Karami Manoochehr, Ghalandari Maryam, Poorolajal Jalal, Faradmal Javad
Social Determinants of Health Research Center, Hamadan University of Medical Sciences, Hamadan, Iran.
Dept. of Epidemiology, School of Public Health, Hamadan University of Medical Sciences, Hamadan, Iran.
Iran J Public Health. 2017 Oct;46(10):1366-1373.
There is no published study evaluating the performance of cumulative sum (CUSUM) algorithm on meningitis data with limited baseline period. This study aimed to evaluate the CUSUM performance in timely detection of 707 semi-synthetic outbreak days.
Simulated outbreaks were generated using syndromic data on fever and neurological symptoms from Mar 2010 to Mar 2013 in Hamadan Province, the west of Iran. The performance of CUSUM algorithms, numbered from 1 to 11, in timely detection of outbreaks was measured using sensitivity, specificity, false alarm rate, likelihood ratios and area under the receiver operating characteristics (ROC) curve.
The highest amount of sensitivity was related to algorithm11 (CUSUM) and it was 52% (95% CI: 49%, 56%). Minimum amount of false alarm rate was related to CUSUM algorithm equal to 8% (95% CI: 5, 10) and the best amount of positive likelihood ratio was related to CUSUM equal to 4.97. CUSUM has the best performance with AUC curve equal to 73% (95 CI%: 70%, 76%), as well.
The used approach in this study can be the basis for applying CUSUM algorithm in conditions that there is no access to recorded baseline data about under surveillance diseases or health events.
尚无已发表的研究评估累积和(CUSUM)算法在基线期有限的脑膜炎数据上的性能。本研究旨在评估CUSUM算法在及时检测707个半合成暴发日方面的性能。
利用伊朗西部哈马丹省2010年3月至2013年3月期间发热和神经系统症状的症状数据生成模拟暴发。使用灵敏度、特异度、误报率、似然比和受试者操作特征(ROC)曲线下面积来衡量编号为1至11的CUSUM算法在及时检测暴发方面的性能。
最高灵敏度与算法11(CUSUM)相关,为52%(95%置信区间:49%,56%)。最低误报率与CUSUM算法相关,为8%(95%置信区间:5,10),最佳阳性似然比与CUSUM相关,为4.97。CUSUM的性能最佳,AUC曲线也等于73%(95%置信区间:70%,76%)。
本研究中使用的方法可为在无法获取有关受监测疾病或健康事件的记录基线数据的情况下应用CUSUM算法提供依据。