Identifying bellwether sewershed sites for sustainable disease surveillance in Bengaluru, India: a longitudinal study

IF 5 Q1 HEALTH CARE SCIENCES & SERVICES
Rebecca Fern Daniel , Subash K. Kannan , Namrta Daroch , Sutharsan Ganesan , Farhina Mozaffer , Vishwanath Srikantaiah , Lingadahalli Subrahmanya Shashidhara , Rakesh Mishra , Farah Ishtiaq
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引用次数: 0

Abstract

Background

Throughout the COVID-19 pandemic, wastewater surveillance emerged as an important tool as an important tool by providing data that are more representative of the population than case reporting, which is often biased towards individuals with health-seeking behaviour or access to healthcare. With changing phases of the pandemic, decreased testing, and varying viral shedding rates, it is crucial to have a robust, sustainable, and flexible wastewater surveillance system that can serve as an independent signal of disease outbreaks. We aimed to identify ‘bellwether’ sewershed sites for sustainable disease surveillance in Bengaluru, India.

Methods

We conducted this longitudinal study from December 2021 to January 2024 at 26 centralised sewershed sites in Bengaluru city (∼11 million inhabitants). We quantified weekly SARS-CoV-2 RNA concentrations to track infection dynamics and identify ‘bellwether’ sewershed sites. This was achieved by integrating established metrics for wastewater analysis, calculating sample-to-sample percentage rate of change, and applying algorithms to differentiate signal from noise, thereby validating factors contributing to the precision and reliability of outbreak predictions.

Findings

Using 2873 wastewater samples, we applied a modified algorithm (COVID-SURGE algorithm) to identify ‘bellwether’ sewershed sites using longitudinal wastewater data on SARS-CoV-2 from 26 sewershed sites in Bengaluru. We utilised an Excel-based calculator (COVID-SURGE calculator) for user-entered wastewater data that differentiates signal from noise (underlying variability) based on the algorithm, with adjustments made to the input format of viral data and a specified limit of detection (LOD) value from the reverse transcriptase-quantitative PCR kit. We identified 11 ‘bellwether’ sites: four with large catchment sizes (KC Valley 1, KC Valley 2, Rajacanal, Doddabelee); four with medium sizes (Agaram, Nagasandra, KR Puram, Yelahanka); and three with small sizes (Chikkabegur, Chikkabanavara, Lalbagh). These were the best performers and can serve as a useful subset of sewage treatment plants for an early warning system at the city level.

Interpretation

Using wastewater metrics helps in selecting permanent sewershed sites and identifying sub-sites that can be scaled up during peak outbreak periods to detect disease hotspots, or scaled down during lean periods, especially when clinical data are unavailable. In a post-pandemic world, particularly in low-resource settings, focusing on the best-performing sewershed sites will ensure high-quality data that captures valid signals amid the noise from wastewater, conserves resources, and optimises public health actions beyond SARS-CoV-2.

Funding

This work has been supported by funding from the Rockefeller Foundation (grant 2021 HTH018) to National Centre for Biological Sciences (TIFR) and the Indian Council of Medical Research grant to (FI) Tata Institute for Genetics and Society and Tata Trusts.
确定印度班加罗尔可持续疾病监测的领头羊排污点:一项纵向研究
在2019冠状病毒病大流行期间,废水监测成为一种重要工具,因为它提供的数据比病例报告更能代表人群,而病例报告往往偏向于有寻求健康行为或获得医疗保健的个人。随着大流行阶段的变化、检测的减少和病毒脱落率的变化,拥有一个强大、可持续和灵活的废水监测系统至关重要,该系统可以作为疾病暴发的独立信号。我们的目标是为印度班加罗尔的可持续疾病监测确定“领头羊”下水道地点。方法我们于2021年12月至2024年1月在班加罗尔市(约1100万居民)的26个集中下水道站点进行了这项纵向研究。我们量化了每周SARS-CoV-2 RNA浓度,以跟踪感染动态并确定“风标”排污点。这是通过整合废水分析的既定指标,计算样本间的变化百分比,并应用算法区分信号和噪声来实现的,从而验证有助于疫情预测的准确性和可靠性的因素。利用2873份废水样本,我们采用了一种改进的算法(COVID-SURGE算法),利用班加罗尔26个污水点的SARS-CoV-2纵向废水数据来识别“风骚”污水点。我们对用户输入的废水数据使用了基于excel的计算器(COVID-SURGE计算器),该计算器根据算法区分信号与噪声(潜在变异性),并对病毒数据的输入格式和逆转录定量PCR试剂盒的指定检测限(LOD)值进行了调整。我们确定了11个“领头羊”地点:4个集水区面积大(KC谷1、KC谷2、Rajacanal、Doddabelee);四个中等大小(Agaram, Nagasandra, KR Puram, Yelahanka);和三个小尺寸(奇卡贝格尔,奇卡巴纳瓦拉,拉巴格)。这些是表现最好的,可以作为城市一级预警系统中污水处理厂的有用子集。使用废水指标有助于选择永久性下水道站点和确定子站点,这些站点可以在爆发高峰期扩大规模以发现疾病热点,或在淡季缩小规模,特别是在无法获得临床数据的情况下。在大流行后的世界,特别是在资源匮乏的环境中,关注表现最佳的下水道站点将确保获得高质量的数据,从而在废水的噪音中捕获有效信号,节约资源,并优化SARS-CoV-2之外的公共卫生行动。这项工作得到了洛克菲勒基金会资助国家生物科学中心(TIFR)和印度医学研究委员会资助(FI)塔塔遗传与社会研究所和塔塔信托基金的资助(赠款2021 HTH018)。
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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