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Derivation of a Contextually-Appropriate COVID-19 Mortality Scale for Low-Resource Settings

机译:用于低资源设置的上下文适当的Covid-19死亡率规模

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摘要

Background: In many low- and middle-income countries, where vaccinations will be delayed and healthcare systems are underdeveloped, the COVID-19 pandemic will continue for the foreseeable future. Mortality scales can aid frontline providers in low-resource settings (LRS) in identifying those at greatest risk of death so that limited resources can be directed towards those in greatest need and unnecessary loss of life is prevented. While many prognostication tools have been developed for, or applied to, COVID-19 patients, no tools to date have been purpose-designed for, and validated in, LRS. Objectives: This study aimed to develop a pragmatic tool to assist LRS frontline providers in evaluating in-hospital mortality risk using only easy-to-obtain demographic and clinical inputs. Methods: Machine learning was used on data from a retrospective cohort of Sudanese COVID-19 patients at two government referral hospitals to derive contextually appropriate mortality indices for COVID-19, which were then assessed by C-indices. Findings: Data from 467 patients were used to derive two versions of the AFEM COVID-19 Mortality Scale (AFEM-CMS), which evaluates in-hospital mortality risk using demographic and clinical inputs that are readily obtainable in hospital receiving areas. Both versions of the tool include age, sex, number of comorbidities, Glasgow Coma Scale, respiratory rate, and systolic blood pressure; in settings 'with' pulse oximetry, oxygen saturation is included and in settings 'without' access, heart rate is included. The AFEM-CMS showed good discrimination: the model including pulse oximetry had a C-statistic of 0.775 (95% CI: 0.737–0.813) and the model excluding it had a C-statistic of 0.719 (95% CI: 0.678–0.760). Conclusions: In the face of an enduring pandemic in many LRS, the AFEM-CMS serves as a practical solution to aid frontline providers in effectively allocating healthcare resources. The tool’s generalisability is likely narrow outside of similar extremely LRS settings, and further validation studies are essential prior to broader use.
机译:背景:在许多低收入和中等收入国家,疫苗接种将被推迟和医疗保健系统不发达,在COVID-19大流行将继续在可预见的未来。死亡率秤可以识别那些在死亡的风险最大,使有限的资源能够向那些最需要和生活造成不必要的损失,防止被定向有助于低资源环境(LRS)一线供应商。虽然Covid-19患者已经开发或应用了许多预后工具,但没有迄今为止的工具,目的是为LRS设计和验证的工具。目的:本研究旨在开发一种务实的工具,以帮助LRS前线提供商在易于获得的人口和临床投入中使用易于获得的内部死亡率风险评估。方法:机器学习用于来自两个政府推荐医院的苏丹Covid-19患者的回顾性队列的数据,以获得Covid-19的上下期死亡指标,然后由C-Indics评估。结果:467名患者的数据用于推导出两种版本的AFEM Covid-19死亡率规模(AFEM-CMS),其使用在医院接收领域容易获得的人口统计和临床投入来评估医院死亡率风险。该工具的两个版本包括年龄,性别,合并数,Glasgow Coma规模,呼吸率和收缩压;在“脉冲血氧速率”的“设置”中,包括氧气饱和度并在设置中没有“访问”,包括在内的心率。 AFEM-CMS显示出良好的歧视:包括脉搏血氧测定的模型具有0.775的C统计(95%CI:0.737-0.813),并且不包括其的模型为0.719(95%CI:0.678-0.760) 。结论:面对许多LRS的持久大流行,AFEM-CMS作为帮助前线提供商有效分配医疗资源的实用解决方案。该工具的最常可行性可能缩小相似的极其LRS设置,并且在更广泛使用之前,进一步的验证研究是必不可少的。

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