Inferring the regional distribution of Visceral Leishmaniasis incidence from data at different spatial scales.

IF 5.4 Q1 MEDICINE, RESEARCH & EXPERIMENTAL Communications medicine Pub Date : 2024-11-20 DOI:10.1038/s43856-024-00659-9
Emily S Nightingale, Swaminathan Subramanian, Ashley R Schwarzer, Lloyd A C Chapman, Purushothaman Jambulingam, Mary M Cameron, Oliver J Brady, Graham F Medley, Tim C D Lucas
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Abstract

Background: As cases of visceral leishmaniasis (VL) in India dwindle, there is motivation to monitor elimination progress on a finer geographic scale than sub-district (block). Low-incidence projections across geographically- and demographically- heterogeneous communities are difficult to act upon, and equitable elimination cannot be achieved if local pockets of incidence are overlooked. However, maintaining consistent surveillance at this scale is resource-intensive and not sustainable in the long-term.

Methods: We analysed VL incidence across 45,000 villages in Bihar state, exploring spatial autocorrelation and associations with local environmental conditions in order to assess the feasibility of inference at this scale. We evaluated a statistical disaggregation approach to infer finer spatial variation from routinely-collected, block-level data, validating against observed village-level incidence.

Results: This disaggregation approach does not estimate village-level incidence more accurately than a baseline assumption of block-homogeneity. Spatial auto-correlation is evident on a block-level but weak between neighbouring villages within the same block, possibly suggesting that longer-range transmission (e.g., due to population movement) may be an important contributor to village-level heterogeneity.

Conclusions: Increasing the range of reactive interventions to neighbouring villages may not improve their efficacy in suppressing transmission, but maintaining surveillance and diagnostic capacity in areas distant from recently observed cases - particularly along routes of population movement from endemic regions - could reduce reintroduction risk in currently unaffected villages. The reactive, spatially-targeted approach to VL surveillance limits interpretability of data observed at the village level, and hence the feasibility of routinely drawing and validating inference at this scale.

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从不同空间尺度的数据推断内脏利什曼病发病率的区域分布。
背景:随着印度内脏利什曼病(VL)病例的减少,人们有动力在比分区(街区)更细的地理范围内监测消灭利什曼病的进展情况。对不同地理位置和人口结构的社区的低发病率预测很难采取行动,如果忽略了当地的小块发病率,就无法实现公平的消除。然而,保持这种规模的持续监测需要大量资源,而且不是长期可持续的:我们分析了比哈尔邦 45,000 个村庄的 VL 发病率,探讨了空间自相关性以及与当地环境条件的关联,以评估在此规模下进行推断的可行性。我们评估了一种统计分类方法,以便从常规收集的块级数据中推断出更精细的空间变化,并与观察到的村级发病率进行验证:结果:这种分类方法对村级发病率的估计并不比区块同质性的基线假设更准确。在区块层面上,空间自相关性很明显,但在同一区块内的相邻村庄之间,空间自相关性很弱,这可能表明长距离传播(如人口流动造成的传播)可能是造成村级异质性的重要原因:结论:将反应性干预措施的范围扩大到邻近村庄可能不会提高其抑制传播的效果,但在远离最近观察到病例的地区(特别是从流行地区迁出的人口流动路线沿线)保持监测和诊断能力,可降低目前未受影响村庄的再传播风险。对 VL 监测采取被动的、以空间为目标的方法,限制了在村一级观察到的数据的可解释性,从而限制了在这一范围内进行常规推断和验证的可行性。
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