Learning graph representations of biochemical networks and its application to enzymatic link prediction
Julie Jiang, Li-Ping Liu, and Soha Hassoun

TL;DR
This paper introduces Enzymatic Link Prediction (ELP), a graph embedding method that predicts enzymatic transformations between molecules, significantly improving link prediction accuracy in biochemical networks.
Contribution
The work develops a novel graph embedding approach for enzymatic link prediction, integrating molecular attributes and network connectivity, with both transductive and inductive models.
Findings
ELP achieves high AUC in enzymatic link prediction.
Graph embedding improves prediction accuracy by 24% over fingerprint methods.
The approach aids visualization of biochemical networks.
Abstract
The complete characterization of enzymatic activities between molecules remains incomplete, hindering biological engineering and limiting biological discovery. We develop in this work a technique, Enzymatic Link Prediction (ELP), for predicting the likelihood of an enzymatic transformation between two molecules. ELP models enzymatic reactions catalogued in the KEGG database as a graph. ELP is innovative over prior works in using graph embedding to learn molecular representations that capture not only molecular and enzymatic attributes but also graph connectivity. We explore both transductive (test nodes included in the training graph) and inductive (test nodes not part of the training graph) learning models. We show that ELP achieves high AUC when learning node embeddings using both graph connectivity and node attributes. Further, we show that graph embedding for predicting enzymatic…
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Taxonomy
TopicsComputational Drug Discovery Methods · Bioinformatics and Genomic Networks · Protein Structure and Dynamics
