| Literature DB >> 35911175 |
Edmond Awad1, Bence Bago2, Jean-François Bonnefon3, Nicholas A Christakis4, Iyad Rahwan5, Azim Shariff6.
Abstract
Objective. When medical resources are scarce, clinicians must make difficult triage decisions. When these decisions affect public trust and morale, as was the case during the COVID-19 pandemic, experts will benefit from knowing which triage metrics have citizen support. Design. We conducted an online survey in 20 countries, comparing support for 5 common metrics (prognosis, age, quality of life, past and future contribution as a health care worker) to a benchmark consisting of support for 2 no-triage mechanisms (first-come-first-served and random allocation). Results. We surveyed nationally representative samples of 1000 citizens in each of Brazil, France, Japan, and the United States and also self-selected samples from 20 countries (total N = 7599) obtained through a citizen science website (the Moral Machine). We computed the support for each metric by comparing its usability to the usability of the 2 no-triage mechanisms. We further analyzed the polarizing nature of each metric by considering its usability among participants who had a preference for no triage. In all countries, preferences were polarized, with the 2 largest groups preferring either no triage or extensive triage using all metrics. Prognosis was the least controversial metric. There was little support for giving priority to healthcare workers. Conclusions. It will be difficult to define triage guidelines that elicit public trust and approval. Given the importance of prognosis in triage protocols, it is reassuring that it is the least controversial metric. Experts will need to prepare strong arguments for other metrics if they wish to preserve public trust and morale during health crises. Highlights: We collected citizen preferences regarding triage decisions about scarce medical resources from 20 countries.We find that citizen preferences are universally polarized.Citizens either prefer no triage (random allocation or first-come-first served) or extensive triage using all common triage metrics, with "prognosis" being the least controversial.Experts will need to prepare strong arguments to preserve or elicit public trust in triage decisions.Entities:
Keywords: cross-cultural study; medical ethics; triage preferences
Year: 2022 PMID: 35911175 PMCID: PMC9326829 DOI: 10.1177/23814683221113573
Source DB: PubMed Journal: MDM Policy Pract ISSN: 2381-4683
Triage Metrics Considered, Together with a Summary of Their Rationale and Some of the Controversies They Generated
| Triage Metric | Rationale | Controversies |
|---|---|---|
| Prognosis | Prioritize patients who have better odds to survive treatment or better odds to survive on a longer term | Short-term prognosis is consensual, but controversies arise when considering long-term survival, which can be affected by comorbidities unrelated to the probability of surviving treatment, especially when these comorbidities are more frequent in patients from disadvantaged backgrounds. |
| Quality of life | Prioritize patients without comorbidities that may affect quality of life after surviving the disease | Deprioritizing patients with impaired physical ability, dementia, cerebral damage, or yet other conditions could breach the ethics of nondiscrimination. |
| Age | Maximize saved life-years (or opportunities to experience life stages) among patients with a similar prognosis | Deprioritizing older patients solely because of their age may breach the ethics of nondiscrimination, especially when an age cutoff is defined as an exclusion criterion. |
| Social value (past) | Prioritize health care workers who contracted the disease in the line of duty | Many guidelines prohibit the use of social value, only to make an exception for health care workers, which may seem unfair to other key workers. |
| Social value (future) | Prioritize health care workers to preserve their ability to fight the disease in the future | It is not always clear whether health care workers can be back to work in a realistic time frame and whether the logic should be extended to other key workers. |
Demographic Description of the 4 National Samples
| Country |
| Male (%) | Age (SD) | Know COVID Patient (%) | Smoker100 (%) | College (%) | Conservatives (%) | Religious (%) | White (%) |
|---|---|---|---|---|---|---|---|---|---|
| BRA | 1000 | 49 | 36.2 (12.7) | 54 | 20 | — | — | — | — |
| FRA | 1000 | 49 | 47.8 (17.1) | 21 | 56 | 41.1 | 30.5 | — | — |
| JPN | 1000 | 54 | 49.5 (15.6) | 3 | 44 | — | — | — | — |
| USA | 1000 | 46 | 48.8 (17.4) | 25 | 46 | 45.4 | 36.3 | 64.2 | 69.8 |
YouGov offers different default demographic packages in all 4 countries. Hence, the recorded demographic characteristics of the samples differ among the surveyed countries. N, number of participants; male, percentage of males; age, mean age in years, with standard deviations in parentheses; know COVID patient, percentage of participants who reported to have known a COVID patient at the time of responding; smoker100, percentage of participants who smoked at least 100 cigarettes in their entire life; college, percentage of participants graduating from college; conservatives, percentage of participants reported being conservative; religious, percentage of participants reported to be religious; White, percentage of participants who reported to be White.
Figure 1Top 3 sets of acceptable triage metrics per country. Most common sets of accepted metrics, in (A) nationally representative samples, where the black dots under each group indicate the metrics accepted by the group, (B) self-selected samples from the Moral Machine website, where the color code indicates the size of the no triage group, full triage group, and third largest group. (C) One example of a country-level correlation between COVID-19 death rates and rejection of triage. The circle size reflects the sample size.
Figure 2Potential for reconciliation, by metric and country. Proportion of participants who reject each triage metric by country, together with its usability rate among these same respondents, in (A) nationally representative samples and (B) self-selected samples from the Moral Machine website.