2022
DOI: 10.1101/2022.02.01.478608
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Deep Mendelian Randomization: Investigating the Causal Knowledge of Genomic Deep Learning Models

Abstract: Multi-task deep learning (DL) models can accurately predict diverse genomic marks from sequence, but whether these models learn the causal relationships between genomic marks is unknown. Here, we describe Deep Mendelian Randomization (DeepMR), a method for estimating causal relationships between genomic marks learned by genomic DL models. By combining Mendelian Randomization with in silico mutagenesis, DeepMR obtains local (locus specific) and global estimates of (an assumed) linear causal relationship between… Show more

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