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The future of simulation-based medical education: Adaptive simulation utilizing a deep multitask neural network

机译:基于模拟的医学教育的未来:使用深层多任务神经网络的自适应模拟

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Background: In resuscitation medicine, effectively managing cognitive load in high-stakes environments has important implications for education and expertise development. There exists the potential to tailor educational experiences to an individual's cognitive processes via real-time physiologic measurement of cognitive load in simulation environments. Objective: The goal of this research was to test a novel simulation platform that utilized artificial intelligence to deliver a medical simulation that was adaptable to a participant's measured cognitive load. Methods: The research was conducted in 2019. Two board-certified emergency physicians and two medical students participated in a 10-minute pilot trial of a novel simulation platform. The system utilized artificial intelligence algorithms to measure cognitive load in real time via electrocardiography and galvanic skin response. In turn, modulation of simulation difficulty, determined by a participant's cognitive load, was facilitated through symptom severity changes of an augmented reality (AR) patient. A postsimulation survey assessed the participants' experience. Results: Participants completed a simulation that successfully measured cognitive load in real time through physiological signals. The simulation difficulty was adapted to the participant's cognitive load, which was reflected in changes in the AR patient's symptoms. Participants found the novel adaptive simulation platform to be valuable in supporting their learning. Conclusion: Our research team created a simulation platform that adapts to a participant's cognitive load in real-time. The ability to customize a medical simulation to a participant's cognitive state has potential implications for the development of expertise in resuscitation medicine.
机译:背景:在复苏医学中,在高风险环境中有效管理认知负荷对教育和专业发展具有重要意义。存在通过模拟环境中认知负荷的实时生理测量来量身定制教育经验的人的认知过程。目的:这项研究的目的是测试一个新型的模拟平台,该平台利用人工智能来提供适合参与者测得的认知负载的医学模拟。方法:这项研究于2019年进行。两名经过董事会认证的急诊医师和两名医学学生参加了一个新的模拟平台的10分钟试验试验。该系统利用人工智能算法通过心电图和电力皮肤反应实时测量认知负荷。反过来,通过参与者的认知负荷确定的模拟难度的调节是通过症状严重程度的变化(AR)患者来促进的。一项后模拟调查评估了参与者的经验。结果:参与者完成了一个模拟,该模拟通过生理信号成功地实时测量了认知负荷。模拟难度适应参与者的认知负荷,这反映在AR患者症状的变化中。参与者发现新颖的自适应模拟平台对于支持他们的学习很有价值。结论:我们的研究团队创建了一个模拟平台,该平台可实时适应参与者的认知负担。将医学模拟定制为参与者的认知状态的能力对复苏医学专业知识的发展具有潜在的影响。

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