant; Whole Exome Sequencing; Whole Exome Sequencing Data; Susceptibility Haplotype; HapMap SNPs;
D O I
暂无
中图分类号
学科分类号
摘要
High-throughput sequencing studies (HTS) have been highly successful in identifying the genetic causes of human disease, particularly those following Mendelian inheritance. Many HTS studies to date have been performed without utilizing available family relationships between samples. Here, we discuss the many merits and occasional pitfalls of using identity by descent information in conjunction with HTS studies. These methods are not only applicable to family studies but are also useful in cohorts of apparently unrelated, ‘sporadic’ cases and small families underpowered for linkage and allow inference of relationships between individuals. Incorporating familial/pedigree information not only provides powerful filtering options for the extensive variant lists that are usually produced by HTS but also allows valuable quality control checks, insights into the genetic model and the genotypic status of individuals of interest. In particular, these methods are valuable for challenging discovery scenarios in HTS analysis, such as in the study of populations poorly represented in variant databases typically used for filtering, and in the case of poor-quality HTS data.
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页码:1331 / 1341
页数:10
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