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Intelligent Interruption Management System to Enhance Safety and Performance in Complex Surgical and Robotic Procedures

机译:智能中断管理系统可提高复杂外科手术和机器人程序的安全性和性能

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Procedural flow disruptions secondary to interruptions play a key role in error occurrence during complex medical procedures, mainly because they increase mental workload among team members, negatively impacting team performance and patient safety. Since certain types of interruptions are unavoidable, and consequently the need for multitasking is inherent to complex procedural care, this field can benefit from an intelligent system capable of identifying in which moment flow interference is appropriate without generating disruptions. In the present study we describe a novel approach for the identification of tasks imposing low cognitive load and tasks that demand high cognitive effort during real-life cardiac surgeries. We used heart rate variability analysis as an objective measure of cognitive load, capturing data in a real-time and unobtrusive manner from multiple team members (surgeon, anesthesiologist and perfusionist) simultaneously. Using audio-video recordings, behavioral coding and a hierarchical surgical process model, we integrated multiple data sources to create an interactive surgical dashboard, enabling the identification of specific steps, substeps and tasks that impose low cognitive load. An interruption management system can use these low demand situations to guide the surgical team in terms of the appropriateness of flow interruptions. The described approach also enables us to detect cognitive load fluctuations over time, under specific conditions (e.g. emergencies) or in situations that are prone to errors. An in-depth understanding of the relationship between cognitive overload states, task demands, and error occurrence will drive the development of cognitive supporting systems that recognize and mitigate errors efficiently and proactively during high complex procedures.
机译:继发于中断的程序流程中断在复杂医疗程序中的错误发生中起关键作用,主要是因为它们增加了团队成员之间的精神工作量,对团队绩效和患者安全产生负面影响。由于某些类型的中断是不可避免的,因此复杂的程序护理必然需要多任务处理,因此该领域可以从智能系统中受益,该系统能够确定哪个力矩流干扰是合适的而不会产生中断。在本研究中,我们描述了一种新颖的方法,用于识别在现实心脏外科手术中施加低认知负荷的任务和需要高认知努力的任务。我们使用心率变异性分析作为认知负荷的客观衡量指标,同时以实时且无干扰的方式从多个团队成员(外科医生,麻醉师和灌注员)捕获数据。通过使用音频视频记录,行为编码和分层的手术过程模型,我们集成了多个数据源以创建交互式手术仪表板,从而能够识别施加较低认知负荷的特定步骤,子步骤和任务。中断管理系统可以使用这些低需求情况来就流动中断的适当性指导手术团队。所描述的方法还使我们能够在特定条件下(例如紧急情况)或易于出错的情况下检测随时间的认知负荷波动。对认知超负荷状态,任务需求和错误发生之间关系的深入理解将推动认知支持系统的发展,该系统在高复杂度过程中能够有效,主动地识别和缓解错误。

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