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Predicting Drug-Drug Interactions from Heterogeneous Data: An Embedding Approach

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arxiv 2103.10916 v1 pith:PCRL4AFT submitted 2021-03-19 cs.LG

Predicting Drug-Drug Interactions from Heterogeneous Data: An Embedding Approach

classification cs.LG
keywords datadrugpredictingddisrepresentationdrug-drugheterogeneousinteractions
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Predicting and discovering drug-drug interactions (DDIs) using machine learning has been studied extensively. However, most of the approaches have focused on text data or textual representation of the drug structures. We present the first work that uses multiple data sources such as drug structure images, drug structure string representation and relational representation of drug relationships as the input. To this effect, we exploit the recent advances in deep networks to integrate these varied sources of inputs in predicting DDIs. Our empirical evaluation against several state-of-the-art methods using standalone different data types for drugs clearly demonstrate the efficacy of combining heterogeneous data in predicting DDIs.

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