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乌干达疟疾高发地区的检测阳性率、实验室确诊疟疾病例总数与疟疾发病率之间的关系:一项生态学分析。

Relationships between test positivity rate, total laboratory confirmed cases of malaria, and malaria incidence in high burden settings of Uganda: an ecological analysis.

机构信息

Clinical Epidemiology Unit, School of Medicine, Makerere University College of Health Sciences, Kampala, Uganda.

Department of Epidemiology and Biostatistics, University of California, San Francisco, USA.

出版信息

Malar J. 2021 Jan 13;20(1):42. doi: 10.1186/s12936-021-03584-7.

Abstract

BACKGROUND

Malaria surveillance is critical for monitoring changes in malaria morbidity over time. National Malaria Control Programmes often rely on surrogate measures of malaria incidence, including the test positivity rate (TPR) and total laboratory confirmed cases of malaria (TCM), to monitor trends in malaria morbidity. However, there are limited data on the accuracy of TPR and TCM for predicting temporal changes in malaria incidence, especially in high burden settings.

METHODS

This study leveraged data from 5 malaria reference centres (MRCs) located in high burden settings over a 15-month period from November 2018 through January 2020 as part of an enhanced health facility-based surveillance system established in Uganda. Individual level data were collected from all outpatients including demographics, laboratory test results, and village of residence. Estimates of malaria incidence were derived from catchment areas around the MRCs. Temporal relationships between monthly aggregate measures of TPR and TCM relative to estimates of malaria incidence were examined using linear and exponential regression models.

RESULTS

A total of 149,739 outpatient visits to the 5 MRCs were recorded. Overall, malaria was suspected in 73.4% of visits, 99.1% of patients with suspected malaria received a diagnostic test, and 69.7% of those tested for malaria were positive. Temporal correlations between monthly measures of TPR and malaria incidence using linear and exponential regression models were relatively poor, with small changes in TPR frequently associated with large changes in malaria incidence. Linear regression models of temporal changes in TCM provided the most parsimonious and accurate predictor of changes in malaria incidence, with adjusted R values ranging from 0.81 to 0.98 across the 5 MRCs. However, the slope of the regression lines indicating the change in malaria incidence per unit change in TCM varied from 0.57 to 2.13 across the 5 MRCs, and when combining data across all 5 sites, the R value reduced to 0.38.

CONCLUSIONS

In high malaria burden areas of Uganda, site-specific temporal changes in TCM had a strong linear relationship with malaria incidence and were a more useful metric than TPR. However, caution should be taken when comparing changes in TCM across sites.

摘要

背景

疟疾监测对于监测疟疾发病率随时间的变化至关重要。国家疟疾控制规划通常依赖疟疾发病率的替代指标,包括检测阳性率(TPR)和疟疾实验室确诊总病例数(TCM),以监测疟疾发病率的趋势。然而,关于 TPR 和 TCM 预测疟疾发病率随时间变化的准确性的数据有限,尤其是在高负担地区。

方法

本研究利用了 2018 年 11 月至 2020 年 1 月期间设在高负担地区的 5 个疟疾参考中心(MRC)的数据,这些数据是在乌干达建立的强化卫生机构为基础的监测系统的一部分。从所有门诊患者收集个人层面的数据,包括人口统计学、实验室检测结果和居住的村庄。疟疾发病率的估计值是从 MRC 周围的集水区得出的。使用线性和指数回归模型检查每月 TPR 和 TCM 汇总指标与疟疾发病率估计值之间的时间关系。

结果

共记录了 5 个 MRC 的 149739 次门诊就诊。总体而言,73.4%的就诊患者疑似患有疟疾,99.1%的疑似疟疾患者接受了诊断检测,69.7%的接受疟疾检测的患者呈阳性。使用线性和指数回归模型,TPR 和疟疾发病率的每月测量值之间的时间相关性相对较差,TPR 的微小变化通常与疟疾发病率的大幅变化相关。线性回归模型对 TCM 时间变化的预测最简洁、最准确,5 个 MRC 的调整后 R 值范围从 0.81 到 0.98。然而,回归线斜率表示 TCM 每单位变化与疟疾发病率变化之间的关系,在 5 个 MRC 之间从 0.57 到 2.13 不等,当将所有 5 个地点的数据合并时,R 值降至 0.38。

结论

在乌干达疟疾高负担地区,TCM 的特定地点时间变化与疟疾发病率呈强线性关系,是比 TPR 更有用的指标。然而,在比较不同地点的 TCM 变化时应谨慎。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/873f/7805073/3c3802c1b075/12936_2021_3584_Fig1_HTML.jpg

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