Freedom from infection: enhancing decision-making for malaria elimination.

IF 7.1 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH BMJ Global Health Pub Date : 2024-12-07 DOI:10.1136/bmjgh-2023-014412
Luca Nelli, Henry Surendra, Isabel Byrne, Riris Andono Ahmad, Risalia Reni Arisanti, Dyah A S Lesmanawati, Iqbal R F Elyazar, Elin Dumont, Lindsey Wu, Chris Drakeley, Jason Matthiopoulos, Gillian Stresman
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Abstract

Assessing elimination of malaria locally requires a surveillance system with high sensitivity and specificity to detect its presence without ambiguity. Currently, the WHO standard criteria of observing the absence of locally acquired cases for 3 consecutive years, combined with a health systems assessment, are used to justify claims of malaria elimination. However, relying on a qualitative framework to support the application of this guideline can lead to early, over-optimistic relaxation of control measures with the potential for resurgence. Overcoming this challenge requires innovative approaches to model the coupled processes of malaria transmission and its clinical observation.We propose a novel statistical framework based on a state-space model to probabilistically demonstrate the absence of malaria, using routinely collected health system data (which is extensive but inherently imperfect). By simultaneously modelling the expected malaria burden within the population and the probability of detection, we provide a robust estimate of the surveillance system's sensitivity and the corresponding probability of local elimination (probability of freedom from infection).Our study reveals a critical limitation of the traditional criterion for declaring malaria elimination, highlighting its inherent bias and potential for misinterpreting ongoing transmission. Such oversight not only misrepresents ongoing transmission but also places communities at risk for larger outbreaks. However, we demonstrate that our integrated approach to data comprehensively addresses this issue, effectively detecting ongoing transmission patterns, even when local reports might suggest otherwise.Our integrated framework has far-reaching implications for malaria control but also for infectious disease control in general. Our approach addresses the limitations of traditional criteria for declaring freedom from disease and opens the path to true optimisation of the allocation of limited resources. Our findings emphasise the urgent need to reassess existing methods to accurately confirm malaria elimination, and the importance of using comprehensive modelling techniques to continually monitor and maintain the effectiveness of current surveillance systems, enabling decisions grounded in quantitative evidence.

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免于感染:加强消除疟疾的决策。
评估当地消除疟疾的情况需要一个具有高灵敏度和特异性的监测系统,以便毫不含糊地发现疟疾的存在。目前,世卫组织观察连续3年没有本地获得性病例的标准标准,结合卫生系统评估,被用来证明消除疟疾的主张是合理的。然而,依靠一个定性框架来支持这一指导方针的应用,可能导致过早地、过于乐观地放松控制措施,从而有可能卷土重来。克服这一挑战需要采用创新方法,对疟疾传播及其临床观察的耦合过程进行建模。我们提出了一个基于状态空间模型的新统计框架,利用常规收集的卫生系统数据(广泛但本质上不完善),从概率上证明疟疾的存在。通过同时对人群中的预期疟疾负担和发现概率进行建模,我们对监测系统的敏感性和相应的局部消除概率(免于感染的概率)提供了可靠的估计。我们的研究揭示了宣布消灭疟疾的传统标准的一个关键局限性,突出了其固有的偏见和误解正在进行的传播的可能性。这种监督不仅歪曲了正在发生的传播,而且使社区面临更大疫情的风险。然而,我们证明,我们的综合数据方法全面解决了这个问题,有效地检测正在进行的传播模式,即使当地报告可能另有建议。我们的综合框架不仅对疟疾控制有深远影响,而且对一般的传染病控制也有深远影响。我们的方法解决了宣布摆脱疾病的传统标准的局限性,并为真正优化有限资源的分配开辟了道路。我们的发现强调了重新评估现有方法以准确确认疟疾消除的迫切需要,以及使用综合建模技术持续监测和维持当前监测系统有效性的重要性,从而使决策能够基于定量证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
BMJ Global Health
BMJ Global Health Medicine-Health Policy
CiteScore
11.40
自引率
4.90%
发文量
429
审稿时长
18 weeks
期刊介绍: BMJ Global Health is an online Open Access journal from BMJ that focuses on publishing high-quality peer-reviewed content pertinent to individuals engaged in global health, including policy makers, funders, researchers, clinicians, and frontline healthcare workers. The journal encompasses all facets of global health, with a special emphasis on submissions addressing underfunded areas such as non-communicable diseases (NCDs). It welcomes research across all study phases and designs, from study protocols to phase I trials to meta-analyses, including small or specialized studies. The journal also encourages opinionated discussions on controversial topics.
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