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数字工具和人工智能在重症肌无力核心检查中的应用。

Application of digital tools and artificial intelligence in the Myasthenia Gravis Core Examination.

作者信息

Garbey Marc, Lesport Quentin, Girma Helen, Öztosun Gülşen, Abu-Rub Mohammed, Guidon Amanda C, Juel Vern, Nowak Richard J, Soliven Betty, Aban Inmaculada, Kaminski Henry J

机构信息

Department of Surgery, School of Medicine & Health Sciences, George Washington University, Washington, DC, United States.

Care Constitution Corp., Houston, TX, United States.

出版信息

Front Neurol. 2024 Dec 4;15:1474884. doi: 10.3389/fneur.2024.1474884. eCollection 2024.

Abstract

BACKGROUND

Advances in video image analysis and artificial intelligence provide opportunities to transform how patients are evaluated. In this study, we assessed the ability to quantify Zoom video recordings of a standardized neurological examination- the Myasthenia Gravis Core Examination (MG-CE)-designed for telemedicine evaluations.

METHODS

We used Zoom (Zoom Video Communications) videos of patients with myasthenia gravis (MG) who underwent the MG-CE. Computer vision, in combination with artificial intelligence methods, was used to develop algorithms to analyze the videos, with a focus on eye and body motions. To assess the examinations involving vocalization, signal processing methods, such as natural language processing (NLP), were developed. A series of algorithms were developed to automatically compute the metrics of the MG-CE.

RESULTS

A total of 51 patients with MG were assessed, with videos recorded twice on separate days, while 15 control subjects were evaluated once. We successfully quantified the positions of the lids, eyes, and arms and developed respiratory metrics based on breath counts. The cheek puff exercise was found to have limited value for quantification. Technical limitations included variations in illumination, bandwidth, and the fact that the recording was conducted from the examiner's side rather than the patient's side.

CONCLUSION

Several aspects of the MG-CE can be quantified to produce continuous measurements using standard Zoom video recordings. Further development of the technology will enable trained non-physician healthcare providers to conduct precise examinations of patients with MG outside of conventional clinical settings, including for the purpose of clinical trials.

摘要

背景

视频图像分析和人工智能的进展为改变患者评估方式提供了机遇。在本研究中,我们评估了对用于远程医疗评估的标准化神经学检查——重症肌无力核心检查(MG-CE)的Zoom视频记录进行量化的能力。

方法

我们使用了接受MG-CE的重症肌无力(MG)患者的Zoom(Zoom视频通信)视频。结合计算机视觉和人工智能方法来开发分析视频的算法,重点关注眼睛和身体动作。为评估涉及发声的检查,开发了诸如自然语言处理(NLP)等信号处理方法。开发了一系列算法以自动计算MG-CE的指标。

结果

共评估了51例MG患者,视频在不同日期录制了两次,同时对15名对照受试者进行了一次评估。我们成功量化了眼睑、眼睛和手臂的位置,并基于呼吸计数得出了呼吸指标。发现脸颊吹气运动的量化价值有限。技术限制包括光照、带宽的变化,以及记录是从检查者一侧而非患者一侧进行的这一事实。

结论

使用标准的Zoom视频记录,可以对MG-CE的几个方面进行量化以产生连续测量值。该技术的进一步发展将使经过培训的非医师医疗服务提供者能够在传统临床环境之外对MG患者进行精确检查,包括用于临床试验的目的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0b6a/11652356/8bc50be4872a/fneur-15-1474884-g001.jpg

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