Measuring cognitively demanding activities in pediatric out-of-hospital cardiac arrest.

IF 2.8 Q2 HEALTH CARE SCIENCES & SERVICES
Nathan Bahr, Jonathan Ivankovic, Garth Meckler, Matthew Hansen, Carl Eriksson, Jeanne-Marie Guise
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引用次数: 0

Abstract

Background: This methodological intersection article demonstrates a method to measure cognitive load in clinical simulations. Researchers have hypothesized that high levels of cognitive load reduce performance and increase errors. This phenomenon has been studied primarily by experimental designs that measure responses to predetermined stimuli and self-reports that reduce the experience to a summative value. Our goal was to develop a method to identify clinical activities with high cognitive burden using physiologic measures.

Methods: Teams of emergency medical responders were recruited from local fire departments to participate in a scenario with a shockable pediatric out-of-hospital cardiac arrest (POHCA) patient. The scenario was standardized with the patient being resuscitated after receiving high-quality CPR and 3 defibrillations. Each team had a person in charge (PIC) who wore a functional near-infrared spectroscopy (fNIRS) device that recorded changes in oxygenated and deoxygenated hemoglobin concentration in their prefrontal cortex (PFC), which was interpreted as cognitive activity. We developed a data processing pipeline to remove nonneural noise (e.g., motion artifacts, heart rate, respiration, and blood pressure) and detect statistically significant changes in cognitive activity. Two researchers independently watched videos and coded clinical tasks corresponding to detected events. Disagreements were resolved through consensus, and results were validated by clinicians.

Results: We conducted 18 simulations with 122 participants. Participants arrived in teams of 4 to 7 members, including one PIC. We recorded the PIC's fNIRS signals and identified 173 events associated with increased cognitive activity. [Defibrillation] (N = 34); [medication] dosing (N = 33); and [rhythm checks] (N = 28) coincided most frequently with detected elevations in cognitive activity. [Defibrillations] had affinity with the right PFC, while [medication] dosing and [rhythm checks] had affinity with the left PFC.

Conclusions: FNIRS is a promising tool for physiologically measuring cognitive load. We describe a novel approach to scan the signal for statistically significant events with no a priori assumptions of when they occur. The events corresponded to key resuscitation tasks and appeared to be specific to the type of task based on activated regions in the PFC. Identifying and understanding the clinical tasks that require high cognitive load can suggest targets for interventions to decrease cognitive load and errors in care.

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测量小儿院外心脏骤停患者的认知活动。
背景:这篇方法论交叉文章展示了一种测量临床模拟认知负荷的方法。研究人员假设,高水平的认知负荷会降低成绩并增加错误。对这一现象的研究主要是通过实验设计,测量对预定刺激的反应,以及将经验简化为总结性价值的自我报告。我们的目标是开发一种方法,利用生理测量来识别认知负担较重的临床活动:方法:我们从当地消防部门招募了一组紧急医疗救援人员,让他们与一名可休克的小儿院外心脏骤停(POHCA)患者一起参与情景模拟。该情景是标准化的,患者在接受高质量的心肺复苏术和 3 次除颤后被抢救过来。每个小组都有一名负责人(PIC),该负责人佩戴功能性近红外光谱(fNIRS)设备,记录其前额叶皮质(PFC)中氧合作用和脱氧作用血红蛋白浓度的变化,并将其解释为认知活动。我们开发了一个数据处理管道,用于去除非神经噪音(如运动伪影、心率、呼吸和血压),并检测认知活动中具有统计学意义的变化。两名研究人员独立观看视频,并对检测到的事件对应的临床任务进行编码。分歧通过共识解决,结果由临床医生验证:我们对 122 名参与者进行了 18 次模拟。参与者分成 4 到 7 人的小组,其中包括一名 PIC。我们记录了 PIC 的 fNIRS 信号,并确定了 173 个与认知活动增加相关的事件。[除颤](N = 34)、[药物]剂量(N = 33)和[心律检查](N = 28)与检测到的认知活动增加最为频繁。[除颤]与右侧 PFC 有亲和力,而[用药]和[心律检查]与左侧 PFC 有亲和力:结论:FNIRS 是一种很有前途的生理测量认知负荷的工具。我们介绍了一种新颖的方法,即在不预先假定事件发生时间的情况下,扫描信号以发现具有统计学意义的事件。这些事件与关键的复苏任务相对应,而且根据前脑功能区的激活区域,这些事件似乎与任务类型有关。识别和了解需要高认知负荷的临床任务,可以为减少认知负荷和护理错误的干预措施提出目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.70
自引率
0.00%
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0
审稿时长
12 weeks
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