Marc Garbey, Guillaume Joerger, Quentin Lesport, Helen Girma, Sienna McNett, Mohammad Abu-Rub, Henry Kaminski
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引用次数: 1
Abstract
Background: Telemedicine practice for neurological diseases has grown significantly during the COVID-19 pandemic.Telemedicine offers an opportunity to assess digitalization of examinations and enhances access to modern computer vision and artificial intelligence processing to annotate and quantify examinations in a consistent and reproducible manner. The Myasthenia Gravis Core Examination (MG-CE) has been recommended for the telemedicine evaluation of patients with myasthenia gravis.
Objective: We aimed to assess the ability to take accurate and robust measurements during the examination, which would allow improvement in workflow efficiency by making the data acquisition and analytics fully automatic and thereby limit the potential for observation bias.
Methods: We used Zoom (Zoom Video Communications) videos of patients with myasthenia gravis undergoing the MG-CE. The core examination tests required 2 broad categories of processing. First, computer vision algorithms were used to analyze videos with a focus on eye or body motions. Second, for the assessment of examinations involving vocalization, a different category of signal processing methods was required. In this way, we provide an algorithm toolbox to assist clinicians with the MG-CE. We used a data set of 6 patients recorded during 2 sessions.
Results: Digitalization and control of quality of the core examination are advantageous and let the medical examiner concentrate on the patient instead of managing the logistics of the test. This approach showed the possibility of standardized data acquisition during telehealth sessions and provided real-time feedback on the quality of the metrics the medical doctor is assessing. Overall, our new telehealth platform showed submillimeter accuracy for ptosis and eye motion. In addition, the method showed good results in monitoring muscle weakness, demonstrating that continuous analysis is likely superior to pre-exercise and post-exercise subjective assessment.
Conclusions: We demonstrated the ability to objectively quantitate the MG-CE. Our results indicate that the MG-CE should be revisited to consider some of the new metrics that our algorithm identified. We provide a proof of concept involving the MG-CE, but the method and tools developed can be applied to many neurological disorders and have great potential to improve clinical care.
背景:在2019冠状病毒病大流行期间,神经系统疾病的远程医疗实践显著增加。远程医疗提供了评估数字化检查的机会,并增强了对现代计算机视觉和人工智能处理的访问,以一致和可重复的方式注释和量化检查。重症肌无力核心检查(MG-CE)已被推荐用于重症肌无力患者的远程医疗评估。目的:我们旨在评估在检查过程中进行准确和稳健测量的能力,这将通过使数据采集和分析完全自动化来提高工作流程效率,从而限制观察偏差的可能性。方法:采用Zoom (Zoom Video Communications)视频对重症肌无力患者进行MG-CE检查。核心考试要求处理两大类问题。首先,使用计算机视觉算法来分析重点关注眼睛或身体运动的视频。其次,对于涉及发声的考试的评估,需要一种不同类型的信号处理方法。通过这种方式,我们提供了一个算法工具箱来帮助临床医生进行MG-CE。我们使用了在两个疗程中记录的6名患者的数据集。结果:核心检查的数字化和质量控制是有利的,可以让法医专注于患者,而不是管理检验的后勤工作。这种方法显示了在远程保健会议期间进行标准化数据采集的可能性,并提供了关于医生正在评估的指标质量的实时反馈。总的来说,我们的新远程医疗平台在上睑下垂和眼动方面显示了亚毫米级的精度。此外,该方法在监测肌无力方面效果良好,表明连续分析可能优于运动前和运动后的主观评价。结论:我们证明了客观定量MG-CE的能力。我们的结果表明,应该重新审视MG-CE,以考虑我们的算法确定的一些新指标。我们提供了一个涉及MG-CE的概念证明,但所开发的方法和工具可以应用于许多神经系统疾病,并具有改善临床护理的巨大潜力。