Hall-Clifford Rachel, Arzu Alejandro, Contreras Saul, Croissert Muguercia Maria Gabriela, de Leon Figueroa Diana Ximena, Ochoa Elias Maria Valeria, Soto Fernández Anna Yunuen, Tariq Amara, Banerjee Imon, Pennington Pamela
Departments of Sociology and Global Health, Center for the Study of Human Health, Emory University, Decatur, GA, United States of America.
Center for the Study of Human Health, Emory University, Decatur, GA, United States of America.
PLOS Glob Public Health. 2022 Aug 16;2(8):e0000918. doi: 10.1371/journal.pgph.0000918. eCollection 2022.
Despite successes on the Sustainable Development Goals for access to improved water sources and sanitation, many low and middle-income countries (LMICs) continue to struggle with high rates of diarrheal disease. In Guatemala, 98% of water sources are estimated to have E. coli contamination. This project moves toward a novel low-cost approach to bridge the gap between the microbiologic identification of E. coli and the vast impact that this pathogen has on human health within marginalized communities using co-designed community-based tools, low-cost technology, and AI. An agile co-design process was followed with water quality stakeholders, community staff, and local graphic design artists to develop a community water quality education mobile app. A series of alpha- and beta-testers completed interactive demonstration, feedback, and in-depth interview sessions. A microbiology lab in Guatemala developed and piloted field protocols with lay community workers to collect and process water samples. A preliminary artificial intelligence (AI) algorithm was developed to detect the presence of E. coli in images generated from community-derived water samples. The mobile app emerged as a pictorial and audio-driven community-facing tool. The field protocol for water sampling and testing was successfully implemented by lay community workers. Feedback from the community workers indicated both desire and ability to conduct the water sampling and testing protocol under field conditions. However, images derived from the low-cost $2 microscope in field conditions were not of a suitable quality for AI object detection of E. coli, and additional low-cost technologies are being considered. The preliminary AI object detection algorithm from lab-derived images performed at 94% accuracy in identifying E. coli in comparison to the Chromocult gold-standard.
尽管在实现可持续发展目标中关于改善水源和卫生设施方面取得了成功,但许多低收入和中等收入国家(LMICs)仍在与腹泻疾病的高发病率作斗争。在危地马拉,估计98%的水源受到大肠杆菌污染。该项目采用一种新颖的低成本方法,利用共同设计的基于社区的工具、低成本技术和人工智能,弥合大肠杆菌的微生物鉴定与这种病原体在边缘化社区对人类健康造成的巨大影响之间的差距。与水质利益相关者、社区工作人员和当地平面设计艺术家一起遵循了敏捷的共同设计过程,以开发一款社区水质教育移动应用程序。一系列的alpha和beta测试人员完成了交互式演示、反馈和深入访谈环节。危地马拉的一个微生物实验室与社区非专业工作人员一起开发并试点了现场规程,以收集和处理水样。开发了一种初步的人工智能(AI)算法,用于检测从社区采集的水样生成的图像中大肠杆菌的存在。该移动应用程序成为了一个面向社区的、以图片和音频驱动的工具。社区非专业工作人员成功实施了水样采集和检测的现场规程。社区工作人员的反馈表明,他们有意愿且有能力在现场条件下执行水样采集和检测规程。然而,在现场条件下使用低成本2美元显微镜获取的图像质量不适合用于大肠杆菌的人工智能目标检测,目前正在考虑其他低成本技术。与Chromocult金标准相比,从实验室衍生图像得出的初步人工智能目标检测算法在识别大肠杆菌方面的准确率为94%。