探索急性爱尔兰医院呼吸道感染(2016-2021)

IF 4 3区 医学 Q1 INFECTIOUS DISEASES
Doaa Amin , Gerry Hughes , Akke Vellinga
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引用次数: 0

摘要

呼吸道感染(RTIs)是发病率和死亡率的主要原因。本研究旨在探讨COVID-19大流行前和期间住院患者RTI的潜在特征,并应用监督式机器学习(ML)预测大流行期间的RTI诊断。方法从爱尔兰医院住院查询(HIPE)数据集中提取爱尔兰55家急性医院(2016-2021年)住院RTI患者的数据。应用了多变量逻辑回归、随机森林和极端梯度增强模型。结果在1133385例感染住院患者中,43.3% %发生RTI。其中65.2% %发生在大流行前,34.8% %发生在大流行期间。与大流行前相比,中位住院时间(LOS)从4天增加到5天(其他rti)和6天(COVID-19)。与RTI相关的死亡人数从3.3 %(大流行前)增加到7.6 %(大流行期间)(COVID-19: 11.3 %,其他RTI: 3.5 %),5. %的COVID-19感染是医院获得性感染。此外,COVID-19住院患者普遍比其他类型RTIs住院患者年轻(75% %大于45岁)。应用ML显示,COVID-19诊断与呼吸短促、咳嗽、发烧、胸痛、恶心呕吐、不适和疲劳、肥胖、全身炎症反应综合征、心动过缓、肾脏疾病和心动过速显著相关。此外,喘息、吸烟和心脏病将RTI感染与COVID-19区分开来。结论大流行期间,与大流行前相比,RTI感染住院患者的LOS更长,死亡率更高。监督ML有助于预测RTI诊断,喘息、吸烟和心脏病是其他类型RTI与COVID-19诊断之间的主要区别因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring respiratory tract infections in acute Irish hospitals (2016–2021)

Introduction

Respiratory tract infections (RTIs) are a leading cause of morbidity and mortality. This study aimed to explore the underlying characteristics of inpatients with an RTI pre-and-during the COVID-19 pandemic and apply supervised machine learning (ML) to predict the RTI diagnoses during the pandemic.

Methods

Data on inpatients with an RTI from 55 acute Irish hospitals (2016–2021) was extracted from the Irish hospital inpatient enquiry (HIPE) dataset. Multivariable logistic regression, random forests and extreme gradient boosting models were applied.

Results

Out of 1,133,385 inpatients with an infection, 43.3 % had an RTI. Of which 65.2 % were before the pandemic and 34.8 % during the pandemic. In comparison to pre-pandemic, the median hospital length of stay (LOS) increased from 4 days to 5 (other RTIs) and 6 days (COVID-19). Deaths associated with an RTI increased from 3.3 % (pre-pandemic) to 7.6 % (during pandemic) (COVID-19: 11.3 %, and other RTIs: 3.5 %) and 5.2 % of COVID-19 infections were hospital acquired. Furthermore, inpatients with COVID-19 were generally younger than inpatients with other types of RTIs (75 % over the age of 45). Applying ML showed that a COVID-19 diagnosis was significantly associated with shortness of breath, cough, fever, chest pain, nausea and vomiting, malaise and fatigue, obesity, systemic inflammatory response syndrome, bradycardia, kidney diseases, and tachycardia. In addition, wheezing, smoking and heart diseases distinguished an RTI infection from COVID-19.

Conclusions

During the pandemic, inpatients with an RTI infection had longer LOS and higher mortality compared to before the pandemic. Supervised ML is helpful in predicting an RTI diagnosis, with wheezing, smoking and heart diseases being the main discriminating factors between other types of RTIs from COVID-19 diagnoses.
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来源期刊
Journal of Infection and Public Health
Journal of Infection and Public Health PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH -INFECTIOUS DISEASES
CiteScore
13.10
自引率
1.50%
发文量
203
审稿时长
96 days
期刊介绍: The Journal of Infection and Public Health, first official journal of the Saudi Arabian Ministry of National Guard Health Affairs, King Saud Bin Abdulaziz University for Health Sciences and the Saudi Association for Public Health, aims to be the foremost scientific, peer-reviewed journal encompassing infection prevention and control, microbiology, infectious diseases, public health and the application of healthcare epidemiology to the evaluation of health outcomes. The point of view of the journal is that infection and public health are closely intertwined and that advances in one area will have positive consequences on the other. The journal will be useful to all health professionals who are partners in the management of patients with communicable diseases, keeping them up to date. The journal is proud to have an international and diverse editorial board that will assist and facilitate the publication of articles that reflect a global view on infection control and public health, as well as emphasizing our focus on supporting the needs of public health practitioners. It is our aim to improve healthcare by reducing risk of infection and related adverse outcomes by critical review, selection, and dissemination of new and relevant information in the field of infection control, public health and infectious diseases in all healthcare settings and the community.
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