| Literature DB >> 33367984 |
Daniel M Sheinson1, William B Wong2, Caroline E Solon2, Mindy M Cheng3, Anuj Shah2, David Elsea4, Yang Meng4.
Abstract
INTRODUCTION: Coronavirus disease 2019 (COVID-19) has imposed a considerable burden on the United States (US) health system, with particular concern over healthcare capacity constraints.Entities:
Keywords: COVID-19; Diagnostic test; Health policy; Health resources
Mesh:
Year: 2020 PMID: 33367984 PMCID: PMC7765700 DOI: 10.1007/s12325-020-01597-3
Source DB: PubMed Journal: Adv Ther ISSN: 0741-238X Impact factor: 3.845
Fig. 1Compartmental model structure
Fig. 2Estimated resource utilization (posterior means) over time and 95% credible intervals from calibrated model alongside observed data from The COVID Tracking Project
Estimated effect of public and private sector contributions to the reduction in the incidence and mortality of COVID-19 and improvements in healthcare resource utilization between June 1 and August 21, 2020
| Cumulative incidence | Cumulative mortality | Cumulative hospital non-ICU beds occupancy | Cumulative ICU beds occupancy | Cumulative ventilator use | Peak hospital non-ICU beds occupancy | Peak ICU beds occupancy | Peak ventilators use | |
|---|---|---|---|---|---|---|---|---|
| No public or private sector | ||||||||
| No testing or treatment | 17,952,264 | 315,230 | 7,339,023 | 1,777,231 | 733,404 | 153,698 | 37,245 | 15,338 |
| Public sector only (vs. no public or private sector) | ||||||||
| Testing and treatment | − 6,330,616 (− 35.3%) | − 128,850 (− 40.2%) | − 2,428,909 (− 33.1%) | − 600,165 (− 33.8%) | − 249,030 (− 34.0%) | − 51,464 (− 33.5%) | − 12,995 (− 34.9%) | − 5437 (− 35.5%) |
| Public + private sector (vs. public sector only) | ||||||||
| Testing and treatment | − 3,120,286 (− 26.8%) | − 82,855 (− 44.0%) | − 748,610 (− 15.2%) | − 195,356 (− 16.6%) | − 76,220 (− 15.7%) | − 31,883 (− 31.2%) | − 7244 (− 29.9%) | − 2884 (− 29.1%) |
| Testing only | − 3,120,286 (− 26.8%) | − 33,746 (− 17.9%) | − 895,722 (− 18.2%) | − 195,356 (− 16.6%) | − 76,202 (− 15.7%) | − 31,883 (− 31.2%) | − 7244 (− 29.9%) | − 2884 (− 29.1%) |
| Treatment only | 0 (0.0%) | − 60,014 (− 31.9%) | 173,435 (3.5%) | 0 (0.0%) | 0 (0.0%) | 4131 (4.0%) | 0 (0.0%) | 0 (0.0%) |
| Impact of potential future treatment effects on public + private sector contributions | ||||||||
| Reduction in mortality for ICU patients | − 3,120,286 (− 26.8%) | − 83,544 (− 44.3%) | − 748,610 (− 15.2%) | − 189,594 (− 16.1%) | − 76,202 (− 15.7%) | − 28,888 (− 28.3%) | − 7125 (− 29.4%) | − 2884 (− 29.1%) |
| Reduction in incidence of ICU admissions and ventilator use | − 3,120,286 (− 26.8%) | − 79,462 (− 42.2%) | − 531,031 (− 10.8%) | − 468,297 (− 39.8%) | − 213,429 (− 44.1%) | − 24,572 (− 24.0%) | − 12,974 (− 53.5%) | − 5608 (− 56.6%) |
| Reduction in ICU LOS and time on ventilator | − 3,120,286 (− 26.8%) | − 82,720 (− 43.9%) | − 748,610 (− 15.2%) | − 250,720 (− 21.3%) | − 97,670 (− 20.2%) | − 28,888 (− 28.3%) | − 8376 (− 34.5%) | − 3325 (− 33.6%) |
Hypothetical treatment effect scenarios are in addition to the testing and treatment contributions estimated in the public + private sector scenario. Treatment effects assumed are as follows: 0.28, 0.80, and 0.65 hazard ratios for reduction in mortality for non-ICU, ICU patients, and ICU patients on ventilation, respectively; 10% for reduction in incidence of ICU admissions and ventilator use, 3 days for reduction in non-ICU and ICU LOS & time on ventilator
ICU intensive care unit, LOS length of stay
Fig. 3Public and private sector contributions for COVID-19 incidence (a) and mortality (b) and hospital resource use over time (c, d). 6/1/2020 is the assumed start date of the private sector contributions to diagnostic testing and novel effective treatments. 8/21/20 is the end date of the results reporting period. ICU intensive care unit
Impact of model assumptions and parameters on incidence and mortality of COVID-19 and healthcare resource utilization
| (L, H) | Relative change vs. public + private sector contribution scenario | ||||||||
|---|---|---|---|---|---|---|---|---|---|
| Cumulative incidence | Cumulative mortality | Cumulative hospital non-ICU beds occupancy | Cumulative ICU beds occupancy | Cumulative ICU beds (ventilators) occupancy | Peak hospital non-ICU beds occupancy | Peak ICU beds occupancy | Peak ICU beds (ventilators) occupancy | ||
| Public + private sector contribution—treatment and testing | 8,501,362 | 105,525 | 4,162,323 | 981,710 | 408,155 | 73,346 | 17,006 | 7016 | |
| Private sector contribution starting date | |||||||||
| Public + private sector contribution starting date May 1 | a | − 15.4% | − 12.5% | − 12.6% | − 12.3% | − 11.8% | − 16.1% | − 15.9% | − 15.7% |
| Testing scenarios | |||||||||
| Increase in HT testing by 20% | b | − 2.0% | − 0.9% | − 0.9% | − 0.8% | − 0.8% | − 2.7% | − 2.6% | − 2.4% |
| % testing performed for asymptomatic patients | (0%, 20%) | (− 3.4%, 3.3%) | (− 2.9%, 2.8%) | (− 2.9%, 2.8%) | (− 2.8%, 2.6%) | (− 2.7%, 2.6%) | (− 3.9%, 3.7%) | (− 3.8%, 3.6%) | (− 3.7%, 3.6%) |
| LDT test sensitivity | (60%, 100%) | (71.3%, − 4.9%) | (61.3%, − 4.1%) | (61.7%, − 4.1%) | (59.0%, − 4.0%) | (57.6%, − 3.9%) | (77.3%, − 5.3%) | (75.6%, − 5.2%) | (74.6%, − 5.1%) |
| Time to test result—days | (2, 4) | (− 22.1%, 27.9%) | (− 18.5%, 19.8%) | (− 18.7%, 20.0%) | (− 17.9%, 18.7%) | (− 17.4%, 17.9%) | (− 24.2%, 32.6%) | (− 23.5%, 31.2%) | (− 23.2%, 30.4%) |
| Clinical scenarios | |||||||||
| Time from symptom onset to test for severe/critical patients—days | (0.5, 2) | (− 33.2%, 37.4%) | (− 31.2%, 36.5%) | (− 31.3%, 36.6%) | (− 30.7%, 35.8%) | (− 30.4%, 35.4%) | (− 34.3%, 38.3%) | (− 34.0%, 38.0%) | (− 33.8%, 37.9%) |
| Time from symptom onset to test for mild patients—days | (1, 3) | (− 26.1%, 10.1%) | (− 24.3%, 9.5%) | (− 24.3%, 9.6%) | (− 23.8%, 9.3%) | (− 23.5%, 9.2%) | (− 27.3%, 10.6%) | (− 27.0%, 10.5%) | (− 26.8%, 10.4%) |
| % of infected individuals that are asymptomatic | (10%, 25%) | (16.7%, − 13.0%) | (24.9%, − 18.7%) | (25.1%, − 18.8%) | (24.3%, − 18.4%) | (23.9%, − 18.1%) | (30.7%, − 22.1%) | (29.9%, − 21.7%) | (29.5%, − 21.5%) |
| Behavioral factors | |||||||||
| % of severe cases self-isolating immediately upon symptom onset | (0%, 10%) | (9.9%, − 9.2%) | (8.7%, − 8.0%) | (8.7%, − 8.1%) | (8.4%, − 7.8%) | (8.3%, − 7.7%) | (11.1%, − 10.1%) | (10.8%, − 9.9%) | (10.6%, − 9.7%) |
| % severe cases self-isolating after symptom onset | (70%, 90%) | (5.1%, − 4.5%) | (4.8%, − 4.2%) | (4.8%, − 4.3%) | (4.7%, − 4.2%) | (4.7%, − 4.1%) | (5.3%, − 4.7%) | (5.2%, − 4.6%) | (5.2%, − 4.6%) |
| % mild cases self-isolating after symptom onset | (0%, 10%) | (13.1%, − 11.8%) | (12.3%, − 11.0%) | (12.4%, − 11.0%) | (12.1%, − 10.8%) | (11.9%, − 10.6%) | (13.7%, − 12.3%) | (13.5%, − 12.2%) | (13.4%, − 12.1%) |
H high parameter estimate, HT high throughput, ICU intensive care unit, L low parameter estimate, LB lower bound, LDT laboratory developed test
aAssumes private sector contributions to treatment and testing starts on May 1, 2020, and the result collection period is the same as base case June 1 to August 21
bThe number of HT machines is increased by 20% and the number of LDTs is reduced by the same absolute amount so that the total number of systems is the same
Fig. 4The relationship between test sensitivity and self-isolation while awaiting test results on cumulative incidence of COVID-19 cases. Results displayed are the percentage change in cumulative incidence relative to the scenario assuming public + private sector contributions to diagnostic testing and novel treatment
| A compartmental model for COVID-19-related disease transmission, healthcare resource utilization, and mortality was calibrated to observed COVID-19 tracking data in order to study the impact of treatment and testing during the pandemic in the USA |
| To what extent have novel treatments and expanded diagnostic testing alleviated the severity of the COVID-19 pandemic in the USA in terms of resource use, disease transmission, and mortality? |
| Both public and private sector contributions to diagnostic testing and treatment were estimated to have led to a reduction in COVID-19 cases, mortality, and hospital bed/ventilator utilization; thus, policies which facilitate equitable access to testing and treatments are warranted |
| Our findings suggest that false negatives may contribute significantly to increases in cases, particularly in conjunction with poor self-isolation; thus testing accuracy should be considered in combination with time to test results |
| A combination of treatments which alter different outcomes, balancing reductions in mortality with reductions in hospital length of stay, may be optimal to provide health system capacity relief; thus, policies which facilitate continued innovation in treatments are critical |