Literature-Augmented Clinical Outcome Prediction
- URL: http://arxiv.org/abs/2111.08374v1
- Date: Tue, 16 Nov 2021 11:19:02 GMT
- Title: Literature-Augmented Clinical Outcome Prediction
- Authors: Aakanksha Naik, Sravanthi Parasa, Sergey Feldman, Lucy Lu Wang and Tom
Hope
- Abstract summary: We introduce techniques to help bridge this gap between EBM and AI-based clinical models.
We propose a novel system that automatically retrieves patient-specific literature based on intensive care (ICU) patient information.
Our model is able to substantially boost predictive accuracy on three challenging tasks in comparison to strong recent baselines.
- Score: 10.46990394710927
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Predictive models for medical outcomes hold great promise for enhancing
clinical decision-making. These models are trained on rich patient data such as
clinical notes, aggregating many patient signals into an outcome prediction.
However, AI-based clinical models have typically been developed in isolation
from the prominent paradigm of Evidence Based Medicine (EBM), in which medical
decisions are based on explicit evidence from existing literature. In this
work, we introduce techniques to help bridge this gap between EBM and AI-based
clinical models, and show that these methods can improve predictive accuracy.
We propose a novel system that automatically retrieves patient-specific
literature based on intensive care (ICU) patient information, aggregates
relevant papers and fuses them with internal admission notes to form outcome
predictions. Our model is able to substantially boost predictive accuracy on
three challenging tasks in comparison to strong recent baselines; for
in-hospital mortality, we are able to boost top-10% precision by a large margin
of over 25%.
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