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Pre-trained models and inference code for "Biology-informed neural networks learn nonlinear representations from omics data to improve genomic prediction and interpretability"

Authors: Kontolati, Katiana; Gladstone, Rini Jasmine; Davis, Ian; Pickering, Ethan;

Pre-trained models and inference code for "Biology-informed neural networks learn nonlinear representations from omics data to improve genomic prediction and interpretability"

Abstract

This repository accompanies the manuscript: Biology-informed neural networks learn nonlinear representations from omics data to improve genomic prediction and interpretability It provides everything needed to reproduce the inference portion of the study using pre-trained BINN models.

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