A Python API for estimating statistical high-order epistasis in genotype-phenotype maps.
-
Updated
Aug 18, 2023 - Python
A Python API for estimating statistical high-order epistasis in genotype-phenotype maps.
A package for detecting epistasis by machine learning
Epistatic Net is an algorithm which allows for spectral regularization of deep neural networks to predict biological fitness functions (e.g., protein functions).
Code and Tutorials for Running the MArginal ePIstasis Test (MAPIT)
Code and simulations using interaction-LD score regression
NPDR: Nearest-neighbor Projected-Distance Regression with the generalized linear model
The multivariate MArginal ePIstasis Test
Jupyter notebooks for Genetics paper, "Detecting high-order epistasis in nonlinear genotype-phenotype maps"
A tool to predict missing data in sparsely sampled genotype-phenotype maps
Case-control genetics datasets evolved to be epistatic
Parallel Implementations of the Empirical Bayesian Elastic Net Cross-Validation in R
The W-Model, a tunable Black-Box Discrete Optimization Benchmarking (BB-DOB) problem, implemented for the BB-DOB@GECCO Workshop.
Inference of Epistatic Gene Networks
GWAS third-level epistatic search tool for cluster architectures
A Python tool to calculate penetrance tables for high-order epistasis models
A library for calculating penetrance tables of any bivariate epistasis model.
PAGER is an efficient genotype encoding strategy designed to improve the detection of non-additive genetic variation in complex trait association studies and epistasis investigation. PAGER dynamically encodes genetic variants or multi-locus genotypes (MLG) by normalizing mean phenotypic differences between genotype/MLG classes.
PAGER is an efficient genotype encoding strategy designed to improve the detection of non-additive genetic variation in complex trait association studies and epistasis investigation. PAGER dynamically encodes genetic variants or multi-locus genotypes (MLG) by normalizing mean phenotypic differences between genotype/MLG classes.
Non-linear Genetic Effects for Complex Traits
Add a description, image, and links to the epistasis topic page so that developers can more easily learn about it.
To associate your repository with the epistasis topic, visit your repo's landing page and select "manage topics."