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共检索到39条 ,权限内显示50条;
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Data from: A population genetics perspective on the evolutionary histories of three clonal, endemic, and dominant grass species
- 负责人:
- DOI:
- doi:10.5061/dryad.403j5s4
- 摘要:
- our resulting data to genetic models of hybridization using a Bayesian algorithm within NewHybrids software. We determined that genetic variation in Orinus
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Data from: Assessing gene-environment interactions for common and rare variants with binary traits using gene-trait similarity regression
- 负责人:
- DOI:
- doi:10.5061/dryad.742gv
- 摘要:
- ons for rare variants with binary traits. The proposed model aggregates the genetic and GxE information across markers using genetic similarity thus increasing
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Data from: Barriers to gene flow in the marine environment: insights from two common intertidal limpet species of the Atlantic and Mediterranean
- 负责人:
- DOI:
- doi:10.5061/dryad.8c26c
- 摘要:
- cytochrome C oxidase subunit I were screened for genetic variation through starch gel electrophoresis and DNA sequencing, respectively. An approach combining clustering algorithms
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Data from: Mutation rules and the evolution of sparseness and modularity in biological systems
- 负责人:
- DOI:
- doi:10.5061/dryad.75180
- 摘要:
- , product-rule mutations also lead to modular structure; sum-rule mutations do not. Product-rule mutations generate sparseness and modularity because
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Data from: Limited influence of local and landscape factors on finescale gene flow in two pond-breeding amphibians
- 负责人:
- DOI:
- doi:10.5061/dryad.4903q
- 摘要:
- and anthropogenic factors on gene flow. We found the null models best explained patterns of genetic differentiation at a local level, and found several factors
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Data from: Joint prediction of multiple quantitative traits using a Bayesian multivariate antedependence model
- 负责人:
- DOI:
- doi:10.5061/dryad.dd60v
- 摘要:
- prediction of multiple quantitative traits using a Bayesian algorithm via modeling a linear relationship of effect vector between each pair of adjacent markers
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Data from: The program STRUCTURE does not reliably recover the correct population structure when sampling is uneven: sub-sampling and new esti
- 负责人:
- DOI:
- doi:10.5061/dryad.2d4m9
- 摘要:
- Inferences of population structure and more precisely the identification of genetically homogeneous groups of individuals are essential to the fields
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Fully Bayesian Analysis of RNA-seq Counts for the Detection of Gene Expression Heterosis
- 负责人:
- 关键词:
- Genetics Molecular Biology Biotechnology 69999 Biological Sciences not elsewhere classified 19999 Mathematical Sciences not elsewhere classified 110309 Infectious Diseases Plant Biology
- DOI:
- doi:10.6084/m9.figshare.6949499
- 摘要:
- ient parallelized Markov chain Monte Carlo algorithm ameliorates the computational burden. We use our method to detect gene expression heterosis in a two-hybrid plant
![](http://agri.nais.net.cn/resources/front/images/source_91.jpg)
Data from: Ecological resistance surfaces predict fine scale genetic differentiation in a terrestrial woodland salamander
- 负责人:
- DOI:
- doi:10.5061/dryad.m4f17
- 摘要:
- ng a non-linear optimization algorithm to minimize model AIC. We found clear support for the resistance surface representing the rate of water loss experienced by adult
![](http://agri.nais.net.cn/resources/front/images/source_91.jpg)
Data from: Delayed chemical defense: timely expulsion of herbivores can reduce competition with neighboring plants
- 负责人:
- DOI:
- doi:10.5061/dryad.gh2m22t
- 摘要:
- . Chemical defense was assumed to be costly in terms of reduced plant growth. We used a genetic algorithm with the plant’s delay time as a heritable trait