| Literature DB >> 23343094 |
Sergii Zakharov1, Agus Salim, Anbupalam Thalamuthu.
Abstract
BACKGROUND: As several rare genomic variants have been shown to affect common phenotypes, rare variants association analysis has received considerable attention. Several efficient association tests using genotype and phenotype similarity measures have been proposed in the literature. The major advantages of similarity-based tests are their ability to accommodate multiple types of DNA variations within one association test, and to account for the possible interaction within a region. However, not much work has been done to compare the performance of similarity-based tests on rare variants association scenarios, especially when applied with different rare variants pooling strategies.Entities:
Mesh:
Year: 2013 PMID: 23343094 PMCID: PMC3600007 DOI: 10.1186/1471-2164-14-50
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Figure 1Power as a function of significance level for the four similarity-based tests and two rare variants pooling strategies. Panel 1: “Risk Rare” Scenario; Panel 2: “Risk Both” Scenario; Panel 3: “Risk Common” Scenario; Panel 4: “Mixed Rare” Scenario.
The maximum absolute difference in power (over the type-1 error rate) between weighting and collapsing pooling strategies for different tests and phenotype scenarios in population genetics simulations
| 0.466 | 0.472 | 0.157 | 0.511 | |
| 0.395 | 0.29 | 0.094 | 0.379 | |
| 0.551 | 0.479 | 0.388 | 0.235 | |
| 0.18 | 0.516 | 0.393 | 0.148 |
Figure 2Power as a function of significance level for the four similarity-based tests and two rare variants pooling strategies when common variants are excluded from the analysis. Panel 1: “Risk Rare” Scenario; Panel 2: “Risk Both” Scenario; Panel 3: “Risk Common” Scenario; Panel 4: “Mixed Rare” Scenario.
Figure 3Power to identify association with dichotomized adjusted quantitative trait in GAW17 data set for causal genes (ARNT-VEGFC with Q1, and BCHE-VWF with Q2).
The maximum absolute difference in power (over the respective causal genes) between weighting and collapsing pooling strategies for different tests and phenotypes in GAW17 data set
| 0.84 (KDR) | 0.45 (ARNT) | 0.22 (ARNT) | 0.145 (HIF3A) | |
| 0.605 (VNN1) | 0.5 (VNN1) | 0.42 (VNN1) | 0.535 (VNN1) | |
| 0.77 (FLT1) | 0.42 (PRKCA) | 0.43 (PRKCA) | 0.535 (FLT1) |
The genes at which the maximum difference was achieved are in brackets.