Cost-effectiveness analysis of multimodal prognostication in cardiac arrest with EEG monitoring.

Neurology

From Harvard Medical School (E.A., S.S.M., S.S.C., M.T.B., M.B.W.); Department of Neurology (E.A., S.S.C., M.T.B., M.B.W.), Massachusetts General Hospital, Boston; Department of Neurology (E.A.), University of California, San Francisco; and Computer Science and Artificial Intelligence Laboratory (E.

Published: August 2020


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Article Abstract

Objective: To determine cost-effectiveness parameters for EEG monitoring in cardiac arrest prognostication.

Methods: We conducted a cost-effectiveness analysis to estimate the cost per quality-adjusted life-year (QALY) gained by adding continuous EEG monitoring to standard cardiac arrest prognostication using the American Academy of Neurology Practice Parameter (AANPP) decision algorithm: neurologic examination, somatosensory evoked potentials, and neuron-specific enolase. We explored lifetime cost-effectiveness in a closed system that incorporates revenue back into the medical system (return) from payers who survive a cardiac arrest with good outcome and contribute to the health system during the remaining years of life. Good outcome was defined as a Cerebral Performance Category (CPC) score of 1-2 and poor outcome as CPC of 3-5.

Results: An improvement in specificity for poor outcome prediction of 4.2% would be sufficient to make continuous EEG monitoring cost-effective (baseline AANPP specificity = 83.9%). In sensitivity analysis, the effect of increased sensitivity on the cost-effectiveness of EEG depends on the utility () assigned to a poor outcome. For patients who regard surviving with a poor outcome (CPC 3-4) worse than death ( = -0.34), an increased sensitivity for poor outcome prediction of 13.8% would make AANPP + EEG monitoring cost-effective (baseline AANPP sensitivity = 76.3%). In the closed system, an improvement in sensitivity of 1.8% together with an improvement in specificity of 3% was sufficient to make AANPP + EEG monitoring cost-effective, assuming lifetime return of 50% (USD $70,687).

Conclusion: Incorporating continuous EEG monitoring into cardiac arrest prognostication is cost-effective if relatively small improvements in sensitivity and specificity are achieved.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7455344PMC
http://dx.doi.org/10.1212/WNL.0000000000009916DOI Listing

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