Optimizing Gene-Based Testing for Antibiotic Resistance Prediction

Authors

  • David Hagerman Chalmers University of Technology
  • Anna Johnning Chalmers University of Technology Fraunhofer-Chalmers Centre
  • Roman Naeem Chalmers University of Technology
  • Fredrik Kahl Chalmers University
  • Erik Kristiansson Chalmers University of Technology Fraunhofer-Chalmers Centre
  • Lennart Svensson Chalmers University of Technology

DOI:

https://doi.org/10.1609/aaai.v39i27.35021

Abstract

Antibiotic Resistance (AR) is a critical global health challenge that necessitates the development of cost-effective, efficient, and accurate diagnostic tools. Given the genetic basis of AR, techniques such as Polymerase Chain Reaction (PCR) that target specific resistance genes offer a promising approach for predictive diagnostics using a limited set of key genes. This study introduces GenoARM, a novel framework that integrates reinforcement learning (RL) with transformer-based models to optimize the selection of PCR gene tests and improve AR predictions, leveraging observed metadata for improved accuracy. In our evaluation, we developed several high-performing baselines and compared them using publicly available datasets derived from real-world bacterial samples representing multiple clinically relevant pathogens. The results show that all evaluated methods achieve strong and reliable performance when metadata is not utilized. When metadata is introduced and the number of selected genes increases, GenoARM demonstrates superior performance due to its capacity to approximate rewards for unseen and sparse combinations. Overall, our framework represents a major advancement in optimizing diagnostic tools for AR in clinical settings.

Downloads

Published

2025-04-11

How to Cite

Hagerman, D., Johnning, A., Naeem, R., Kahl, F., Kristiansson, E., & Svensson, L. (2025). Optimizing Gene-Based Testing for Antibiotic Resistance Prediction. Proceedings of the AAAI Conference on Artificial Intelligence, 39(27), 28033–28041. https://doi.org/10.1609/aaai.v39i27.35021