globalchange  > 全球变化的国际研究计划
项目编号: 1655701
项目名称:
Testing the tests: a predictive framework to guide genome scans for locally adapted traits
作者: Kathleen Lotterhos
承担单位: Northeastern University
批准年: 2017
开始日期: 2017-08-01
结束日期: 2020-07-31
资助金额: 556108
资助来源: US-NSF
项目类别: Standard Grant
国家: US
语种: 英语
特色学科分类: Biological Sciences - Environmental Biology
英文关键词: test ; genome scan ; trait ; genome-scan ; species trait ; robust framework ; common framework ; multiple test ; association test ; genome-scan method ; polygenic trait ; result ; haplotype-based test ; many trait ; differentiation outlier test ; multivariate genome-scan approach
英文摘要: Today, biologists are able to obtain massive amounts of DNA sequence data from many species, including humans. These data have been used to analyze the genetic basis of species traits in thousands of diverse studies, with a particular focus on understanding traits that are adapted to the local environment. Current statistical methods for analyzing these data, known as genome scans, are limited because they are only designed to detect obvious patterns. However, mathematical models predict that more subtle, yet predictable, patterns will evolve for many traits that are common in nature. However, the genetic basis of these traits may not be detectable by widely used genome-scan methods. There are promising new approaches, however, that may be able to detect these more subtle patterns. This research project aims to "test the tests:" to evaluate genome scan methods in a common framework against simulated data. Results will provide new insights into how to implement tests and summarize results so researchers can more effectively study the genetic basis of species traits. Since genome scans have been widely applied in medicine, agriculture, and animal breeding, a better application of these tests can lead to measureable improvements in human lives. To engage persons at different levels of understanding in our research, we will develop a training and outreach program in Genomics, Evolution, Mathematical Modeling and Analysis (GEMMA).

The project will develop a robust framework, grounded in quantitative genetic theory, to guide the creation of a novel set of simulated datasets spanning monogenic to highly polygenic architectures. In phase 1 of the project, researchers will ask how adding realism affects the evolution of genetic architecture and the extent to which populations are adapted to their local environment. Then, they will examine the extent to which the results from univariate and multivariate genome-scan approaches (differentiation outlier tests, association tests, and haplotype-based tests) agree and are accurate. More likely than not, no one method will be ideal for all architectures. Therefore, in phase 2 of the project, researchers will develop approaches for integrating signals from multiple tests to detect outliers in multivariate space, thereby leveraging the unique strengths of different methods. Because this study examines evolutionary processes with a particular focus on the design, implementation, and interpretation of genome scans for polygenic traits, results will allow more accurate characterization of the genetic variation responsible for locally adapted traits.
资源类型: 项目
标识符: http://119.78.100.158/handle/2HF3EXSE/89672
Appears in Collections:全球变化的国际研究计划
科学计划与规划

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Kathleen Lotterhos. Testing the tests: a predictive framework to guide genome scans for locally adapted traits. 2017-01-01.
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