2018
DOI: 10.1111/gcb.14497
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New insights into adaptation and population structure of cork oak using genotyping by sequencing

Abstract: Species respond to global climatic changes in a local context. Understanding this process, including its speed and intensity, is paramount due to the pace at which such changes are currently occurring. Tree species are particularly interesting to study in this regard due to their long generation times, sedentarism, and ecological and economic importance. Quercus suber L. is an evergreen forest tree species of the Fagaceae family with an essentially Western Mediterranean distribution. Despite frequent assessmen… Show more

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Cited by 51 publications
(70 citation statements)
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References 71 publications
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“…Temperature and rainfall are the most widely used variables in GEA analysis in several species including D . melanogaster (Božičević et al, 2016; Cavedon et al, 2019; Gao et al, 2017; Hopley & Byrne, 2019; Kapun et al, 2020; Leroy et al, 2020; Mayol et al, 2020; Pina‐Martins et al, 2019; Todesco et al, 2019). Our results show that the majority of genes associated with environmental variables were associated with a temperature‐related one (400/748), while the number of genes associated with rainfall was smaller (241/748) (Table ).…”
Section: Discussionmentioning
confidence: 99%
“…Temperature and rainfall are the most widely used variables in GEA analysis in several species including D . melanogaster (Božičević et al, 2016; Cavedon et al, 2019; Gao et al, 2017; Hopley & Byrne, 2019; Kapun et al, 2020; Leroy et al, 2020; Mayol et al, 2020; Pina‐Martins et al, 2019; Todesco et al, 2019). Our results show that the majority of genes associated with environmental variables were associated with a temperature‐related one (400/748), while the number of genes associated with rainfall was smaller (241/748) (Table ).…”
Section: Discussionmentioning
confidence: 99%
“…[52,65]). Gene flow could assist in enhancing effective population size and adaptive genetic diversity, and thus the potential fitness and adaptability of revegetation plantings aiming to maintain and restore ecosystem services [66][67][68]. Understanding changes to genetic diversity over time, including the potential influences of gene flow, will help meet the overall objective of local revegetation efforts.…”
Section: Discussionmentioning
confidence: 99%
“…Cross‐validation in machine learning methods such as gradient or random forests should be done carefully, for example based on "leave‐population‐out" instead of "leave‐individual‐out" (i.e., spatial versus random cross‐validation), because the latter can artificially inflate goodness values due to the lack of independence of the training and test datasets (Meyer et al, 2019). If possible, final genomic offset calculations should account for these values, as in Pina‐Martins et al (2019) who used weighted average (by R 2 ) to indicate average RONA values across loci.…”
Section: Important Issues To Consider When Using Genomic Offset Approachesmentioning
confidence: 99%