npj Digital Medicine (Sep 2024)

Zero shot health trajectory prediction using transformer

  • Pawel Renc,
  • Yugang Jia,
  • Anthony E. Samir,
  • Jaroslaw Was,
  • Quanzheng Li,
  • David W. Bates,
  • Arkadiusz Sitek

DOI
https://doi.org/10.1038/s41746-024-01235-0
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 10

Abstract

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Abstract Integrating modern machine learning and clinical decision-making has great promise for mitigating healthcare’s increasing cost and complexity. We introduce the Enhanced Transformer for Health Outcome Simulation (ETHOS), a novel application of the transformer deep-learning architecture for analyzing high-dimensional, heterogeneous, and episodic health data. ETHOS is trained using Patient Health Timelines (PHTs)—detailed, tokenized records of health events—to predict future health trajectories, leveraging a zero-shot learning approach. ETHOS represents a significant advancement in foundation model development for healthcare analytics, eliminating the need for labeled data and model fine-tuning. Its ability to simulate various treatment pathways and consider patient-specific factors positions ETHOS as a tool for care optimization and addressing biases in healthcare delivery. Future developments will expand ETHOS’ capabilities to incorporate a wider range of data types and data sources. Our work demonstrates a pathway toward accelerated AI development and deployment in healthcare.