Introduction: Hand function is a central determinant of independence after stroke. Measuring hand use in the home environment is necessary to evaluate the impact of new interventions, and calls for novel wearable technologies. Egocentric video can capture hand-object interactions in context, as well as show how more-affected hands are used during bilateral tasks (for stabilization or manipulation). Automated methods are required to extract this information. Objective: To use artificial intelligence-based computer vision to classify hand use and hand role from egocentric videos recorded at home after stroke. Methods: Twenty-one stroke survivors participated in the study. A random forest classifier, a SlowFast neural network, and the Hand Object Detector neural network were applied to identify hand use and hand role at home. Leave-One-Subject-Out-Cross-Validation (LOSOCV) was used to evaluate the performance of the three models. Between-group differences of the models were calculated based on the Mathews correlation coefficient (MCC). Results: For hand use detection, the Hand Object Detector had significantly higher performance than the other models. The macro average MCCs using this model in the LOSOCV were 0.50 +- 0.23 for the more-affected hands and 0.58 +- 0.18 for the less-affected hands. Hand role classification had macro average MCCs in the LOSOCV that were close to zero for all models. Conclusion: Using egocentric video to capture the hand use of stroke survivors at home is feasible. Pose estimation to track finger movements may be beneficial to classifying hand roles in the future.
翻译:介绍:手势是中风后独立的核心决定因素。测量在家环境中使用手势对于评估新干预措施的影响十分必要,并且要求采用新型磨损技术。Egocentic视频可以捕捉手球在上下文中的相互作用,并展示在双边任务(稳定或操纵)中如何使用受更多影响的手。需要自动化方法来提取这一信息。目标:使用人工智能计算机视觉来对在家里中风后录制的以自我为中心的视频中的手用和手角色进行分类。方法:21名中风幸存者参加了研究。随机的森林分类器、慢速心血管网络和手动检测器神经网络的作用被用来识别在家的手动和手动角色。leave-Opit-Out-Cros-Valation (LOSOV) 用于评估三种模型的性能。模型的组间差异根据Mathews 相关系数(MCC)计算。结果:在手用探测时,触摸者比其他模型的性能要高得多。在OG-LS-LS-L3中,使用这种模型的宏观平均数为0.18,在使用对内平中,在SLLS-LS-LAL-LS-LS-S-C-C-C-LS-LAL 的年中,在上,在上,在上,在SLB-Seral-LV-LV-S-S-S-S-S-LB-S-S-S-S-S-S-S-S-S-S-S-S-S-S-L-L-SAL-SL-SL-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-SL-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-SL-SL-SL-SL-S-S-S-SL-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S