Disease Elimination Program, Burnet Institute, Melbourne, VIC 3004, Australia.
Centre for Epidemiology and Biostatistics, Melbourne School of Population and Global Health, The University of Melbourne, Melbourne, VIC 3010, Australia.
Proc Natl Acad Sci U S A. 2024 Jun 11;121(24):e2320898121. doi: 10.1073/pnas.2320898121. Epub 2024 Jun 4.
The World Health Organization identifies a strong surveillance system for malaria and its mosquito vector as an essential pillar of the malaria elimination agenda. salivary antibodies are emerging biomarkers of exposure to mosquito bites that potentially overcome sensitivity and logistical constraints of traditional entomological surveys. Using samples collected by a village health volunteer network in 104 villages in Southeast Myanmar during routine surveillance, the present study employs a Bayesian geostatistical modeling framework, incorporating climatic and environmental variables together with salivary antigen serology, to generate spatially continuous predictive maps of biting exposure. Our maps quantify fine-scale spatial and temporal heterogeneity in salivary antibody seroprevalence (ranging from 9 to 99%) that serves as a proxy of exposure to bites and advances current static maps of only occurrence. We also developed an innovative framework to perform surveillance of malaria transmission. By incorporating antibodies against the vector and the transmissible form of malaria (sporozoite) in a joint Bayesian geostatistical model, we predict several foci of ongoing transmission. In our study, we demonstrate that antibodies specific for salivary and sporozoite antigens are a logistically feasible metric with which to quantify and characterize heterogeneity in exposure to vector bites and malaria transmission. These approaches could readily be scaled up into existing village health volunteer surveillance networks to identify foci of residual malaria transmission, which could be targeted with supplementary interventions to accelerate progress toward elimination.
世界卫生组织将疟疾及其蚊媒的强大监测系统确定为消除疟疾议程的重要支柱。唾液抗体作为蚊虫叮咬暴露的新兴生物标志物,具有克服传统昆虫学调查的敏感性和后勤限制的潜力。本研究利用在缅甸东南部 104 个村庄的常规监测中由乡村卫生志愿者网络收集的样本,采用贝叶斯地质统计学建模框架,将气候和环境变量与唾液抗原血清学结合起来,生成蚊虫叮咬暴露的空间连续预测图。我们的地图量化了唾液抗体血清阳性率(范围为 9%至 99%)的精细时空异质性,该血清阳性率可作为暴露于蚊虫叮咬的替代指标,并推进了仅针对发生情况的当前静态地图。我们还开发了一种创新的框架来进行疟疾传播监测。通过将针对蚊子和可传播形式疟疾(疟原虫)的抗体纳入联合贝叶斯地质统计学模型中,我们预测了几个正在发生传播的焦点。在我们的研究中,我们证明了针对唾液和疟原虫抗原的抗体是一种可行的逻辑指标,可以量化和描述暴露于蚊子叮咬和疟疾传播的异质性。这些方法可以很容易地扩展到现有的乡村卫生志愿者监测网络中,以确定剩余疟疾传播的焦点,然后可以针对这些焦点采取补充干预措施,以加速消除疟疾的进展。