Neurosurgery, King's College Hospital, King's Health Partners Academic Health Sciences Centre, London, UK
Neurosurgery, King's College Hospital, King's Health Partners Academic Health Sciences Centre, London, UK.
BMJ Open. 2021 Apr 8;11(4):e045782. doi: 10.1136/bmjopen-2020-045782.
Europe was the epicentre of the COVID-19 pandemic in March 2020, with the highest number of cases and deaths between March and April. In May, the infection numbers registered a fall followed by a second new rise, not proportionally reflected by an increase in the number of deaths. We aimed to investigate the relationship between disease prevalence and infection fatality rate (IFR), and the number of intensive care unit (ICU) and hospital admissions over time, to develop a predictive model, as well as appraising the potential contributing factors underpinning this complex relationship.
A prospective epidemiological study using data from six countries collected between 10 March and 4 September 2020. Data on the number of daily hospital and ICU admissions with COVID-19 were gathered, and the IFR and the prevalence were calculated. Trends over time were analysed. A linear regression model was used to determine the association between the fatality rates and the number of admissions.
The prediction model confirmed the linear association between the fatality rates and the numbers of ICU and hospital admissions. The exception was during the peak of the COVID-19 pandemic when the model underestimated the fatalities indicating that a substantial number of deaths occurred outside of the hospitals. The fatality rates decreased in all countries from May until September regardless of the trends in prevalence, differences in healthcare systems or strategic variations in handling the pandemic.
The observed gradual reduction in COVID-19 fatality rates over time despite varying disease prevalence and public health measures across multiple countries warrants search for a biological explanation. While our understanding of this novel virus grows, hospital and ICU admission rates remain effective predictors of patient outcomes which can be used as early warning signs for escalation of public health measures.
2020 年 3 月,欧洲成为 COVID-19 大流行的中心,3 月至 4 月期间病例和死亡人数最多。5 月,感染人数下降,随后出现第二次新的上升,但死亡人数并没有相应增加。我们旨在调查疾病流行率与感染病死率(IFR)之间的关系,以及随时间推移重症监护病房(ICU)和住院人数的变化,以开发预测模型,并评估潜在的因素支撑这一复杂关系。
这是一项前瞻性的流行病学研究,使用了 2020 年 3 月 10 日至 9 月 4 日期间六个国家收集的数据。收集了 COVID-19 每日住院和 ICU 入院人数的数据,并计算了 IFR 和流行率。分析了随时间的趋势。使用线性回归模型确定病死率与入院人数之间的关联。
预测模型证实了病死率与 ICU 和住院人数之间的线性关联。但在 COVID-19 大流行高峰期存在例外,模型低估了死亡人数,表明大量死亡发生在医院之外。5 月至 9 月期间,所有国家的病死率均有所下降,无论流行率趋势、医疗保健系统差异或处理大流行的策略变化如何。
尽管多个国家的疾病流行率和公共卫生措施存在差异,但观察到 COVID-19 病死率随时间逐渐降低,这需要寻找生物学解释。随着我们对这种新型病毒的了解不断增加,医院和 ICU 入院率仍然是患者预后的有效预测指标,可以作为公共卫生措施升级的早期预警信号。