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Locally Informed Simulation to Predict Hospital Capacity Needs During the COVID-19 Pandemic.
Weissman, Gary E; Crane-Droesch, Andrew; Chivers, Corey; Luong, ThaiBinh; Hanish, Asaf; Levy, Michael Z; Lubken, Jason; Becker, Michael; Draugelis, Michael E; Anesi, George L; Brennan, Patrick J; Christie, Jason D; Hanson, C William; Mikkelsen, Mark E; Halpern, Scott D.
  • Weissman GE; University of Pennsylvania, Philadelphia, Pennsylvania (G.E.W., M.Z.L., G.L.A., P.J.B., J.D.C., C.W.H., M.E.M., S.D.H.).
  • Crane-Droesch A; University of Pennsylvania and Penn Medicine Predictive Healthcare, Philadelphia, Pennsylvania (A.C., M.E.D.).
  • Chivers C; Penn Medicine Predictive Healthcare, Philadelphia, Pennsylvania (C.C., T.L., A.H., J.L., M.B.).
  • Luong T; Penn Medicine Predictive Healthcare, Philadelphia, Pennsylvania (C.C., T.L., A.H., J.L., M.B.).
  • Hanish A; Penn Medicine Predictive Healthcare, Philadelphia, Pennsylvania (C.C., T.L., A.H., J.L., M.B.).
  • Levy MZ; University of Pennsylvania, Philadelphia, Pennsylvania (G.E.W., M.Z.L., G.L.A., P.J.B., J.D.C., C.W.H., M.E.M., S.D.H.).
  • Lubken J; Penn Medicine Predictive Healthcare, Philadelphia, Pennsylvania (C.C., T.L., A.H., J.L., M.B.).
  • Becker M; Penn Medicine Predictive Healthcare, Philadelphia, Pennsylvania (C.C., T.L., A.H., J.L., M.B.).
  • Draugelis ME; University of Pennsylvania and Penn Medicine Predictive Healthcare, Philadelphia, Pennsylvania (A.C., M.E.D.).
  • Anesi GL; University of Pennsylvania, Philadelphia, Pennsylvania (G.E.W., M.Z.L., G.L.A., P.J.B., J.D.C., C.W.H., M.E.M., S.D.H.).
  • Brennan PJ; University of Pennsylvania, Philadelphia, Pennsylvania (G.E.W., M.Z.L., G.L.A., P.J.B., J.D.C., C.W.H., M.E.M., S.D.H.).
  • Christie JD; University of Pennsylvania, Philadelphia, Pennsylvania (G.E.W., M.Z.L., G.L.A., P.J.B., J.D.C., C.W.H., M.E.M., S.D.H.).
  • Hanson CW; University of Pennsylvania, Philadelphia, Pennsylvania (G.E.W., M.Z.L., G.L.A., P.J.B., J.D.C., C.W.H., M.E.M., S.D.H.).
  • Mikkelsen ME; University of Pennsylvania, Philadelphia, Pennsylvania (G.E.W., M.Z.L., G.L.A., P.J.B., J.D.C., C.W.H., M.E.M., S.D.H.).
  • Halpern SD; University of Pennsylvania, Philadelphia, Pennsylvania (G.E.W., M.Z.L., G.L.A., P.J.B., J.D.C., C.W.H., M.E.M., S.D.H.).
Ann Intern Med ; 173(1): 21-28, 2020 07 07.
Article in English | MEDLINE | ID: covidwho-38773
ABSTRACT

BACKGROUND:

The coronavirus disease 2019 (COVID-19) pandemic challenges hospital leaders to make time-sensitive, critical decisions about clinical operations and resource allocations.

OBJECTIVE:

To estimate the timing of surges in clinical demand and the best- and worst-case scenarios of local COVID-19-induced strain on hospital capacity, and thus inform clinical operations and staffing demands and identify when hospital capacity would be saturated.

DESIGN:

Monte Carlo simulation instantiation of a susceptible, infected, removed (SIR) model with a 1-day cycle.

SETTING:

3 hospitals in an academic health system. PATIENTS All people living in the greater Philadelphia region. MEASUREMENTS The COVID-19 Hospital Impact Model (CHIME) (http//penn-chime.phl.io) SIR model was used to estimate the time from 23 March 2020 until hospital capacity would probably be exceeded, and the intensity of the surge, including for intensive care unit (ICU) beds and ventilators.

RESULTS:

Using patients with COVID-19 alone, CHIME estimated that it would be 31 to 53 days before demand exceeds existing hospital capacity. In best- and worst-case scenarios of surges in the number of patients with COVID-19, the needed total capacity for hospital beds would reach 3131 to 12 650 across the 3 hospitals, including 338 to 1608 ICU beds and 118 to 599 ventilators.

LIMITATIONS:

Model parameters were taken directly or derived from published data across heterogeneous populations and practice environments and from the health system's historical data. CHIME does not incorporate more transition states to model infection severity, social networks to model transmission dynamics, or geographic information to account for spatial patterns of human interaction.

CONCLUSION:

Publicly available and designed for hospital operations leaders, this modeling tool can inform preparations for capacity strain during the early days of a pandemic. PRIMARY FUNDING SOURCE University of Pennsylvania Health System and the Palliative and Advanced Illness Research Center.
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Full text: Available Collection: International databases Database: MEDLINE Main subject: Pneumonia, Viral / Models, Organizational / Coronavirus Infections / Decision Making / Pandemics / Betacoronavirus / Intensive Care Units Type of study: Observational study / Prognostic study Limits: Humans Country/Region as subject: North America Language: English Journal: Ann Intern Med Year: 2020 Document Type: Article

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Full text: Available Collection: International databases Database: MEDLINE Main subject: Pneumonia, Viral / Models, Organizational / Coronavirus Infections / Decision Making / Pandemics / Betacoronavirus / Intensive Care Units Type of study: Observational study / Prognostic study Limits: Humans Country/Region as subject: North America Language: English Journal: Ann Intern Med Year: 2020 Document Type: Article