Mortenson Center in Global Engineering, University of Colorado Boulder, 4001 Discovery Drive, Boulder, 80303, Colorado, United States of America; SweetSense Inc., Boulder, Colorado, USA.
Mortenson Center in Global Engineering, University of Colorado Boulder, 4001 Discovery Drive, Boulder, 80303, Colorado, United States of America.
Water Res. 2022 Jul 15;220:118644. doi: 10.1016/j.watres.2022.118644. Epub 2022 May 27.
We designed and validated a sensitive, continuous, in-situ, remotely reporting tryptophan-like fluorescence sensor and coupled it with a machine learning model to predict high-risk fecal contamination in water (>10 colony forming units (CFU)/100mL E. coli). We characterized the sensor's response to multiple fluorescence interferents with benchtop analysis. The sensor's minimum detection limit (MDL) of tryptophan dissolved in deionized water was 0.05 ppb (p <0.01) and its MDL of the correlation to E. coli present in wastewater effluent was 10 CFU/100 mL (p <0.01). Fluorescence response declined exponentially with increased water temperature and a correction factor was calculated. Inner filter effects, which cause signal attenuation at high concentrations, were shown to have negligible impact in an operational context. Biofouling was demonstrated to increase the fluorescence signal by approximately 82% in a certain context, while mineral scaling reduced the sensitivity of the sensor by approximately 5% after 24 hours with a scaling solution containing 8 times the mineral concentration of the Colorado River. A machine learning model was developed, with TLF measurements as the primary feature, to output fecal contamination risk levels established by the World Health Organization. A training and validation data set for the model was built by installing four sensors on Boulder Creek, Colorado for 88 days and enumerating 298 grab samples for E. coli with membrane filtration. The machine learning model incorporated a proxy feature for fouling (time since last cleaning) which improved model performance. A binary classification model was able to predict high risk fecal contamination with 83% accuracy (95% CI: 78% - 87%), sensitivity of 80%, and specificity of 86%. A model distinguishing between all World Health Organization established risk categories performed with an overall accuracy of 64%. Integrating TLF measurements into an ML model allows for anomaly detection and noise reduction, permitting contamination prediction despite biofilm or mineral scaling formation on the sensor's lenses. Real-time detection of high risk fecal contamination could contribute to a major step forward in terms of microbial water quality monitoring for human health.
我们设计并验证了一种灵敏、连续、原位、远程报告色氨酸样荧光传感器,并将其与机器学习模型相结合,以预测水中高风险粪便污染(>10 个菌落形成单位(CFU)/100mL 大肠杆菌)。我们通过台式分析对传感器对多种荧光干扰物的响应进行了表征。传感器在去离子水中溶解色氨酸的最低检测限(MDL)为 0.05 ppb(p<0.01),其与废水处理厂中存在的大肠杆菌的相关性的 MDL 为 10 CFU/100mL(p<0.01)。荧光响应随水温升高呈指数下降,计算了校正因子。在实际应用中,内滤效应(高浓度时信号衰减)的影响可以忽略不计。在特定情况下,生物污垢会使荧光信号增加约 82%,而矿化结垢会使传感器的灵敏度在含有 8 倍科罗拉多河矿物质浓度的结垢溶液中 24 小时后降低约 5%。开发了一种机器学习模型,以 TLF 测量为主要特征,输出世界卫生组织确定的粪便污染风险水平。通过在科罗拉多州博尔德溪安装四个传感器 88 天,并对膜过滤的大肠杆菌进行 298 次随机取样,建立了模型的培训和验证数据集。机器学习模型纳入了污垢的代理特征(上次清洁以来的时间),从而提高了模型性能。二进制分类模型能够以 83%的准确率(95%CI:78%-87%)、80%的灵敏度和 86%的特异性预测高风险粪便污染。能够区分世界卫生组织确定的所有风险类别的模型整体准确率为 64%。将 TLF 测量集成到 ML 模型中,可以进行异常检测和降噪,从而允许在传感器镜头上形成生物膜或矿物质结垢的情况下进行污染预测。实时检测高风险粪便污染可能有助于在人类健康的微生物水质监测方面取得重大进展。