Indication Finding: a novel use case for representation learning
Maren Eckhoff
Valmir Selimi
Alexander Aranovitch
Ian Lyons
Emily Briggs
Jennifer Hou
Alex Devereson
Matej Macak
David Champagne
Chris Anagnostopoulos

Abstract
Many therapies are effective in treating multiple diseases. We present an approach that leverages methods developed in natural language processing and real-world data to prioritize potential, new indications for a mechanism of action (MoA). We specifically use representation learning to generate embeddings of indications and prioritize them based on their proximity to the indications with the strongest available evidence for the MoA. We demonstrate the successful deployment of our approach for anti-IL-17A using embeddings generated with SPPMI and present an evaluation framework to determine the quality of indication finding results and the derived embeddings.
View on arXivComments on this paper