风险预测模型的发展,以预测急诊科疑似尿路感染的成人尿液培养生长:来自英国一家大学医院的电子健康记录研究方案。

Diagnostic and prognostic research Pub Date : 2020-09-16 eCollection Date: 2020-01-01 DOI:10.1186/s41512-020-00083-2
Patrick Rockenschaub, Martin J Gill, David McNulty, Orlagh Carroll, Nick Freemantle, Laura Shallcross
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引用次数: 4

摘要

背景:尿路感染(UTI)是住院的主要原因,诊断基于泌尿系统症状和微生物培养。由于可获得培养结果长达72小时的滞后,以及常规诊断的局限性,许多疑似尿路感染的患者不必要地开始接受抗生素治疗。基于常规收集的临床信息的预测模型可以帮助临床医生排除低风险患者入院后不久的细菌性尿路感染诊断,为指导抗生素治疗决策提供额外的证据。方法:利用2011年至2017年收集的伯明翰伊丽莎白女王医院(QEHB)的电子病历,我们旨在开发一系列模型,以估计疑似UTI综合征的个体在急诊科(ED)就诊时细菌性UTI的概率。预测将在急诊科就诊期间和住院后的不同时间点进行,以评估随着时间的推移,随着更多关于患者状态的信息的获得,预测性能是否会得到改善。所有模型都将使用2018/2019年的QEHB数据进行外部验证,以确定预期的未来性能。讨论:使用电子健康记录的风险预测模型提供了一种改进抗生素处方决策的新方法,将临床和人口统计数据与测试结果结合起来,根据细菌感染的可能性对患者进行分层。结合专家意见,它们可以帮助临床医生确定从早期停用抗生素中获益最多的患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of risk prediction models to predict urine culture growth for adults with suspected urinary tract infection in the emergency department: protocol for an electronic health record study from a single UK university hospital.

Background: Urinary tract infection (UTI) is a leading cause of hospital admissions and is diagnosed based on urinary symptoms and microbiological cultures. Due to lags in the availability of culture results of up to 72 h, and the limitations of routine diagnostics, many patients with suspected UTI are started on antibiotic treatment unnecessarily. Predictive models based on routinely collected clinical information may help clinicians to rule out a diagnosis of bacterial UTI in low-risk patients shortly after hospital admission, providing additional evidence to guide antibiotic treatment decisions.

Methods: Using electronic hospital records from Queen Elizabeth Hospital Birmingham (QEHB) collected between 2011 and 2017, we aim to develop a series of models that estimate the probability of bacterial UTI at presentation in the emergency department (ED) among individuals with suspected UTI syndromes. Predictions will be made during ED attendance and at different time points after hospital admission to assess whether predictive performance may be improved over time as more information becomes available about patient status. All models will be externally validated for expected future performance using QEHB data from 2018/2019.

Discussion: Risk prediction models using electronic health records offer a new approach to improve antibiotic prescribing decisions, integrating clinical and demographic data with test results to stratify patients according to their probability of bacterial infection. Used in conjunction with expert opinion, they may help clinicians to identify patients that benefit the most from early antibiotic cessation.

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