The Potential Cost-Effectiveness of a Machine Learning Tool That Can Prevent Untimely Intensive Care Unit Discharge

Mar 1, 2022, 00:00
10.1016/j.jval.2021.06.018
https://www.valueinhealthjournal.com/article/S1098-3015(21)01742-3/fulltext
Title : The Potential Cost-Effectiveness of a Machine Learning Tool That Can Prevent Untimely Intensive Care Unit Discharge
Citation : https://www.valueinhealthjournal.com/action/showCitFormats?pii=S1098-3015(21)01742-3&doi=10.1016/j.jval.2021.06.018
First page : 359
Section Title : THEMED SECTION: ARTIFICIAL INTELLIGENCE
Open access? : No
Section Order : 359

Objectives

The machine learning prediction model Pacmed Critical (PC), currently under development, may guide intensivists in their decision-making process on the most appropriate time to discharge a patient from the intensive care unit (ICU). Given the financial pressure on healthcare budgets, this study assessed whether PC has the potential to be cost-effective compared with standard care, without the use of PC, for Dutch patients in the ICU from a societal perspective.

Methods

A 1-year, 7-state Markov model reflecting the ICU care pathway and incorporating the PC decision tool was developed. A hypothetical cohort of 1000 adult Dutch patients admitted in the ICU was entered in the model. We used the literature, expert opinion, and data from Amsterdam University Medical Center for model parameters. The uncertainty surrounding the incremental cost-effectiveness ratio was assessed using deterministic and probabilistic sensitivity analyses and scenario analyses.

Results

PC was a cost-effective strategy with an incremental cost-effectiveness ratio of €18 507 per quality-adjusted life-year. PC remained cost-effective over standard care in multiple scenarios and sensitivity analyses. The likelihood that PC will be cost-effective was 71% at a willingness-to-pay threshold of €30 000 per quality-adjusted life-year. The key driver of the results was the parameter “reduction in ICU length of stay.”

Conclusions

We showed that PC has the potential to be cost-effective for Dutch ICUs in a time horizon of 1 year. This study is one of the first cost-effectiveness analyses of a machine learning device. Further research is needed to validate the effectiveness of PC, thereby focusing on the key parameter “reduction in ICU length of stay” and potential spill-over effects.

Categories :
  • Artificial Intelligence, Machine Learning, Predictive Analytics
  • Cost/Cost of Illness/Resource Use Studies
  • Cost-comparison, Effectiveness, Utility, Benefit Analysis
  • Economic Evaluation
  • Health Technology Assessment
  • Methodological & Statistical Research
  • Systems & Structure
Tags :
  • clinical decision support
  • cost-effectiveness
  • early health technology assessment
  • intensive care medicine
  • machine learning
Regions :
  • Global
  • Western Europe
ViH Article Tags :