School of Geomatics and Urban Spatial Informatics, Beijing University of Civil Engineering and Architecture, Beijing 102612, China.
Department of Geography, San Diego State University, San Diego, CA 92182-4493, USA.
Int J Environ Res Public Health. 2021 Jun 13;18(12):6401. doi: 10.3390/ijerph18126401.
Recognizing and segmenting surgical workflow is important for assessing surgical skills as well as hospital effectiveness, and plays a crucial role in maintaining and improving surgical and healthcare systems. Most evidence supporting this remains signal-, video-, and/or image-based. Furthermore, casual evidence of the interaction between surgical staff remains challenging to gather and is largely absent. Here, we collected the real-time movement data of the surgical staff during a neurosurgery to explore cooperation networks among different surgical roles, namely surgeon, assistant nurse, scrub nurse, and anesthetist, and to segment surgical workflows to further assess surgical effectiveness. We installed a zone position system (ZPS) in an operating room (OR) to effectively record high-frequency high-resolution movements of all surgical staff. Measuring individual interactions in a closed, small area is difficult, and surgical workflow classification has uncertainties associated with the surgical staff in terms of their varied training and operation skills, patients in terms of their initial states and biological differences, and surgical procedures in terms of their complexities. We proposed an interaction-based framework to recognize the surgical workflow and integrated a Bayesian network (BN) to solve the uncertainty issues. Our results suggest that the proposed BN method demonstrates good performance with a high accuracy of 70%. Furthermore, it semantically explains the interaction and cooperation among surgical staff.
识别和分割手术流程对于评估手术技能和医院效率非常重要,对于维护和改进手术和医疗保健系统起着至关重要的作用。大多数支持这一点的证据仍然基于信号、视频和/或图像。此外,收集手术人员之间的偶然交互证据仍然具有挑战性,而且基本上不存在。在这里,我们收集了神经外科手术过程中手术人员的实时运动数据,以探索不同手术角色(即外科医生、助理护士、洗手护士和麻醉师)之间的合作网络,并分割手术流程,以进一步评估手术效果。我们在手术室 (OR) 中安装了区域位置系统 (ZPS),以有效记录所有手术人员的高频高分辨率运动。在封闭的小区域内测量个体相互作用具有挑战性,并且手术工作流程分类存在不确定性,涉及手术人员的不同培训和操作技能、患者的初始状态和生物学差异以及手术程序的复杂性。我们提出了一种基于交互的框架来识别手术工作流程,并集成了贝叶斯网络 (BN) 来解决不确定性问题。我们的结果表明,所提出的 BN 方法具有 70%的高精度,表现出良好的性能。此外,它还可以语义解释手术人员之间的交互和协作。