Laboratory for Industrial and Applied Mathematics (LIAM), York University, Toronto, ON M3J 1P3, Canada.
Advanced Disaster, Emergency and Rapid Response Simulation (ADERSIM), York University, Toronto, ON M3J 1P3, Canada.
Int J Environ Res Public Health. 2024 Nov 13;21(11):1502. doi: 10.3390/ijerph21111502.
In response to escalating concerns about the indoor transmission of respiratory diseases, this study introduces a sophisticated software tool engineered to accurately determine contact rates among individuals in enclosed spaces-essential for public health surveillance and disease transmission mitigation. The tool applies YOLOv8, a cutting-edge deep learning model that enables precise individual detection and real-time tracking from video streams. An innovative feature of this system is its dynamic circular buffer zones, coupled with an advanced 2D projective transformation to accurately overlay video data coordinates onto a digital layout of the physical environment. By analyzing the overlap of these buffer zones and incorporating detailed heatmap visualizations, the software provides an in-depth quantification of contact instances and spatial contact patterns, marking an advancement over traditional contact tracing and contact counting methods. These enhancements not only improve the accuracy and speed of data analysis but also furnish public health officials with a comprehensive framework to develop more effective non-pharmaceutical infection control strategies. This research signifies a crucial evolution in epidemiological tools, transitioning from manual, simulation, and survey-based tracking methods to automated, real time, and precision-driven technologies that integrate advanced visual analytics to better understand and manage disease transmission in indoor settings.
针对室内呼吸道疾病传播问题的日益加剧,本研究引入了一款精密的软件工具,旨在准确确定封闭空间内个体之间的接触率——这对于公共卫生监测和疾病传播缓解至关重要。该工具应用了 YOLOv8,这是一种先进的深度学习模型,能够从视频流中进行精确的个体检测和实时跟踪。该系统的一个创新特点是其动态圆形缓冲区,与先进的 2D 投影变换相结合,可将视频数据坐标精确地叠加到物理环境的数字布局上。通过分析这些缓冲区的重叠,并结合详细的热图可视化,该软件提供了对接触实例和空间接触模式的深入量化,这标志着超越传统接触追踪和接触计数方法的进展。这些增强不仅提高了数据分析的准确性和速度,还为公共卫生官员提供了一个全面的框架,以制定更有效的非药物感染控制策略。这项研究标志着流行病学工具的重要发展,从手动、模拟和基于调查的跟踪方法,过渡到自动化、实时和以精度为驱动的技术,这些技术集成了先进的可视化分析,以更好地理解和管理室内环境中的疾病传播。