Fernandez-Llatas Carlos, Meneu Teresa, Benedi Jose Miguel, Traver Vicente
TSB group at ITACA institute, Universidad Politécnica de Valencia, Spain.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:6178-81. doi: 10.1109/IEMBS.2010.5627760.
Current trends in health management improvement demand the standardization of care protocols to achieve better quality and efficiency. The use of Clinical Pathways is an emerging solution for that problem. However, current Clinical Pathways are big manuals written in natural language and highly affected by human subjectivity. These problems make the deployment and dissemination of them extremely difficult in real practice environments. In this work, a complete computer based architecture to help the representation and execution of Clinical Pathways is suggested. Furthermore, the difficulties inherent to the design of formal Clinical Pathways in this way requires new specific design tools to help making the system useful. Process Mining techniques can help to automatically infer processes definition from execution samples. Yet, the classical Process Mining paradigm is not totally compatible with the Clinical Pathways paradigm. In this paper, a pattern recognition algorithm based in an evolution of the Process Mining classical paradigm is presented and evaluated as a solution to this situation. The proposed algorithm is able to infer Clinical Pathways from execution logs to support the design of Clinical Pathways.
当前健康管理改进的趋势要求护理协议标准化,以实现更高的质量和效率。临床路径的使用是解决该问题的一种新兴方案。然而,当前的临床路径是用自然语言编写的大型手册,且受人为主观性影响很大。这些问题使得它们在实际实践环境中的部署和传播极其困难。在这项工作中,提出了一种完整的基于计算机的架构,以帮助临床路径的表示和执行。此外,以这种方式设计正式临床路径所固有的困难需要新的特定设计工具来使系统有用。过程挖掘技术可以帮助从执行样本中自动推断过程定义。然而,经典的过程挖掘范式与临床路径范式并不完全兼容。本文提出并评估了一种基于过程挖掘经典范式演变的模式识别算法,作为解决这种情况的一种方案。所提出的算法能够从执行日志中推断临床路径,以支持临床路径的设计。