Knowledge-Driven New Drug Recommendation
Zhenbang Wu, Huaxiu Yao, Zhe Su, David M Liebovitz, Lucas M Glass,, James Zou, Chelsea Finn, Jimeng Sun

TL;DR
This paper introduces EDGE, a novel few-shot learning approach for recommending new drugs with limited prescription data, leveraging drug ontology and external knowledge to improve accuracy in personalized medicine.
Contribution
EDGE is the first method to adapt few-shot learning for new drug recommendation by integrating drug ontology and external knowledge to handle complex relations and false negatives.
Findings
Achieves 7.3% ROC-AUC improvement over baselines.
Effectively links new drugs to existing ones using ontology.
Handles false-negative supervision with external knowledge.
Abstract
Drug recommendation assists doctors in prescribing personalized medications to patients based on their health conditions. Existing drug recommendation solutions adopt the supervised multi-label classification setup and only work with existing drugs with sufficient prescription data from many patients. However, newly approved drugs do not have much historical prescription data and cannot leverage existing drug recommendation methods. To address this, we formulate the new drug recommendation as a few-shot learning problem. Yet, directly applying existing few-shot learning algorithms faces two challenges: (1) complex relations among diseases and drugs and (2) numerous false-negative patients who were eligible but did not yet use the new drugs. To tackle these challenges, we propose EDGE, which can quickly adapt to the recommendation for a new drug with limited prescription data from a few…
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Taxonomy
TopicsMachine Learning in Healthcare · Computational Drug Discovery Methods · Tuberculosis Research and Epidemiology
MethodsOntology
