泰国嗜酸性脑膜炎的全国监测

IF 2 Q3 INFECTIOUS DISEASES Parasite Epidemiology and Control Pub Date : 2022-11-01 DOI:10.1016/j.parepi.2022.e00272
Noppadol Aekphachaisawat , Kittisak Sawanyawisuth , Sittichai Khamsai , Watchara Boonsawat , Somsak Tiamkao , Panita Limpawattana , Wanchai Maleewong , Chetta Ngamjarus
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引用次数: 0

摘要

嗜酸性粒细胞性脑膜炎(EOM)是一种新兴的世界性传染病。最常见的原因是广东管圆线虫感染,监测和预测是监测和控制这种感染的一种可能的方法。关于EOM的国家监测和预测模型的数据有限。本研究旨在利用国家数据库开发一种具有EOM预测模型的在线监测系统。方法回顾性检索泰国各省报告的外伤性脑炎病例,按月和年进行量化。数据从公共卫生部数据库检索。我们开发了一个网站应用程序,使用箱形图来探索泰国包括地区和省份的EOM病例。该网站还提供了自回归综合移动平均(ARIMA)模型和季节性移动平均(SARIMA)模型,用于预测国家、地区和省一级的疾病病例。采用最小赤池信息准则(AIC)来考虑合适的模型。采用合适的SARIMA模型预测EOM病例数。结果2003 - 2021年,全国共诊断登记EOM病例3330例,2003年为高峰(中位数为22例)。我们确定SARIMA(1,1,2)(2,0,0)[12]是最合适的模型,因为它产生的拟合值最接近实际数据。在http://202.28.75.8/sample-apps/NationalEOM/.ConclusionsWe上发布了一个预测监测网站,确定了网络应用程序可以用于监测和探索泰国急症患者的趋势。预测值与实际每月EOM病例数相符,表明预测模型拟合良好。
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A national surveillance of eosinophilic meningitis in Thailand

Introduction

Eosinophilic meningitis (EOM) is an emerging infectious disease worldwide. The most common cause of EOM is infection with Angiostrongylus cantonensis One possible method of monitoring and control of this infection is surveillance and prediction. There are limited data on national surveillance and predictive models on EOM. This study aimed to develop an online surveillance with a predictive model for EOM by using the national database.

Methods

We retrospectively retrieved reported cases of EOM from all provinces in Thailand and quantified them by month and year. Data were retrieved from Ministry of Public Health database. We developed a website application to explore the EOM cases in Thailand including regions and provinces using box plots. The website also provided the Autoregressive Integrated Moving Average (ARIMA) models and Seasonal ARIMA (SARIMA) models for predicting the disease cases from nation, region, and province levels. The suitable models were considered by minimum Akaike Information Criterion (AIC). The appropriate SARIMA model was used to predict the number of EOM cases.

Results

From 2003 to 2021, 3330 EOM cases were diagnosed and registered in the national database, with a peak in 2003 (median of 22 cases). We determined SARIMA(1,1,2)(2,0,0)[12] to be the most appropriate model, as it yielded the fitted values that were closest to the actual data. A predictive surveillance website was published on http://202.28.75.8/sample-apps/NationalEOM/.

Conclusions

We determined that web application can be used for monitoring and exploring the trend of EOM patients in Thailand. The predictive values matched the actual monthly numbers of EOM cases indicating a good fit of the predictive model.

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来源期刊
Parasite Epidemiology and Control
Parasite Epidemiology and Control Medicine-Infectious Diseases
CiteScore
5.70
自引率
3.10%
发文量
44
审稿时长
17 weeks
期刊介绍: Parasite Epidemiology and Control is an Open Access journal. There is an increasing amount of research in the parasitology area that analyses the patterns, causes, and effects of health and disease conditions in defined populations. This epidemiology of parasite infectious diseases is predominantly studied in human populations but also spans other major hosts of parasitic infections and as such this journal will have a broad remit. We will focus on the major areas of epidemiological study including disease etiology, disease surveillance, drug resistance and geographical spread and screening, biomonitoring, and comparisons of treatment effects in clinical trials for both human and other animals. We will also look at the epidemiology and control of vector insects. The journal will also cover the use of geographic information systems (Epi-GIS) for epidemiological surveillance which is a rapidly growing area of research in infectious diseases. Molecular epidemiological approaches are also particularly encouraged.
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