Back

ONeSAMP 3.0: Effective Population Size via SNP Data for One Population Sample

Hong, A.; Cheek, R. G.; Mukherjee, K.; Yooseph, I.; Oliva, M.; Heim, M.; Funk, W. C.; Tallmon, D.; Boucher, C.

2023-09-17 bioinformatics
10.1101/2023.09.14.557784 bioRxiv
Show abstract

O_LIThe genetic effective size (Ne) is arguably one of the most important characteristics of a population as it impacts the rate of loss of genetic diversity. Genetic estimators of (Ne) increasingly popular tools in population and conservation genetic studies. Yet there are very few methods that can estimate the Ne from data from a single population and without extensive information about the genetics of the population, such as a linkage map, or a reference genome of the species of interest. C_LIO_LIWe present ONeSAMP 3.0, an algorithm for estimating Ne from single nucleotide polymorphism (SNP) data collected from a single population sample using Approximate Bayesian Computation and local linear regression. C_LIO_LIWe demonstrate the utility of this approach using simulated Wright-Fisher populations, and empirical data from five endangered Channel Island fox (Urocyon littoralis) populations to evaluate the performance of ONeSAMP 3.0 compared to a commonly used Ne estimator. Our results show that ONeSAMP 3.0 is robust to the number of individual samples and number of loci included in and appears accurate even if the range of true Ne values is large. C_LIO_LIThis method is broadly applicable to natural populations and is flexible enough that future versions could easily include summary statistics appropriate for a suite of biological and sampling conditions. ONeSAMP 3.0 is publicly available under the GNU license at https://github.com/AaronHong1024/ONeSAMP_3 and also available with Bioconda (https://bioconda.github.io/index.html). C_LI

Matching journals

The top 3 journals account for 50% of the predicted probability mass.

1
Molecular Ecology Resources
161 papers in training set
Top 0.1%
40.2%
2
Methods in Ecology and Evolution
160 papers in training set
Top 0.4%
9.3%
3
Bioinformatics
1061 papers in training set
Top 4%
6.5%
50% of probability mass above
4
G3 Genes|Genomes|Genetics
351 papers in training set
Top 0.3%
6.5%
5
PLOS ONE
4510 papers in training set
Top 38%
3.7%
6
Heredity
53 papers in training set
Top 0.1%
2.4%
7
Molecular Biology and Evolution
488 papers in training set
Top 2%
2.1%
8
Bioinformatics Advances
184 papers in training set
Top 2%
2.1%
9
Peer Community Journal
254 papers in training set
Top 1%
2.1%
10
Ecology and Evolution
232 papers in training set
Top 2%
1.9%
11
Frontiers in Genetics
197 papers in training set
Top 4%
1.8%
12
Scientific Reports
3102 papers in training set
Top 57%
1.7%
13
BMC Bioinformatics
383 papers in training set
Top 4%
1.7%
14
Genetics
225 papers in training set
Top 3%
1.5%
15
PLOS Genetics
756 papers in training set
Top 12%
1.0%
16
PeerJ
261 papers in training set
Top 12%
0.9%
17
BMC Genomics
328 papers in training set
Top 4%
0.9%
18
G3: Genes, Genomes, Genetics
222 papers in training set
Top 0.8%
0.8%
19
Journal of Open Source Software
22 papers in training set
Top 0.2%
0.8%
20
PLOS Computational Biology
1633 papers in training set
Top 24%
0.8%
21
Genetics Selection Evolution
33 papers in training set
Top 0.2%
0.7%
22
GigaScience
172 papers in training set
Top 4%
0.7%
23
Evolutionary Applications
91 papers in training set
Top 1%
0.7%
24
Genome Biology and Evolution
280 papers in training set
Top 2%
0.7%
25
GENETICS
189 papers in training set
Top 2%
0.5%
26
Nature Communications
4913 papers in training set
Top 67%
0.5%
27
European Journal of Human Genetics
49 papers in training set
Top 2%
0.5%