Hulland Erin N, Charpignon Marie-Laure, El Hayek Ghinwa Y, Zhao Lihong, Desai Angel N, Majumder Maimuna S
Computational Health Informatics Program, Boston Children's Hospital & Harvard Medical School, Boston, MA, United States.
Comp Epi Dispersed Volunteer Research Network, Boston, MA, United States.
medRxiv. 2024 Aug 16:2024.06.12.24308792. doi: 10.1101/2024.06.12.24308792.
In 2023, cholera affected approximately 1 million people and caused more than 5000 deaths globally, predominantly in low-income and conflict settings. In recent years, the number of new cholera outbreaks has grown rapidly. Further, ongoing cholera outbreaks have been exacerbated by conflict, climate change, and poor infrastructure, resulting in prolonged crises. As a result, the demand for treatment and intervention is quickly outpacing existing resource availability. Prior to improved water and sanitation systems, cholera, a disease primarily transmitted via contaminated water sources, also routinely ravaged high-income countries. Crumbling infrastructure and climate change are now putting new locations at risk - even in high-income countries. Thus, understanding the transmission and prevention of cholera is critical. Combating cholera requires multiple interventions, the two most common being behavioral education and water treatment. Two-dose oral cholera vaccination (OCV) is often used as a complement to these interventions. Due to limited supply, countries have recently switched to single-dose vaccines (OCV1). One challenge lies in understanding where to allocate OCV1 in a timely manner, especially in settings lacking well-resourced public health surveillance systems. As cholera occurs and propagates in such locations, timely, accurate, and openly accessible outbreak data are typically inaccessible for disease modeling and subsequent decision-making. In this study, we demonstrated the value of open-access data to rapidly estimate cholera transmission and vaccine effectiveness. Specifically, we obtained non-machine readable (NMR) epidemic curves for recent cholera outbreaks in two countries, Haiti and Cameroon, from figures published in situation and disease outbreak news reports. We used computational digitization techniques to derive weekly counts of cholera cases, resulting in nominal differences when compared against the reported cumulative case counts (i.e., a relative error rate of 5.67% in Haiti and 0.54% in Cameroon). Given these digitized time series, we leveraged EpiEstim-an open-source modeling platform-to derive rapid estimates of time-varying disease transmission via the effective reproduction number ( ). To compare OCV1 effectiveness in the two considered countries, we additionally used VaxEstim, a recent extension of EpiEstim that facilitates the estimation of vaccine effectiveness via the relation among three inputs: the basic reproduction number ( ), , and vaccine coverage. Here, with Haiti and Cameroon as case studies, we demonstrated the first implementation of VaxEstim in low-resource settings. Importantly, we are the first to use VaxEstim with digitized data rather than traditional epidemic surveillance data. In the initial phase of the outbreak, weekly rolling average estimates of were elevated in both countries: 2.60 in Haiti [95% credible interval: 2.42-2.79] and 1.90 in Cameroon [1.14-2.95]. These values are largely consistent with previous estimates of in Haiti, where average values have ranged from 1.06 to 3.72, and in Cameroon, where average values have ranged from 1.10 to 3.50. In both Haiti and Cameroon, this initial period of high transmission preceded a longer period during which oscillated around the critical threshold of 1. Our results derived from VaxEstim suggest that Haiti had higher OCV1 effectiveness than Cameroon (75.32% effective [54.00-86.39%] vs. 54.88% [18.94-84.90%]). These estimates of OCV1 effectiveness are generally aligned with those derived from field studies conducted in other countries. Thus, our case study reinforces the validity of VaxEstim as an alternative to costly, time-consuming field studies of OCV1 effectiveness. Indeed, prior work in South Sudan, Bangladesh, and the Democratic Republic of the Congo reported OCV1 effectiveness ranging from approximately 40% to 80%. This work underscores the value of combining NMR sources of outbreak case data with computational techniques and the utility of VaxEstim for rapid, inexpensive estimation of vaccine effectiveness in data-poor outbreak settings.
2023年,霍乱影响了全球约100万人,导致5000多人死亡,主要集中在低收入和冲突地区。近年来,新的霍乱疫情数量迅速增长。此外,冲突、气候变化和基础设施薄弱加剧了持续的霍乱疫情,导致危机持续时间延长。因此,对治疗和干预的需求迅速超过了现有资源的供应。在改善水和卫生系统之前,霍乱这种主要通过受污染水源传播的疾病也经常肆虐高收入国家。如今,基础设施破败和气候变化正使新的地区面临风险——即使在高收入国家也是如此。因此,了解霍乱的传播和预防至关重要。抗击霍乱需要多种干预措施,最常见的两种是行为教育和水处理。两剂口服霍乱疫苗(OCV)通常用作这些干预措施的补充。由于供应有限,各国最近已改用单剂疫苗(OCV1)。一个挑战在于了解如何及时分配OCV1,尤其是在缺乏资源充足的公共卫生监测系统的地区。由于霍乱在这些地区发生和传播,通常无法获得及时、准确且公开可用的疫情数据用于疾病建模和后续决策。在本研究中,我们证明了开放获取数据在快速估计霍乱传播和疫苗效力方面的价值。具体而言,我们从情况和疾病疫情新闻报道中公布的图表中获取了海地和喀麦隆这两个国家近期霍乱疫情的非机器可读(NMR)疫情曲线。我们使用计算数字化技术得出霍乱病例的每周计数,与报告的累计病例数相比存在名义差异(即海地的相对误差率为5.67%,喀麦隆为0.54%)。鉴于这些数字化时间序列,我们利用EpiEstim——一个开源建模平台——通过有效繁殖数( )得出随时间变化的疾病传播的快速估计值。为了比较在这两个国家中OCV1的效力,我们还使用了VaxEstim,它是EpiEstim的最新扩展,通过基本繁殖数( )、 和疫苗覆盖率这三个输入之间的关系来促进疫苗效力的估计。在此,以海地和喀麦隆为案例研究,我们展示了VaxEstim在资源匮乏地区的首次应用。重要的是,我们是第一个将VaxEstim与数字化数据而非传统疫情监测数据一起使用的。在疫情爆发的初始阶段,两个国家的每周滚动平均估计值 都有所升高:海地为2.60 [95%可信区间:2.42 - 2.79],喀麦隆为1.90 [1.14 - 2.95]。这些值与海地先前的 估计值基本一致,海地的平均值范围为1.06至3.72,喀麦隆的平均值范围为1.10至3.50。在海地和喀麦隆,这种高传播的初始阶段之后是一个较长的时期,在此期间 在临界阈值1附近波动。我们从VaxEstim得出的结果表明,海地的OCV1效力高于喀麦隆(有效率为75.32% [54.00 - 86.39%] 对54.88% [18.94 - 84.90%])。这些OCV1效力的估计值总体上与在其他国家进行的实地研究得出的结果一致。因此,我们的案例研究强化了VaxEstim作为对OCV1效力进行昂贵且耗时的实地研究的替代方法的有效性。事实上,先前在南苏丹、孟加拉国和刚果民主共和国的工作报告OCV1效力范围约为40%至80%。这项工作强调了将疫情病例数据的NMR来源与计算技术相结合的价值,以及VaxEstim在数据匮乏的疫情环境中快速、廉价估计疫苗效力的实用性。