Nanyang Technological University, Nanyang Environment & Water Research Institute (NEWRI), 1 Cleantech Loop, CleanTech One, #06-08, Singapore 637141.
Nanyang Technological University, Nanyang Environment & Water Research Institute (NEWRI), 1 Cleantech Loop, CleanTech One, #06-08, Singapore 637141; School of Civil and Environmental Engineering, Nanyang Technological University, 50 Nanyang Avenue, 639798, Singapore.
Water Res. 2023 Oct 1;244:120406. doi: 10.1016/j.watres.2023.120406. Epub 2023 Jul 25.
With the COVID-19 pandemic the use of WBE to track diseases spread has rapidly evolved into a widely applied strategy worldwide. However, many of the current studies lack the necessary systematic approach and supporting quality of epidemiological data to fully evaluate the effectiveness and usefulness of such methods. Use of WBE in a very low disease prevalence setting and for long-term monitoring has yet to be validated and it is critical for its intended use as an early warning system. In this study we seek to evaluate the sensitivity of WBE approaches under low prevalence of disease and ability to provide early warning. Two monitoring scenarios were used: (i) city wide monitoring (population 5,700,000) and (ii) community/localized monitoring (population 24,000 to 240,000). Prediction of active cases by WBE using multiple linear regression shows that a multiplexed qPCR approach with three gene targets has a significant advantage over single-gene monitoring approaches, with R = 0.832 (RMSE 0.053) for an analysis using N, ORF1ab and S genes (R = 0.677 to 0.793 for single gene strategies). A predicted disease prevalence of 0.001% (1 in 100,000) for a city-wide monitoring was estimated by the multiplexed RT-qPCR approach and was corroborated by epidemiological data evidence in three 'waves'. Localized monitoring setting shows an estimated detectable disease prevalence of ∼0.002% (1 in 56,000) and is supported by the geospatial distribution of active cases and local population dynamics data. Data analysis also shows that this approach has a limitation in sensitivity, or hit rate, of 62.5 % and an associated high miss rate (false negative rate) of 37.5 % when compared to available epidemiological data. Nevertheless, our study shows that, with enough sampling resolution, WBE at a community level can achieve high precision and accuracies for case detection (96 % and 95 %, respectively) with low false omission rate (4.5 %) even at low disease prevalence levels.
随着 COVID-19 大流行,使用 WBE 追踪疾病传播已迅速演变为全球广泛应用的策略。然而,目前许多研究缺乏必要的系统方法和支持性的流行病学数据来全面评估此类方法的有效性和实用性。在疾病低流行率环境下和长期监测中使用 WBE 尚未得到验证,作为预警系统,这一点至关重要。在这项研究中,我们试图评估在疾病低流行率下 WBE 方法的敏感性和提供预警的能力。使用了两种监测场景:(i) 全市范围监测(人口 570 万)和 (ii) 社区/局部监测(人口 24,000 至 240,000)。使用多元线性回归对 WBE 预测的活跃病例进行分析表明,使用三个基因靶标的多重 qPCR 方法比单基因监测方法具有显著优势,使用 N、ORF1ab 和 S 基因进行分析时 R 值为 0.832(RMSE 为 0.053)(单基因策略的 R 值为 0.677 至 0.793)。使用多重 RT-qPCR 方法估计全市范围监测的疾病流行率为 0.001%(1/100,000),这一预测得到了三个“波次”的流行病学数据证据的证实。局部监测环境表明,可检测到的疾病流行率约为 0.002%(1/56,000),这一结果得到了活跃病例的地理空间分布和当地人口动态数据的支持。数据分析还表明,与可用的流行病学数据相比,该方法的敏感性或命中率为 62.5%,相关的漏报率(假阴性率)为 37.5%。然而,我们的研究表明,在足够的采样分辨率下,社区层面的 WBE 可以实现高精准度和高准确度的病例检测(分别为 96%和 95%),漏报率(假阴性率)低(4.5%),即使在低疾病流行率水平下也是如此。