ImaGene is a supervised machine learning algorithm to predict natural selection and estimate selection coefficients from population genomic data. It can be used to estimate any parameter of interest from an evolutionary population genetics model.
ImaGene implements a convolutional neural network (CNN) which takes as input haplotypes of a locus of interest for a population. It outputs confusion matrices as well as point estimates of the selection coefficient (or any parameter of interest) along with its posterior distribution and various metrics of confidence.
The original manuscript can be found here and it is open access. You should cite it as:
Torada, L., Lorenzon, L., Beddis, A. et al. ImaGene: a convolutional neural network to quantify natural selection from genomic data. BMC Bioinformatics 20, 337 (2019)
doi:10.1186/s12859-019-2927-x
and you can download the citation file in .ris or .json format.
Related studies from the group are on balancing selection, adaptive introgression, and a review paper.
We provide examples on how to run ImaGene on your local machine, on Google Colab or Google Cloud in the Tutorials
folder.
Below are instructions to download and install ImaGene on your local machine or server.
Download the repository using git.
git clone https://github.com/mfumagalli/ImaGene
ImaGene runs under Python3 and it is interfaced with tensorflow and keras. We recommend using mamba to set the environment and take care of all dependencies. There are detailed instructions on how to download conda for linux and macOS. A suitable environment can be created with
mamba create -n ImaGene python=3 tensorflow=2 keras=2 numpy scipy scikit-image scikit-learn matplotlib pydot arviz jupyter jupyterlab -y
Activate the environment with
mamba activate ImaGene
and pip-install protobuf with
pip3 install --force --no-deps protobuf
You can deactivate the environment with
mamba deactivate
.
ImaGene receives training data in msms.
Unless you have already generated training data, you are required to download msms separately following the instructions here.
Follow the link, download the .zip folder and extract it.
The .jar file of interest will be in the lib
folder.
There are no requirements for msms to be installed in a specific folder.
However, msms requires java to be installed.
On unix Debian systems just type sudo apt-get update && apt-get upgrade; sudo apt-get install default-jdk
Otherwise follow the link here if you need to install java on other systems.
Remember that java must be in your /usr/bin folder.
In unix systems you can create a symbolic link with ln -s ~/Downloads/java-XXX/jre/bin/java /usr/bin/java
, as an example.
Please look at the jupyter notebook 01_binary.ipynb
(or the corresponding Colab
version) for a tutorial on how to use ImaGene for predicting natural selection with a simple binary classification.
We also provide examples on how ImaGene can be used for multiclass classification in 02_multiclass.ipynb
and 03_multiclass_for_continuous.ipynb
and for regression in 04_regression.ipynb
(or the corresponding Colab
versions).
Finally, we provide an utility generate_dataset.sh
to quickly generate simulations with msms to be used for training.
This script takes an input file with all parameters needed for the simulations.
An example of this file is params.txt
and tutorials show how to run such simulations in practice.
More information can be found in the tutorials.
The folder Reproduce
contains all scripts used for the analyses shown in the manuscript.
- main: Matteo Fumagalli
- others (in alphabetical order): Alice Beddis, Ulas Isildak, Sirimar (Nook) Laosinwattana, Lucrezia Lorenzon, Jacky Pui Chung Siu, Luis Torada