AI in evaluating ambulation of stroke patients: severity classification with video and functional ambulation category scale.

IF 2.2 4区 医学 Q1 REHABILITATION
Jeong-Hyun Kim, Hyeon Hong, Kyuwon Lee, Yeji Jeong, Hokyoung Ryu, Hyundo Kim, Seong-Ho Jang, Hyeng-Kyu Park, Jae-Young Han, Hye Jung Park, Hasuk Bae, Byung-Mo Oh, Won-Seok Kim, Sang Yoon Lee, Shi-Uk Lee
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引用次数: 0

Abstract

Background: The evaluation of gait function and severity classification of stroke patients are important to determine the rehabilitation goal and the level of exercise. Physicians often qualitatively evaluate patients' walking ability through visual gait analysis using naked eye, video images, or standardized assessment tools. Gait evaluation through observation relies on the doctor's empirical judgment, potentially introducing subjective opinions. Therefore, conducting research to establish a basis for more objective judgment is crucial.

Objective: To verify a deep learning model that classifies gait image data of stroke patients according to Functional Ambulation Category (FAC) scale.

Methods: Gait vision data from 203 stroke patients and 182 healthy individuals recruited from six medical institutions were collected to train a deep learning model for classifying gait severity in stroke patients. The recorded videos were processed using OpenPose. The dataset was randomly split into 80% for training and 20% for testing.

Results: The deep learning model attained a training accuracy of 0.981 and test accuracy of 0.903. Area Under the Curve(AUC) values of 0.93, 0.95, and 0.96 for discriminating among the mild, moderate, and severe stroke groups, respectively.

Conclusion: This confirms the potential of utilizing human posture estimation based on vision data not only to develop gait parameter models but also to develop models to classify severity according to the FAC criteria used by physicians. To develop an AI-based severity classification model, a large amount and variety of data is necessary and data collected in non-standardized real environments, not in laboratories, can also be used meaningfully.

评估中风患者行走能力的人工智能:利用视频和功能性行走类别量表进行严重程度分类。
背景:脑卒中患者的步态功能评估和严重程度分级对于确定康复目标和运动水平非常重要。医生通常通过肉眼、视频图像或标准化评估工具进行视觉步态分析,对患者的行走能力进行定性评估。通过观察进行步态评估依赖于医生的经验判断,可能会引入主观意见。因此,开展研究以建立更客观的判断基础至关重要:验证一种深度学习模型,该模型可根据功能性行走类别(FAC)量表对中风患者的步态图像数据进行分类:方法:收集了从 6 家医疗机构招募的 203 名中风患者和 182 名健康人的步态视觉数据,以训练用于对中风患者步态严重程度进行分类的深度学习模型。录制的视频使用 OpenPose 进行处理。数据集随机分为 80% 用于训练,20% 用于测试:结果:深度学习模型的训练准确率为 0.981,测试准确率为 0.903。区分轻度、中度和重度中风组的曲线下面积(AUC)值分别为 0.93、0.95 和 0.96:结论:这证实了利用基于视觉数据的人体姿势估计不仅可以开发步态参数模型,还可以根据医生使用的 FAC 标准开发严重程度分类模型。要开发基于人工智能的严重程度分类模型,需要大量、多样的数据,在非标准化的真实环境而非实验室中收集的数据也能得到有意义的利用。
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来源期刊
Topics in Stroke Rehabilitation
Topics in Stroke Rehabilitation 医学-康复医学
CiteScore
5.10
自引率
4.50%
发文量
57
审稿时长
6-12 weeks
期刊介绍: Topics in Stroke Rehabilitation is the leading journal devoted to the study and dissemination of interdisciplinary, evidence-based, clinical information related to stroke rehabilitation. The journal’s scope covers physical medicine and rehabilitation, neurology, neurorehabilitation, neural engineering and therapeutics, neuropsychology and cognition, optimization of the rehabilitation system, robotics and biomechanics, pain management, nursing, physical therapy, cardiopulmonary fitness, mobility, occupational therapy, speech pathology and communication. There is a particular focus on stroke recovery, improving rehabilitation outcomes, quality of life, activities of daily living, motor control, family and care givers, and community issues. The journal reviews and reports clinical practices, clinical trials, state-of-the-art concepts, and new developments in stroke research and patient care. Both primary research papers, reviews of existing literature, and invited editorials, are included. Sharply-focused, single-issue topics, and the latest in clinical research, provide in-depth knowledge.
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