Tufts University - Friedman School of Nutrition Science and Policy, Boston, Massachusetts, United States of America.
Swiss Tropical and Public Health Institute, Allschwil, Switzerland.
PLoS Negl Trop Dis. 2023 Jun 16;17(6):e0011424. doi: 10.1371/journal.pntd.0011424. eCollection 2023 Jun.
Schistosomiasis and soil-transmitted helminth infections are among the neglected tropical diseases (NTDs) affecting primarily marginalized communities in low- and middle-income countries. Surveillance data for NTDs are typically sparse, and hence, geospatial predictive modeling based on remotely sensed (RS) environmental data is widely used to characterize disease transmission and treatment needs. However, as large-scale preventive chemotherapy has become a widespread practice, resulting in reduced prevalence and intensity of infection, the validity and relevance of these models should be re-assessed.
We employed two nationally representative school-based prevalence surveys of Schistosoma haematobium and hookworm infections from Ghana conducted before (2008) and after (2015) the introduction of large-scale preventive chemotherapy. We derived environmental variables from fine-resolution RS data (Landsat 8) and examined a variable distance radius (1-5 km) for aggregating these variables around point-prevalence locations in a non-parametric random forest modeling approach. We used partial dependence and individual conditional expectation plots to improve interpretability of results.
The average school-level S. haematobium prevalence decreased from 23.8% to 3.6% and that of hookworm from 8.6% to 3.1% between 2008 and 2015. However, hotspots of high-prevalence locations persisted for both infections. The models with environmental data extracted from a buffer radius of 2-3 km around the school location where prevalence was measured had the best performance. Model performance (according to the R2 value) was already low and declined further from approximately 0.4 in 2008 to 0.1 in 2015 for S. haematobium and from approximately 0.3 to 0.2 for hookworm. According to the 2008 models, land surface temperature (LST), modified normalized difference water index, elevation, slope, and streams variables were associated with S. haematobium prevalence. LST, slope, and improved water coverage were associated with hookworm prevalence. Associations with the environment in 2015 could not be evaluated due to low model performance.
CONCLUSIONS/SIGNIFICANCE: Our study showed that in the era of preventive chemotherapy, associations between S. haematobium and hookworm infections and the environment weakened, and thus predictive power of environmental models declined. In light of these observations, it is timely to develop new cost-effective passive surveillance methods for NTDs as an alternative to costly surveys, and to focus on persisting hotspots of infection with additional interventions to reduce reinfection. We further question the broad application of RS-based modeling for environmental diseases for which large-scale pharmaceutical interventions are in place.
血吸虫病和土壤传播性蠕虫感染是被忽视的热带病(NTDs)之一,主要影响中低收入国家的边缘化社区。NTD 监测数据通常很稀疏,因此,基于遥感(RS)环境数据的地理空间预测建模被广泛用于描述疾病传播和治疗需求。然而,随着大规模预防性化疗的广泛应用,导致感染的流行率和强度降低,这些模型的有效性和相关性应重新评估。
我们利用加纳在引入大规模预防性化疗之前(2008 年)和之后(2015 年)进行的两项全国代表性的基于学校的血吸虫病和钩虫感染患病率调查。我们从高分辨率 RS 数据(Landsat 8)中得出环境变量,并在非参数随机森林建模方法中,以 1-5 公里的可变距离半径(radius)聚集这些变量。我们使用部分依赖和个体条件期望图来提高结果的可解释性。
2008 年至 2015 年间,学校层面的血吸虫病平均流行率从 23.8%下降到 3.6%,钩虫病从 8.6%下降到 3.1%。然而,两种感染的高流行率地点的热点仍然存在。在学校位置周围提取缓冲区半径为 2-3 公里的环境数据的模型具有最佳性能。根据 R2 值,模型性能(performance)已经很低,并且从 2008 年的约 0.4 进一步下降到 2015 年的 0.1,用于血吸虫病,从 2008 年的约 0.3 下降到 2015 年的约 0.2,用于钩虫病。根据 2008 年的模型,地表温度(LST)、改进的归一化差异水指数、海拔、坡度和溪流变量与血吸虫病的流行率相关。LST、坡度和改善的水覆盖与钩虫病的流行率相关。由于模型性能较低,无法评估 2015 年与环境的关联。
结论/意义:我们的研究表明,在预防性化疗时代,血吸虫病和钩虫感染与环境之间的关联减弱,因此环境模型的预测能力下降。鉴于这些观察结果,及时开发新的具有成本效益的 NTD 被动监测方法作为昂贵调查的替代方法,并关注持续存在的感染热点,采取额外干预措施减少再次感染,这是非常重要的。我们进一步质疑广泛应用基于 RS 的建模来研究环境疾病的做法,因为这些疾病已经有了大规模的药物干预。