Title
TroX: a new method to learn about the genesis of aneuploidy from trisomic products of conception.
Abstract
Motivation: An estimated 10-30% of clinically recognized conceptions are aneuploid, leading to spontaneous miscarriages, in vitro fertilization failures and, when viable, severe developmental disabilities. With the ongoing reduction in the cost of genotyping and DNA sequencing, the use of high-density single nucleotide polymorphism (SNP) markers for clinical diagnosis of aneuploidy and biomedical research into its causes is becoming common practice. A reliable, flexible and computationally feasible method for inferring the sources of aneuploidy is thus crucial. Results: We propose a new method, TroX, for analyzing human trisomy data using high density SNP markers from a trisomic individual or product of conception and one parent. Using a hidden Markov model, we infer the stage of the meiotic error (I or II) and the individual in which non-disjunction event occurred, as well as the crossover locations on the trisomic chromosome. A novel and important feature of the method is its reliance on data from the proband and only one parent, reducing the experimental cost by a third and enabling a larger set of data to be used. We evaluate our method by applying it to simulated trio data as well as to genotype data for 282 trios that include a child trisomic for chromosome 21. The analyses show the method to be highly reliable even when data from only one parent are available. With the increasing availability of DNA samples from mother and fetus, application of approaches such as ours should yield unprecedented insights into the genetic risk factors for aneuploidy.
Year
DOI
Venue
2014
10.1093/bioinformatics/btu159
BIOINFORMATICS
Field
DocType
Volume
Genotype,Trisomy,Crossover,Genotyping,Products of conception,Biology,Aneuploidy,Single-nucleotide polymorphism,Chromosome 21,Bioinformatics,Genetics
Journal
30
Issue
ISSN
Citations 
14
1367-4803
0
PageRank 
References 
Authors
0.34
1
4
Name
Order
Citations
PageRank
Amir R. Kermany100.34
Laure Segurel200.34
Tiffany R. Oliver300.34
Molly Przeworski400.34