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用于急性脑炎综合征管理的恙虫病性脑炎评估工具的验证

Validation of the Scrub Typhus Encephalitis Assessment Tool for the Management of Acute Encephalitis Syndrome.

作者信息

Rath Rama Shankar, Abdulkader Rizwan S, Srivastava Neha, Deval Hirawati, Gupta Urmila, Sharma Bhoopendra, Mittal Mahim, Singh Vijay, Kumar Manish, Kharya Pradip, Gupta Nivedita, Kant Rajni, Murhekar Manoj, Mittal Mahima

机构信息

Department of CFM, AIIMS, Gorakhpur, Uttar Pradesh, India.

Division of Infectious Disease Epidemiology, ICMR-National Institute of Epidemiology, Chennai, Tamil Nadu, India.

出版信息

J Glob Infect Dis. 2024 Aug 7;16(3):92-97. doi: 10.4103/jgid.jgid_194_23. eCollection 2024 Jul-Sep.

Abstract

INTRODUCTION

Acute encephalitis syndrome (AES) is one of the important causes of mortality among children in India. Active management of the cases, followed by addressing the cause of AES, is the key strategy for preventing mortality. Lack of laboratory facility and difficulty of sampling blood and cerebrospinal fluid (CSF) for assessing causes is one of the important barriers to early initiation of treatment. The main objective of the study is to validate the Scrub Typhus Encephalitis Assessment Tool (SEAT) for the management of AES.

METHODS

The study is a continuation of a study conducted in a tertiary care hospital in Eastern Uttar Pradesh. A machine learning (LightGBM) model was built to predict the probability of scrub typhus diagnosis among patients with acute encephalitis. Three models were built: one with sociodemographic characters, the second with Model 1 variables and blood parameters, and the third with Model 2 variables and CSF parameters.

RESULTS

The sensitivity of diagnosing the scrub typhus case was 71%, 77.5%, and 83% in Model 1, Model 2, and Model 3, respectively, and specificity was 61.5%, 75.5%, and 76.3%, respectively, in the models. In Model 1 fever duration, in Models 2 and 3, neutrophil/lymphocyte ratio was the most important predictor for differentiating the scrub and nonscrub cases.

CONCLUSION

With the available sensitivity and specificity of the tool, the SEAT can be a valuable tool for the prediction of scrub typhus as a cause of AES cases in remote areas.

摘要

引言

急性脑炎综合征(AES)是印度儿童死亡的重要原因之一。对病例进行积极管理,随后找出AES的病因,是预防死亡的关键策略。缺乏实验室设施以及采集血液和脑脊液(CSF)以评估病因存在困难,是早期开始治疗的重要障碍之一。本研究的主要目的是验证用于AES管理的丛林斑疹伤寒脑炎评估工具(SEAT)。

方法

该研究是在印度北方邦东部一家三级护理医院进行的一项研究的延续。构建了一个机器学习(LightGBM)模型来预测急性脑炎患者中丛林斑疹伤寒诊断的概率。构建了三个模型:一个包含社会人口学特征,第二个包含模型1变量和血液参数,第三个包含模型2变量和脑脊液参数。

结果

在模型1、模型2和模型3中,诊断丛林斑疹伤寒病例的敏感性分别为71%、77.5%和83%,特异性分别为61.5%、75.5%和76.3%。在模型1中发热持续时间是重要预测因素,在模型2和模型3中,中性粒细胞/淋巴细胞比率是区分丛林斑疹伤寒和非丛林斑疹伤寒病例的最重要预测因素。

结论

鉴于该工具具有一定的敏感性和特异性,SEAT可成为预测偏远地区AES病例由丛林斑疹伤寒引起的有价值工具。

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