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Interpretable Prediction Rules for Congestion Risk in Intensive Care Units

Publication ,  Journal Article
Bravo, F; Rudin, C; Shaposhnik, Y; Yuan, Y
Published in: Stochastic Systems
June 1, 2024

We study the problem of predicting congestion risk in intensive care units (ICUs). Congestion is associated with poor service experience, high costs, and poor health outcomes. By predicting future congestion, decision makers can initiate preventive measures, such as rescheduling activities or increasing short-term capacity, to mitigate the effects of congestion. To this end, we consider well-established queueing models of ICUs and define “high-risk states” as system states that are likely to lead to congestion in the near future. We strive to formulate rules for determining whether a given system state is high risk. We design the rules to be interpretable (informally, easy to understand) for their practical appeal to stakeholders. We show that for simple Markovian queueing systems, such as the M=M=∞ queue with multiple patient classes, our rules take the form of linear and quadratic functions on the state space. For more general queueing systems, we employ methods from queueing theory, simulation, and machine learning (ML) to devise interpretable prediction rules, and we demonstrate their effectiveness through an extensive computational study, which includes a large-scale ICU model validated using data. Our study shows that congestion risk can be effectively and transparently predicted using linear ML models and interpretable features engineered from the queueing model representation of the system.

Duke Scholars

Published In

Stochastic Systems

DOI

EISSN

1946-5238

Publication Date

June 1, 2024

Volume

14

Issue

2

Start / End Page

111 / 130

Related Subject Headings

  • 4905 Statistics
  • 4901 Applied mathematics
  • 0899 Other Information and Computing Sciences
  • 0104 Statistics
  • 0102 Applied Mathematics
 

Citation

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Bravo, F., Rudin, C., Shaposhnik, Y., & Yuan, Y. (2024). Interpretable Prediction Rules for Congestion Risk in Intensive Care Units. Stochastic Systems, 14(2), 111–130. https://doi.org/10.1287/stsy.2022.0018
Bravo, F., C. Rudin, Y. Shaposhnik, and Y. Yuan. “Interpretable Prediction Rules for Congestion Risk in Intensive Care Units.” Stochastic Systems 14, no. 2 (June 1, 2024): 111–30. https://doi.org/10.1287/stsy.2022.0018.
Bravo F, Rudin C, Shaposhnik Y, Yuan Y. Interpretable Prediction Rules for Congestion Risk in Intensive Care Units. Stochastic Systems. 2024 Jun 1;14(2):111–30.
Bravo, F., et al. “Interpretable Prediction Rules for Congestion Risk in Intensive Care Units.” Stochastic Systems, vol. 14, no. 2, June 2024, pp. 111–30. Scopus, doi:10.1287/stsy.2022.0018.
Bravo F, Rudin C, Shaposhnik Y, Yuan Y. Interpretable Prediction Rules for Congestion Risk in Intensive Care Units. Stochastic Systems. 2024 Jun 1;14(2):111–130.

Published In

Stochastic Systems

DOI

EISSN

1946-5238

Publication Date

June 1, 2024

Volume

14

Issue

2

Start / End Page

111 / 130

Related Subject Headings

  • 4905 Statistics
  • 4901 Applied mathematics
  • 0899 Other Information and Computing Sciences
  • 0104 Statistics
  • 0102 Applied Mathematics