| Literature DB >> 32730812 |
Yuvaram N V Reddy1, Rochelle P Walensky2, Mallika L Mendu3, Nathaniel Green4, Krishna P Reddy5.
Abstract
RATIONALE &Entities:
Keywords: Continuous renal replacement therapy (CRRT); acute care; acute kidney injury (AKI); acute kidney injury stage 3 requiring dialysis (AKI 3D); acute renal failure (ARF); continuous kidney replacement therapy (CKRT); coronavirus disease 2019 (COVID-19); mathematical model; pandemic; resource allocation; resource shortage; shortages
Mesh:
Year: 2020 PMID: 32730812 PMCID: PMC7385068 DOI: 10.1053/j.ajkd.2020.07.005
Source DB: PubMed Journal: Am J Kidney Dis ISSN: 0272-6386 Impact factor: 8.860
Input Parameters for Base-Case Model Simulations of CKRT Demand and Capacity During the Initial Wave of the COVID-19 Pandemic in the United States
| Parameter | Base-Case Value | Range in Sensitivity Analysis | References |
|---|---|---|---|
| CKRT demand during the initial pandemic wave | |||
| Incidence of AKI 3D requiring CKRT among hospitalized patients with COVID-19 | 5.2% | 4.8%-6.9% | 4-8 |
| Time from hospitalization to AKI 3D requiring CKRT among hospitalized patients with COVID-19 | 7 days | 5-10 days | 20 |
| Duration of CKRT among hospitalized patients with COVID-19 | 6 days | 6-9 days | 8, 21 |
| Non–COVID-19 CKRT demand multiplier during the pandemic | 0.40 | 0.25-0.75 | 22 |
| IHME model version | 06/10/2020 | 04/22/2020, 06/10/2020 | 16 |
| CKRT capacity: CKRT capacity multiplier | 1.50 | 1.25-1.75 | – |
| CKRT demand and capacity; prevalence of AKI 3D among ICU patients pre–COVID-19 | 8.8% | 6.6%-11.0% | 3 |
Abbreviations: AKI 3D, acute kidney injury stage 3 requiring dialysis; CKRT, continuous kidney replacement therapy; COVID-19, coronavirus disease 2019; ICU, intensive care unit; IHME, Institute for Health Metrics and Evaluation; SEIR, susceptible, exposed, infectious, recovered.
February 6, 2020, to August 4, 2020.
In sensitivity analysis, we varied this parameter from 5 to 10 days based on presumed time from hospitalization to ICU transfer and time from ICU transfer to development of AKI 3D requiring CKRT.
We assumed an unadjusted duration of CKRT of 8 days based on the Acute Renal Failure Trial Network Study. Assuming patients who died had an average CKRT duration of 4 days, we adjusted this duration to 6 days to account for the high mortality rate among patients with COVID-19 (55%).
We assumed a base-case value of 0.40 based on a review of assumptions made in the Harvard Global Health Institute COVID-19 model. We chose a range of 0.25 to 0.75 based on expert opinion.
The original IHME model (including the 04/22/2020 version) estimated daily hospitalizations due to COVID-19 from COVID-19 death rates with assumptions made on the impact of social interventions on COVID-19 transmission. This model has been criticized as it did not specifically account for COVID-19 transmission characteristics, traditionally modeled under an SEIR framework. IHME updated its model and the 06/10/2020 IHME version uses a multistage hybrid model, incorporating COVID-19 transmission characteristics, death rates, and the impact of social interventions. To assess the impact of this SEIR framework and other IHME updates to the model on outcomes, we varied the IHME version between the 04/22/2020 and 06/10/2020 versions.
This assumption was based on clinical experience informed by local capacity. We confirmed the face validity of this assumption with nephrologists at 2 hospitals.
Data were obtained from a meta-analysis including 17 US studies and more than 415,000 patients with acute kidney injury in medical and surgical ICUs. Although this sample size provided a very narrow confidence interval, we chose a range of 6.6% to 11.0% based on expert opinion.
Model-Generated CKRT Demand, Capacity, and Shortage at Peak Resource Use During the Initial Wave of the COVID-19 Pandemic
| State | CKRT Demand at Peak Resource Use (95% UI) | CKRT Capacity | Projected CKRT Shortage | CKRT Shortage at Peak Resource Use (95% UI) |
|---|---|---|---|---|
| Alabama | 59 (57-62) | 167 | No | — |
| Alaska | 3 (3-4) | 10 | No | — |
| Arizona | 78 (58-233) | 122 | Possible | 0 (0-110) |
| Arkansas | 27 (20-63) | 65 | No | — |
| California | 274 (258-292) | 627 | No | — |
| Colorado | 59 (53-242) | 101 | Possible | 0 (0-141) |
| Connecticut | 143 (127-162) | 59 | Yes | 85 (68-104) |
| Delaware | 18 (17-20) | 25 | No | — |
| District of Columbia | 24 (22-27) | 32 | No | — |
| Florida | 209 (199-239) | 552 | No | — |
| Georgia | 126 (115-203) | 258 | No | — |
| Hawaii | 6 (6-7) | 19 | No | — |
| Idaho | 9 (8-10) | 23 | No | — |
| Illinois | 217 (199-238) | 266 | No | — |
| Indiana | 104 (98-111) | 183 | No | — |
| Iowa | 29 (26-35) | 43 | No | — |
| Kansas | 24 (23-26) | 64 | No | — |
| Kentucky | 46 (44-49) | 124 | No | — |
| Louisiana | 119 (109-129) | 117 | Possible | 2 (0-12) |
| Maine | 10 (8-22) | 24 | No | — |
| Maryland | 130 (112-151) | 106 | Yes | 24 (5-45) |
| Massachusetts | 159 (146-172) | 130 | Yes | 29 (16-42) |
| Michigan | 255 (235-277) | 234 | Yes | 21 (1-43) |
| Minnesota | 55 (52-59) | 109 | No | — |
| Mississippi | 41 (39-46) | 71 | No | — |
| Missouri | 63 (61-66) | 161 | No | — |
| Montana | 5 (5-5) | 18 | No | — |
| Nebraska | 20 (16-55) | 46 | Possible | 0 (0-9) |
| Nevada | 42 (41-44) | 115 | No | — |
| New Hampshire | 14 (12-17) | 19 | No | — |
| New Jersey | 410 (381-442) | 138 | Yes | 272 (243-304) |
| New Mexico | 22 (20-44) | 36 | Possible | 0 (0-8) |
| New York | 1,019 (939-1,104) | 363 | Yes | 656 (576-741) |
| North Carolina | 105 (97-144) | 298 | No | — |
| North Dakota | 9 (8-18) | 24 | No | — |
| Ohio | 140 (132-149) | 307 | No | — |
| Oklahoma | 36 (34-37) | 97 | No | — |
| Oregon | 22 (21-23) | 66 | No | — |
| Pennsylvania | 239 (221-259) | 293 | No | — |
| Rhode Island | 25 (23-28) | 27 | Possible | 0 (0-1) |
| South Carolina | 58 (46-136) | 131 | Possible | 0 (0-6) |
| South Dakota | 5 (5-6) | 10 | No | — |
| Tennessee | 82 (67-159) | 225 | No | — |
| Texas | 207 (199-217) | 604 | No | — |
| Utah | 19 (15-36) | 47 | No | — |
| Vermont | 3 (2-3) | 6 | No | — |
| Virginia | 89 (84-94) | 173 | No | — |
| Washington | 34 (60-66) | 128 | No | — |
| West Virginia | 17 (17-18) | 55 | No | — |
| Wisconsin | 44 (42-49) | 110 | No | — |
| Wyoming | 3 (2-6) | 5 | Possible | 0 (0-1) |
Note: This analysis uses the base-case values for the input parameters listed in Table 1. Minor discrepancies in numerical values in the table are due to rounding.
Abbreviations: CKRT, continuous kidney replacement therapy; COVID-19, coronavirus disease 2019; UI, uncertainty interval.
We derived these estimates from the Institute for Health Metrics and Evaluation model and present them as means with 95% UI.
Represents states that could possibly encounter a shortage (where CKRT capacity is within the 95% UI of CKRT demand).
Represents states that are projected to encounter a shortage (where CKRT capacity is below the 95% UI of CKRT demand).
Figure 1Continuous kidney replacement therapy (CKRT) shortages by state during the initial wave of the coronavirus disease 2019 (COVID-19) pandemic; base-case scenario. Estimates were model-generated. Group (1) represents all states projected to encounter a CKRT shortage, where CKRT capacity is below the 95% uncertainty interval (UI) of CKRT demand; group (2), states that may encounter a CKRT shortage, where CKRT capacity is within the 95% UI of CKRT demand; group (3), states not anticipated to encounter a CKRT shortage, where CKRT capacity is above the 95% UI of CKRT demand.
Figure 2One-way sensitivity analysis of the number of states projected to encounter continuous kidney replacement therapy (CKRT) shortage during the initial wave of the coronavirus disease 2019 (COVID-19) pandemic. The horizontal axis of this tornado diagram shows the number of states projected to encounter a CKRT shortage. The vertical axis shows key input parameters. The base-case value for each input parameter is listed in parentheses before the semicolon. The range across which we varied each parameter is listed after the semicolon. The number on the left in the range corresponds to the left end of the horizontal bar, and the number on the right in the range corresponds to the right end of the horizontal bar. The dashed vertical line represents the base-case scenario. As shown, the CKRT capacity multiplier has the greatest impact on the outcome of number of states projected to encounter CKRT shortage during the initial wave of the COVID-19 pandemic. Abbreviations: AKI 3D, acute kidney injury stage 3 requiring dialysis; ICU, intensive care unit; IHME, Institute for Health Metrics and Evaluation.
Figure 3Continuous kidney replacement therapy (CKRT) shortages by state during the initial wave of the coronavirus disease 2019 (COVID-19) pandemic; best-case scenario. Estimates were model-generated. Group (1) represents all states projected to encounter a CKRT shortage, where CKRT capacity is below the 95% uncertainty interval (UI) of CKRT demand; group (2), states that may encounter a CKRT shortage, where CKRT capacity is within the 95% UI of CKRT demand; group (3), states not anticipated to encounter a CKRT shortage, where CKRT capacity is above the 95% UI of CKRT demand. The best-case scenario projected by the model is obtained when the input parameters are varied simultaneously as follows: (1) incidence of acute kidney injury stage 3 requiring dialysis (AKI 3D) requiring CKRT among hospitalized patients with COVID-19: 4.8%; (2) time from hospitalization to AKI 3D: 10 days; (3) duration of CKRT: 6 days; (4) non–COVID-19 CKRT demand multiplier during the initial wave of the COVID-19 pandemic: 0.25; (5) prevalence of AKI 3D among intensive care unit patients pre–COVID-19: 11.0%; and (6) CKRT capacity multiplier: 1.75.
Figure 4Continuous kidney replacement therapy (CKRT) shortages by state during the initial wave of the coronavirus disease 2019 (COVID-19) pandemic; worst-case scenario. Estimates were model-generated. Group (1) represents all states projected to encounter a CKRT shortage, where CKRT capacity is below the 95% uncertainty interval (UI) of CKRT demand; group (2), states that may encounter a CKRT shortage, where CKRT capacity is within the 95% UI of CKRT demand; group (3), states not anticipated to encounter a CKRT shortage, where CKRT capacity is above the 95% UI of CKRT demand. The worst-case scenario projected by the model is obtained when the input parameters are varied simultaneously as follows: (1) incidence of acute kidney injury stage 3 requiring dialysis (AKI 3D) requiring CKRT among hospitalized patients with COVID-19: 6.9%; (2) time from hospitalization to AKI 3D: 5 days; (3) duration of CKRT: 9 days; (4) non–COVID-19 CKRT demand multiplier during the initial wave of the COVID-19 pandemic: 0.75; (5) prevalence of AKI 3D among intensive care unit patients pre–COVID-19: 6.6%; and (6) CKRT capacity multiplier: 1.25.
Figure 5Heat maps demonstrating states with continuous kidney replacement therapy (CKRT) shortages during the initial wave of the coronavirus disease 2019 (COVID-19) pandemic in the base-case, best-case, and worst-case scenario. The base-case scenario uses input parameters listed in the base-case value column of Table 1. The best-case scenario uses the highest CKRT capacity estimate and lowest CKRT demand estimate, which is obtained when the input parameters are varied simultaneously as detailed in the legend to Figure 3. The worst-case scenario uses the lowest CKRT capacity estimate and highest CKRT demand estimate, which is obtained when the input parameters are varied simultaneously as detailed in the legend to Fig 4. Abbreviation: UI, uncertainty interval.