Shi Tongyue, Guo Liya, Shen Zeyuan, Kong Guilan
Institute of Medical Technology, Peking University Health Science Center, Beijing, China.
National Institute of Health Data Science, Peking University, Beijing, China.
Health Data Sci. 2024 Aug 5;4:0128. doi: 10.34133/hds.0128. eCollection 2024.
Multi-source evidence fusion aims to process and combine evidence from different sources to support rational and reliable decision-making. The evidential reasoning (ER) approach is a helpful method to deal with information from multiple sources with uncertainty. It has been widely used in business analytics, healthcare management, and other fields for optimal decision-making. However, computerized implementation of the ER approach usually requires much expertise and effort. At present, some ER-based computerized tools, such as the intelligent decision system (IDS), have been developed by professionals to provide decision support. Nevertheless, IDS is not open source, and the user interfaces are a bit complicated for non-professional users. The lack of a free-to-access and easy-to-use computerized tool limits the application of ER. We designed and developed a Python package that could efficiently implement the ER approach for multi-source evidence fusion. Further, based on it, we built an online web-based system, providing not only real-time evidence fusion but also visualized illustrations of combined results. Finally, a comparison study between the Python package and IDS was conducted. A Python package, ERTool, was developed to implement the ER approach automatically and efficiently. The online version of the ERTool provides a more convenient way to handle evidence fusion tasks. ERTool, compatible with Python 3 and can be installed through the Python Package Index at https://pypi.org/project/ERTool/, was developed to implement the ER approach. The ERTool has advantages in easy accessibility, clean interfaces, and high computing efficiency, making it a key tool for researchers and practitioners in multiple evidence-based decision-making. It helps bridge the gap between the algorithmic ER and its practical application and facilitates its widespread adoption in general decision-making contexts.
多源证据融合旨在处理和整合来自不同来源的证据,以支持合理且可靠的决策。证据推理(ER)方法是一种处理具有不确定性的多源信息的有用方法。它已在商业分析、医疗管理和其他领域广泛用于优化决策。然而,ER方法的计算机化实现通常需要大量专业知识和精力。目前,一些基于ER的计算机化工具,如智能决策系统(IDS),已由专业人员开发出来以提供决策支持。尽管如此,IDS不是开源的,并且用户界面对于非专业用户来说有点复杂。缺乏免费访问且易于使用的计算机化工具限制了ER的应用。我们设计并开发了一个Python包,它可以有效地实现用于多源证据融合的ER方法。此外,基于该包,我们构建了一个基于网络的在线系统,不仅提供实时证据融合,还提供组合结果的可视化图示。最后,对Python包和IDS进行了比较研究。开发了一个名为ERTool的Python包,以自动且高效地实现ER方法。ERTool的在线版本提供了一种更便捷的方式来处理证据融合任务。ERTool与Python 3兼容,可通过https://pypi.org/project/ERTool/上的Python包索引进行安装,旨在实现ER方法。ERTool在易于访问、界面简洁和计算效率高方面具有优势,使其成为多证据决策的研究人员和从业者的关键工具。它有助于弥合算法化的ER与其实际应用之间的差距,并促进其在一般决策环境中的广泛采用。