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症状监测能否帮助预测英格兰冬季医院床位压力?

Can syndromic surveillance help forecast winter hospital bed pressures in England?

机构信息

National Infection Service, Public Health England, Birmingham, England, United Kingdom.

Department Head, Statistics and Modelling Economics Department, Public Health England, London, England, United Kingdom.

出版信息

PLoS One. 2020 Feb 10;15(2):e0228804. doi: 10.1371/journal.pone.0228804. eCollection 2020.

Abstract

BACKGROUND

Health care planners need to predict demand for hospital beds to avoid deterioration in health care. Seasonal demand can be affected by respiratory illnesses which in England are monitored using syndromic surveillance systems. Therefore, we investigated the relationship between syndromic data and daily emergency hospital admissions.

METHODS

We compared the timing of peaks in syndromic respiratory indicators and emergency hospital admissions, between 2013 and 2018. Furthermore, we created forecasts for daily admissions and investigated their accuracy when real-time syndromic data were included.

RESULTS

We found that syndromic indicators were sensitive to changes in the timing of peaks in seasonal disease, especially influenza. However, each year, peak demand for hospital beds occurred on either 29th or 30th December, irrespective of the timing of syndromic peaks. Most forecast models using syndromic indicators explained over 70% of the seasonal variation in admissions (adjusted R square value). Forecast errors were reduced when syndromic data were included. For example, peak admissions for December 2014 and 2017 were underestimated when syndromic data were not used in models.

CONCLUSION

Due to the lack of variability in the timing of the highest seasonal peak in hospital admissions, syndromic surveillance data do not provide additional early warning of timing. However, during atypical seasons syndromic data did improve the accuracy of forecast intensity.

摘要

背景

医疗保健规划者需要预测医院床位的需求,以避免医疗服务质量下降。季节性需求可能受到呼吸道疾病的影响,而英国则使用综合征监测系统来监测呼吸道疾病。因此,我们研究了综合征数据与每日急诊入院之间的关系。

方法

我们比较了 2013 年至 2018 年期间综合征呼吸道指标和急诊入院的高峰时间。此外,我们创建了每日入院人数的预测,并研究了实时综合征数据纳入时的预测准确性。

结果

我们发现综合征指标对季节性疾病高峰时间的变化很敏感,尤其是流感。然而,每年 12 月 29 日或 30 日,无论综合征高峰的时间如何,医院床位的需求高峰都会出现。使用综合征指标的大多数预测模型都能解释超过 70%的入院季节性变化(调整后的 R 平方值)。纳入综合征数据后,预测误差会降低。例如,如果在模型中不使用综合征数据,2014 年 12 月和 2017 年 12 月的高峰入院人数就会被低估。

结论

由于医院入院最高季节性高峰时间的变化不大,综合征监测数据不能提供有关时间的额外预警。然而,在非典型季节,综合征数据确实提高了预测强度的准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/771b/7010388/e2a9955eadd1/pone.0228804.g001.jpg

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