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疑似中枢神经系统感染儿童细菌性脑膜炎的诊断预测模型:一项系统评价和前瞻性验证研究

Diagnostic prediction models for bacterial meningitis in children with a suspected central nervous system infection: a systematic review and prospective validation study.

作者信息

Groeneveld Nina S, Bijlsma Merijn W, van Zeggeren Ingeborg E, Staal Steven L, Tanck Michael W T, van de Beek Diederik, Brouwer Matthijs C

机构信息

Department of Neurology, Amsterdam UMC Location AMC, Amsterdam, The Netherlands.

Department of Pediatrics, Amsterdam UMC Location AMC, Amsterdam, The Netherlands.

出版信息

BMJ Open. 2024 Aug 7;14(8):e081172. doi: 10.1136/bmjopen-2023-081172.

Abstract

OBJECTIVES

Diagnostic prediction models exist to assess the probability of bacterial meningitis (BM) in paediatric patients with suspected meningitis. To evaluate the diagnostic accuracy of these models in a broad population of children suspected of a central nervous system (CNS) infection, we performed external validation.

METHODS

We performed a systematic literature review in Medline to identify articles on the development, refinement or validation of a prediction model for BM, and validated these models in a prospective cohort of children aged 0-18 years old suspected of a CNS infection.

PRIMARY AND SECONDARY OUTCOME MEASURES

We calculated sensitivity, specificity, predictive values, the area under the receiver operating characteristic curve (AUC) and evaluated calibration of the models for diagnosis of BM.

RESULTS

In total, 23 prediction models were validated in a cohort of 450 patients suspected of a CNS infection included between 2012 and 2015. In 75 patients (17%), the final diagnosis was a CNS infection including 30 with BM (7%). AUCs ranged from 0.69 to 0.94 (median 0.83, interquartile range [IQR] 0.79-0.87) overall, from 0.74 to 0.96 (median 0.89, IQR 0.82-0.92) in children aged ≥28 days and from 0.58 to 0.91 (median 0.79, IQR 0.75-0.82) in neonates.

CONCLUSIONS

Prediction models show good to excellent test characteristics for excluding BM in children and can be of help in the diagnostic workup of paediatric patients with a suspected CNS infection, but cannot replace a thorough history, physical examination and ancillary testing.

摘要

目的

存在诊断预测模型来评估疑似脑膜炎的儿科患者患细菌性脑膜炎(BM)的概率。为了评估这些模型在广泛的疑似中枢神经系统(CNS)感染儿童群体中的诊断准确性,我们进行了外部验证。

方法

我们在Medline中进行了系统的文献综述,以识别关于BM预测模型的开发、改进或验证的文章,并在一个前瞻性队列中对这些模型进行验证,该队列包括0至18岁疑似CNS感染的儿童。

主要和次要结局指标

我们计算了敏感性、特异性、预测值、受试者工作特征曲线下面积(AUC),并评估了诊断BM模型的校准情况。

结果

在2012年至2015年期间纳入的450例疑似CNS感染的患者队列中,共验证了23个预测模型。在75例患者(17%)中,最终诊断为CNS感染,其中30例为BM(7%)。总体AUC范围为0.69至0.94(中位数0.83,四分位间距[IQR]0.79 - 0.87),≥28天的儿童中AUC范围为0.74至0.96(中位数0.89,IQR 0.82 - 0.92),新生儿中AUC范围为0.58至0.91(中位数0.79,IQR 0.75 - 0.82)。

结论

预测模型在排除儿童BM方面显示出良好至优异的测试特征,并且在疑似CNS感染的儿科患者的诊断检查中可能有所帮助,但不能替代全面的病史、体格检查和辅助检查。

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