2021
DOI: 10.3389/fpls.2021.677009
|View full text |Cite
|
Sign up to set email alerts
|

There Is No ‘Rule of Thumb’: Genomic Filter Settings for a Small Plant Population to Obtain Unbiased Gene Flow Estimates

Abstract: The application of high-density polymorphic single-nucleotide polymorphisms (SNP) markers derived from high-throughput sequencing methods has heralded plenty of biological questions about the linkages of processes operating at micro- and macroevolutionary scales. However, the effects of SNP filtering practices on population genetic inference have received much less attention. By performing sensitivity analyses, we empirically investigated how decisions about the percentage of missing data (MD) and the minor al… Show more

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...

Citation Types

0
1
0

Year Published

2022
2022
2024
2024

Publication Types

Select...
4
1

Relationship

0
5

Authors

Journals

citations
Cited by 7 publications
(1 citation statement)
references
References 100 publications
(199 reference statements)
0
1
0
Order By: Relevance
“…Others demonstrate that filtering can bias important features of the resulting data (Nielsen, 2000; Mastretta-Yanes et al, 2015; Huang and Knowles, 2016; Chan et al, 2020), and therefore recommend against filtering stringently. It may also be the case that there is not a universally “best” approach to these decisions (Nazareno and Knowles, 2021); variation in empirical data attributes such as divergence times, incomplete lineage sorting, and genetic diversity may mean that different filtering decisions are optimal in different scenarios. For example, Huang and Knowles (2016) show that high missing data filters are particularly harmful for data sets with short coalescent times and it is likely that the consequences of other filters are similarly context dependent.…”
mentioning
confidence: 99%
“…Others demonstrate that filtering can bias important features of the resulting data (Nielsen, 2000; Mastretta-Yanes et al, 2015; Huang and Knowles, 2016; Chan et al, 2020), and therefore recommend against filtering stringently. It may also be the case that there is not a universally “best” approach to these decisions (Nazareno and Knowles, 2021); variation in empirical data attributes such as divergence times, incomplete lineage sorting, and genetic diversity may mean that different filtering decisions are optimal in different scenarios. For example, Huang and Knowles (2016) show that high missing data filters are particularly harmful for data sets with short coalescent times and it is likely that the consequences of other filters are similarly context dependent.…”
mentioning
confidence: 99%