AILGAPMLDec 3, 2019

Explainable artificial intelligence model to predict acute critical illness from electronic health records

arXiv:1912.01266v1367 citations
Originality Incremental advance
AI Analysis

This addresses the need for interpretable AI in healthcare to facilitate clinical translation, though it is incremental as it builds on existing AI systems for EHRs.

The authors tackled the problem of early detection of acute critical illness by developing an explainable AI early warning score system that maintains high predictive performance while providing clinicians with explanations based on relevant electronic health records data.

We developed an explainable artificial intelligence (AI) early warning score (xAI-EWS) system for early detection of acute critical illness. While maintaining a high predictive performance, our system explains to the clinician on which relevant electronic health records (EHRs) data the prediction is grounded. Acute critical illness is often preceded by deterioration of routinely measured clinical parameters, e.g., blood pressure and heart rate. Early clinical prediction is typically based on manually calculated screening metrics that simply weigh these parameters, such as Early Warning Scores (EWS). The predictive performance of EWSs yields a tradeoff between sensitivity and specificity that can lead to negative outcomes for the patient. Previous work on EHR-trained AI systems offers promising results with high levels of predictive performance in relation to the early, real-time prediction of acute critical illness. However, without insight into the complex decisions by such system, clinical translation is hindered. In this letter, we present our xAI-EWS system, which potentiates clinical translation by accompanying a prediction with information on the EHR data explaining it.

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