A new, lightning fast implementation of ADMIXTOOLS.
ADMIXTOOLS is a collection of programs which use genetic data to infer how populations are related to one another. It has been used in countless publications to test whether populations form clades (qpDstat, qpWave), to estimate ancestry proportions (qpAdm), and to fit admixture graphs (qpGraph).
ADMIXTOOLS 2 provides the same functionality as ADMIXTOOLS in a new look, and it’s orders of magnitude faster. This is achieved through separating the computation of f2-statistics from all other computations, and through a number of other optimizations. In the example below, rendering the plot takes much longer than computing the fit of a new qpGraph model:
- Much faster than the original ADMIXTOOLS software
- Simple R command line interface
- Even simpler point-and-click interface
- Several new features and methodological innovations that make it
easier to find robust models:
- Automated and semi-automated admixture graph inference
- Simultaneous exploration of many qpAdm models
- Unbiased comparison of any two qpGraph models using out-of-sample scores
- Jackknife and bootstrap standard errors and confidence intervals for any qpAdm, qpWave, and qpGraph parameters
- Interface with msprime makes it easy to simulate genetic data under an admixture graph
- Full support for genotype data in PACKEDANCESTRYMAP/EIGENSTRAT format and PLINK format
- Wrapper functions around the original ADMIXTOOLS software (see also admixr)
- Extensive documentation
- New features available on request!
ADMIXTOOLS 2 is currently still under active development. Most of it
has already been tested extensively, but functionality is still added
and may change here and there. ADMIXTOOLS 2 is not yet on the CRAN
servers (so you can’t install it with install.packages()
), but you can
install it from github with the following commands (provided you have R
version 3.5 or higher):
install.packages("devtools") # if "devtools" is not installed already
devtools::install_github("uqrmaie1/admixtools")
library("admixtools")
The above commands will install all R package dependencies which are required to run ADMIXTOOLS 2 on the command line. For the interactive app, additional packages are required, which can be installed like this:
devtools::install_github("uqrmaie1/admixtools", dependencies = TRUE)
If you encounter any problems during the installation, this is most likely because some of the required R packages cannot be installed. If that happens, try manually re-installing some of the larger packages, and pay attention to any error message:
install.packages("Rcpp")
install.packages("tidyverse")
install.packages("igraph")
install.packages("plotly")
Running devtools::install_github("uqrmaie1/admixtools")
will compile
C++ from source code (this isn’t necessary when installing packages from
CRAN with install.packages()
).
If you get the following error:
Error: Failed to install 'admixtools' from GitHub: Could not find tools necessary to compile a package.
you might be able to solve the problem by installing Rtools for your version of R if you use Windows, or Xcode command line tools if you use macOS. This is also described here.
If this doesn’t help, please contact me.
Admixture graphs can be fitted like this:
genotype_data = "/my/geno/prefix"
fit = qpgraph(genotype_data, example_graph)
fit$score
#> [1] 19219.98
plot_graph(fit$edges)
Clearly not a historically accurate model, but it gets the idea across.
When testing more than one model, it makes sense to extract and re-use f2-statistics:
f2_blocks = f2_from_geno(genotype_data)
fit = qpgraph(f2_blocks, example_graph)
fit$score
#> [1] 19219.98
f2-statistics can also be used to estimate admixture weights:
left = c("Altai_Neanderthal.DG", "Vindija.DG")
right = c("Chimp.REF", "Mbuti.DG", "Russia_Ust_Ishim.DG", "Switzerland_Bichon.SG")
target = "Denisova.DG"
qpadm(f2_blocks, left, right, target)$weights
#> # A tibble: 2 x 5
#> target left weight se z
#> <chr> <chr> <dbl> <dbl> <dbl>
#> 1 Denisova.DG Altai_Neanderthal.DG 49.6 23.3 2.13
#> 2 Denisova.DG Vindija.DG -48.6 23.3 -2.08
Or to get f4-statistics:
f4(f2_blocks)
#> # A tibble: 105 x 8
#> pop1 pop2 pop3 pop4 est se z p
#> <chr> <chr> <chr> <chr> <dbl> <dbl> <dbl> <dbl>
#> 1 Altai_Nean… Chimp.REF Deniso… Mbuti.DG 0.0196 6.07e-4 32.4 1.32e-229
#> 2 Altai_Nean… Denisova.DG Chimp.… Mbuti.DG -0.0129 3.64e-4 -35.6 2.22e-277
#> 3 Altai_Nean… Mbuti.DG Chimp.… Denisova.DG -0.0326 5.22e-4 -62.5 0.
#> 4 Altai_Nean… Chimp.REF Deniso… Russia_Ust… 0.0180 6.87e-4 26.3 6.43e-152
#> 5 Altai_Nean… Denisova.DG Chimp.… Russia_Ust… -0.0152 4.46e-4 -34.0 4.67e-254
#> 6 Altai_Nean… Russia_Ust_… Chimp.… Denisova.DG -0.0332 5.55e-4 -60.0 0.
#> 7 Altai_Nean… Chimp.REF Deniso… Switzerlan… 0.0181 6.63e-4 27.3 1.09e-164
#> 8 Altai_Nean… Denisova.DG Chimp.… Switzerlan… -0.0150 4.64e-4 -32.3 6.06e-229
#> 9 Altai_Nean… Switzerland… Chimp.… Denisova.DG -0.0331 5.74e-4 -57.7 0.
#> 10 Altai_Nean… Chimp.REF Deniso… Vindija.DG -0.0771 6.98e-4 -110. 0.
#> # … with 95 more rows
ADMIXTOOLS 2 also has a simple point-and-click interface. This makes it easy to explore many qpAdm or qpGraph models at the same time, for example by allowing you to build and change admixture graphs interactively. Typing the following command in the R console launches the app:
run_shiny_admixtools()
One of the design goals behind ADMIXTOOLS 2 is to make the algorithms more transparent, so that the steps leading from from genotype data to conclusions about demographic history are easier to follow.
To this end, all ADMIXTOOLS 2 functions are documented. You can also take a look at the tutorial, read more about how ADMIXTOOLS 2 computes f-statistics and standard errors, and what you can do with admixture graphs.
For even greater transparency, many of the core functions are
implemented twice: In C++ for performance (used by default), and in R,
which makes it easier to trace the computations step by step. For
example, if you want to know how weights are computed in qpadm()
, you
can type qpadm
in R to get the function code and you will see another
function which is called qpadm_weights()
. By default, this function
will be replaced by its faster C++ version cpp_qpadm_weights()
. But
you can still see what it’s doing without reading the C++ code by typing
admixtools:::qpadm_weights
. And you can tell qpadm()
to use the R
versions instead of the C++ versions by calling qpadm(cpp = FALSE)
.
For questions, feature requests, and bug reports, please contact Robert Maier under [email protected].
If you wish to cite ADMIXTOOLS 2, you can link to this website and mention that a manuscript describing ADMIXTOOLS 2 is currently under preparation.
- ADMIXTOOLS The original ADMIXTOOLS software
- admixr An R package with ADMIXTOOLS wrapper functions and many useful tutorials
- admixturegraph An R package for automatic graph inference
- miqoGraph A Julia package for automatic graph inference
- MixMapper Another method to infer admixture graphs
- TreeMix Another method to infer admixture graphs
- Legofit A program to estimate the history of population size, subdivision, and gene flow
- qpBrute Automated graph fitting and Bayes factor calculations