Development and validation of a model to predict ceiling of care in COVID-19 hospitalized patients.

IF 2.5 2区 医学 Q2 HEALTH CARE SCIENCES & SERVICES
N Pallarès, H Inouzhe, S Straw, N Safdar, D Fernández, J Cortés, L Rodríguez, S Videla, I Barrio, K K Witte, J Carratalà, C Tebé
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引用次数: 0

Abstract

Background: Therapeutic ceiling of care is the maximum level of care deemed appropiate to offer to a patient based on their clinical profile and therefore their potential to derive benefit, within the context of the availability of resources. To our knowledge, there are no models to predict ceiling of care decisions in COVID-19 patients or other acute illnesses. We aimed to develop and validate a clinical prediction model to predict ceiling of care decisions using information readily available at the point of hospital admission.

Methods: We studied a cohort of adult COVID-19 patients who were hospitalized in 5 centres of Catalonia between 2020 and 2021. All patients had microbiologically proven SARS-CoV-2 infection at the time of hospitalization. Their therapeutic ceiling of care was assessed at hospital admission. Comorbidities collected at hospital admission, age and sex were considered as potential factors for predicting ceiling of care. A logistic regression model was used to predict the ceiling of care. The final model was validated internally and externally using a cohort obtained from the Leeds Teaching Hospitals NHS Trust. The TRIPOD Checklist for Prediction Model Development and Validation from the EQUATOR Network has been followed to report the model.

Results: A total of 5813 patients were included in the development cohort, of whom 31.5% were assigned a ceiling of care at the point of hospital admission. A model including age, COVID-19 wave, chronic kidney disease, dementia, dyslipidaemia, heart failure, metastasis, peripheral vascular disease, chronic obstructive pulmonary disease, and stroke or transient ischaemic attack had excellent discrimination and calibration. Subgroup analysis by sex, age group, and relevant comorbidities showed excellent figures for calibration and discrimination. External validation on the Leeds Teaching Hospitals cohort also showed good performance.

Conclusions: Ceiling of care can be predicted with great accuracy from a patient's clinical information available at the point of hospital admission. Cohorts without information on ceiling of care could use our model to estimate the probability of ceiling of care. In future pandemics, during emergency situations or when dealing with frail patients, where time-sensitive decisions about the use of life-prolonging treatments are required, this model, combined with clinical expertise, could be valuable. However, future work is needed to evaluate the use of this prediction tool outside COVID-19.

开发并验证用于预测 COVID-19 住院患者护理上限的模型。
背景:治疗护理上限是指在资源允许的情况下,根据患者的临床特征及其获益潜力,为患者提供的最高护理水平。据我们所知,目前还没有任何模型可以预测 COVID-19 患者或其他急性病患者的治疗上限决策。我们旨在开发并验证一种临床预测模型,利用入院时可获得的信息预测护理决策的上限:我们对 2020 年至 2021 年期间在加泰罗尼亚 5 个中心住院的 COVID-19 成年患者进行了研究。所有患者在住院时均经微生物学证实感染了 SARS-CoV-2。入院时对他们的治疗上限进行了评估。入院时收集的合并症、年龄和性别被视为预测治疗上限的潜在因素。采用逻辑回归模型预测护理上限。最终模型通过利兹教学医院 NHS 信托基金会的队列进行了内部和外部验证。在报告模型时,采用了 EQUATOR 网络的 TRIPOD 预测模型开发和验证核对表:结果:共有 5813 名患者被纳入开发队列,其中 31.5% 的患者在入院时被指定了护理上限。包括年龄、COVID-19波、慢性肾病、痴呆、血脂异常、心力衰竭、转移、外周血管疾病、慢性阻塞性肺病、中风或短暂性脑缺血发作在内的模型具有极佳的区分度和校准性。按性别、年龄组和相关合并症进行的分组分析表明,校准和辨别率都非常高。利兹教学医院队列的外部验证也显示出良好的性能:结论:根据患者入院时的临床信息,可以非常准确地预测护理上限。没有护理上限信息的队列可以使用我们的模型来估计护理上限的概率。在未来的大流行病、紧急情况或处理体弱病人时,如果需要对延长生命的治疗做出具有时间敏感性的决定,那么该模型与临床专业知识相结合,可能会很有价值。不过,今后还需要开展工作,评估这一预测工具在 COVID-19 之外的使用情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
BMC Palliative Care
BMC Palliative Care HEALTH CARE SCIENCES & SERVICES-
CiteScore
4.60
自引率
9.70%
发文量
201
审稿时长
21 weeks
期刊介绍: BMC Palliative Care is an open access journal publishing original peer-reviewed research articles in the clinical, scientific, ethical and policy issues, local and international, regarding all aspects of hospice and palliative care for the dying and for those with profound suffering related to chronic illness.
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