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Heterogeneity in statistical genetics: how to assess, address, and account for mixtures in association studies

Heterogeneity, or mixtures, are ubiquitous in genetics. Even for data as simple as mono-genic diseases, populations are a mixture of affected and unaffected individuals. Still, most statistical genetic association analyses, designed to map genes for diseases and other genetic traits, ignore this phe...

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Detalles Bibliográficos
Autores principales: Gordon, Derek, Finch, Stephen J, Kim, Wonkuk
Lenguaje:eng
Publicado: Springer 2020
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-3-030-61121-7
http://cds.cern.ch/record/2749390
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author Gordon, Derek
Finch, Stephen J
Kim, Wonkuk
author_facet Gordon, Derek
Finch, Stephen J
Kim, Wonkuk
author_sort Gordon, Derek
collection CERN
description Heterogeneity, or mixtures, are ubiquitous in genetics. Even for data as simple as mono-genic diseases, populations are a mixture of affected and unaffected individuals. Still, most statistical genetic association analyses, designed to map genes for diseases and other genetic traits, ignore this phenomenon. In this book, we document methods that incorporate heterogeneity into the design and analysis of genetic and genomic association data. Among the key qualities of our developed statistics is that they include mixture parameters as part of the statistic, a unique component for tests of association. A critical feature of this work is the inclusion of at least one heterogeneity parameter when performing statistical power and sample size calculations for tests of genetic association. We anticipate that this book will be useful to researchers who want to estimate heterogeneity in their data, develop or apply genetic association statistics where heterogeneity exists, and accurately evaluate statistical power and sample size for genetic association through the application of robust experimental design.
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spelling cern-27493902021-04-21T16:44:00Zdoi:10.1007/978-3-030-61121-7http://cds.cern.ch/record/2749390engGordon, DerekFinch, Stephen JKim, WonkukHeterogeneity in statistical genetics: how to assess, address, and account for mixtures in association studiesMathematical Physics and MathematicsHeterogeneity, or mixtures, are ubiquitous in genetics. Even for data as simple as mono-genic diseases, populations are a mixture of affected and unaffected individuals. Still, most statistical genetic association analyses, designed to map genes for diseases and other genetic traits, ignore this phenomenon. In this book, we document methods that incorporate heterogeneity into the design and analysis of genetic and genomic association data. Among the key qualities of our developed statistics is that they include mixture parameters as part of the statistic, a unique component for tests of association. A critical feature of this work is the inclusion of at least one heterogeneity parameter when performing statistical power and sample size calculations for tests of genetic association. We anticipate that this book will be useful to researchers who want to estimate heterogeneity in their data, develop or apply genetic association statistics where heterogeneity exists, and accurately evaluate statistical power and sample size for genetic association through the application of robust experimental design.Springeroai:cds.cern.ch:27493902020
spellingShingle Mathematical Physics and Mathematics
Gordon, Derek
Finch, Stephen J
Kim, Wonkuk
Heterogeneity in statistical genetics: how to assess, address, and account for mixtures in association studies
title Heterogeneity in statistical genetics: how to assess, address, and account for mixtures in association studies
title_full Heterogeneity in statistical genetics: how to assess, address, and account for mixtures in association studies
title_fullStr Heterogeneity in statistical genetics: how to assess, address, and account for mixtures in association studies
title_full_unstemmed Heterogeneity in statistical genetics: how to assess, address, and account for mixtures in association studies
title_short Heterogeneity in statistical genetics: how to assess, address, and account for mixtures in association studies
title_sort heterogeneity in statistical genetics: how to assess, address, and account for mixtures in association studies
topic Mathematical Physics and Mathematics
url https://dx.doi.org/10.1007/978-3-030-61121-7
http://cds.cern.ch/record/2749390
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