Impact of the COVID-19 Pandemic on Providing Recommendations During Goals-of-Care Conversations: A Multisite Survey.

Journal of palliative medicine(2023)

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摘要
Goals-of-care conversations (GoCCs) are essential for individualized end-of-life care. Shared decision-making (SDM) that elicits patients' goals and values to collaboratively make life sustaining treatment (LST) decisions is best practice. However, it is unknown how the COVID-19 pandemic onset and associated changes to care delivery, stress on providers, and clinical uncertainty affected SDM and recommendation-making during GoCCs. To assess providers' attitudes and behaviors related to GoCCs during the COVID-19 pandemic and identify factors associated with provision of LST recommendations. Survey of United States Veterans Health Administration (VA) health care providers. Health care providers from 20 VA facilities with high COVID-19 caseloads early in the pandemic who had authority to place LST orders and practiced in select specialties ( = 3398). We had 323 respondents (9.5% adjusted response rate). Most were age ≥50 years (51%), female (63%), non-Hispanic white (64%), and had ≥1 GoCC per week during peak-COVID-19 (78%). Compared with pre-COVID-19, providers believed it was less appropriate and felt less comfortable giving an LST recommendation during peak-COVID-19 ( < 0.001). One-third (32%) reported either "never" or "rarely" giving an LST recommendation during GoCCs at peak-COVID-19. In adjusted regression models, being a physician and discussing patients' goals and values were positively associated with giving an LST recommendation ( = 0.380,  = 0.031 and  = 0.400,  < 0.001, respectively) at peak-COVID-19. Providers who discuss patients' preferences and values are more likely to report giving a recommendation; both behaviors are markers of SDM during GoCCs. Our findings suggest potential areas for training in conducting patient-centered GoCCs.
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关键词
COVID-19,advance care planning,decision making,life support care,physician's role,shared
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