| Literature DB >> 28088170 |
Jörn Bennewitz1, Christian Edel2, Ruedi Fries3, Theo H E Meuwissen4, Robin Wellmann5.
Abstract
BACKGROUND: Multi-marker methods, which fit all markers simultaneously, were originally tailored for genomic selection purposes, but have proven to be useful also in association analyses, especially the so-called BayesC Bayesian methods. In a recent study, BayesD extended BayesC towards accounting for dominance effects and improved prediction accuracy and persistence in genomic selection. The current study investigated the power and precision of BayesC and BayesD in genome-wide association studies by means of stochastic simulations and applied these methods to a dairy cattle dataset.Entities:
Mesh:
Substances:
Year: 2017 PMID: 28088170 PMCID: PMC5237573 DOI: 10.1186/s12711-017-0284-7
Source DB: PubMed Journal: Genet Sel Evol ISSN: 0999-193X Impact factor: 4.297
Fig. 1Scatterplot of the simulated joint distribution of the absolute value of additive effects () and dominance coefficients (
Power and L-Powera as a function of the SNP density per M, window size in cM, window posterior probability of association (WPPA) and method (BayesC and BayesD)
| SNP density (k/M) | WS | WPPA | BayesC | BayesD | ||
|---|---|---|---|---|---|---|
| Power | L-powera | Power | L-powera | |||
| 0.5 | 0.25 | 0.85 | 0.261 (0.129) | 0.441 (0.199) | 0.282 (0.132) | 0.475 (0.205) |
| 0.95 | 0.201 (0.107) | 0.347 (0.169) | 0.217 (0.110) | 0.362 (0.154) | ||
| 0.99 | 0.144 (0.102) | 0.249 (0.166) | 0.175 (0.101) | 0.300 (0.170) | ||
| 0.5 | 0.85 | 0.267 (0.138) | 0.445 (0.193) | 0.280 (0.120) | 0.480 (0.205) | |
| 0.95 | 0.205 (0.107) | 0.349 (0.174) | 0.230 (0.103) | 0.388 (0.158) | ||
| 0.99 | 0.151 (0.094) | 0.260 (0.151) | 0.192 (0.099) | 0.336 (0.182) | ||
| 1 | 0.85 | 0.279 (0.142) | 0.467 (0.204) | 0.298 (0.135) | 0.500 (0.193) | |
| 0.95 | 0.214 (0.114) | 0.352 (0.156) | 0.241 (0.102) | 0.410 (0.161) | ||
| 0.99 | 0.167 (0.092) | 0.285 (0.146) | 0.199 (0.095) | 0.343 (0.165) | ||
| 1 | 0.25 | 0.85 | 0.265 (0.119) | 0.452 (0.184) | 0.290 (0.112) | 0.500 (0.186) |
| 0.95 | 0.210 (0.114) | 0.365 (0.194) | 0.241 (0.101) | 0.415 (0.173) | ||
| 0.99 | 0.193 (0.112) | 0.337 (0.196) | 0.180 (0.091) | 0.315 (0.157) | ||
| 0.5 | 0.85 | 0.291 (0.121) | 0.495 (0.190) | 0.321 (0.123) | 0.551 (0.204) | |
| 0.95 | 0.228 (0.116) | 0.394 (0.199) | 0.265 (0.108) | 0.454 (0.180) | ||
| 0.99 | 0.192 (0.106) | 0.334 (0.174) | 0.198 (0.088) | 0.344 (0.151) | ||
| 1 | 0.85 | 0.316 (0.128) | 0.538 (0.208) | 0.341 (0.139) | 0.580 (0.213) | |
| 0.95 | 0.259 (0.116) | 0.438 (0.171) | 0.291 (0.125) | 0.497 (0.204) | ||
| 0.99 | 0.216 (0.119) | 0.369 (0.183) | 0.227 (0.096) | 0.388 (0.145) | ||
| 2 | 0.25 | 0.85 | 0.285 (0.126) | 0.481 (0.176) | 0.299 (0.126) | 0.501 (0.169) |
| 0.95 | 0.247 (0.115) | 0.423 (0.172) | 0.245 (0.107) | 0.419 (0.155) | ||
| 0.99 | 0.216 (0.109) | 0.367 (0.159) | 0.214 (0.106) | 0.325 (0.169) | ||
| 0.5 | 0.85 | 0.332 (0.118) | 0.561 (0.169) | 0.343 (0.129) | 0.571 (0.168) | |
| 0.95 | 0.276 (0.118) | 0.469 (0.182) | 0.284 (0.115) | 0.476 (0.152) | ||
| 0.99 | 0.234 (0.119) | 0.395 (0.172) | 0.221 (0.114) | 0.376 (0.176) | ||
| 1 | 0.85 | 0.348 (0.130) | 0.586 (0.181) | 0.371 (0.141) | 0.618 (0.182) | |
| 0.95 | 0.312 (0.132) | 0.522 (0.179) | 0.318 (0.117) | 0.532 (0.147) | ||
| 0.99 | 0.245 (0.123) | 0.406 (0.178) | 0.248 (0.121) | 0.420 (0.172) | ||
| 7 | 0.25 | 0.85 | 0.307 (0.120) | 0.518 (0.185) | 0.301 (0.093) | 0.505 (0.164) |
| 0.95 | 0.273 (0.097) | 0.467 (0.156) | 0.263 (0.092) | 0.449 (0.166) | ||
| 0.99 | 0.259 (0.090) | 0.435 (0.146) | 0.256 (0.075) | 0.393 (0.146) | ||
| 0.5 | 0.85 | 0.356 (0.107) | 0.602 (0.172) | 0.369 (0.099) | 0.615 (0.168) | |
| 0.95 | 0.309 (0.102) | 0.518 (0.161) | 0.312 (0.093) | 0.531 (0.142) | ||
| 0.99 | 0.270 (0.089) | 0.459 (0.165) | 0.273 (0.089) | 0.460 (0.135) | ||
| 1 | 0.85 | 0.378 (0.118) | 0.636 (0.152) | 0.394 (0.106) | 0.657 (0.137) | |
| 0.95 | 0.329 (0.116) | 0.551 (0.156) | 0.339 (0.103) | 0.567 (0.152) | ||
| 0.99 | 0.281 (0.109) | 0.465 (0.151) | 0.279 (0.095) | 0.472 (0.155) | ||
Standard deviations are in parenthesis
aL-Power denotes the power to detect a causal gene that explains more than 2.5% of the simulated genetic variance
WS window size
Precision as a function of SNP density per M, window size in cM, and method (BayesC and BayesD)
| SNP density (k/M) | WS | BayesC | BayesD |
|---|---|---|---|
| 0.5 | 0.25 | 0.653 (0.223) | 0.639 (0.219) |
| 0.5 | 1.050 (0.275) | 1.047 (0.245) | |
| 1 | 1.779 (0.283) | 1.796 (0.259) | |
| 1 | 0.25 | 0.525 (0.130) | 0.517 (0.095) |
| 0.5 | 0.943 (0.138) | 0.943 (0.152) | |
| 1 | 1.720 (0.215) | 1.744 (0.182) | |
| 2 | 0.25 | 0.506 (0.138) | 0.467 (0.085) |
| 0.5 | 0.930 (0.125) | 0.909 (0.121) | |
| 1 | 1.746 (0.184) | 1.728 (0.157) | |
| 7 | 0.25 | 0.468 (0.042) | 0.449 (0.046) |
| 0.5 | 0.912 (0.074) | 0.906 (0.075) | |
| 1 | 1.798 (0.120)) | 1.802 (0.114) |
Standard deviations are in parenthesis
WS window size
Fig. 2Plot of window posterior probabilities of association (WPPA) obtained by BayesC (top) and BayesD (bottom), from the real data analyses
Fig. 3Estimates of window genomic variances based on the real data analyses. The top and middle panels show the within-window estimates of genomic variances obtained by BayesC and BayesD, respectively. The bottom panel shows the within-window dominance variance obtained by BayesD. The window variances were multiplied by 1000. The window size was 0.5 cM
Fig. 4Simulated gene effects and BayesC and BayesD results for a single simulated trait. The top left panel shows the simulated additive and dominance effects of the 10 causative mutations with a non-negligible effect for a randomly chosen trait for which dominance was important. The top right panel shows the genetic variances of these simulated causative mutations. The two panels in the middle show the within-window genomic variances obtained by BayesC (left) and BayesD (right). The window posterior probability of association (WPPA) obtained from both methods are shown at the bottom. The positions of the 10 causative mutations are indicated by a circle