Association between gait video information and general cardiovascular diseases: a prospective cross-sectional study

J. Zeng, Shen Lin, Zhigang Li, Runchen Sun, Xuexin Yu, Xiaocong Lian, Yan Zhao, Xiangyang Ji, Zhe Zheng
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Abstract

Cardiovascular disease (CVD) may not be detected in time with conventional clinical approaches. Abnormal gait patterns have been associated with pathological conditions and can be monitored continuously by gait video. We aim to test the association between non-contact, video-based gait information and general CVD status. Individuals undergoing confirmatory CVD evaluation were included in a prospective, cross-sectional study. Gait videos were recorded with a Kinect camera. Gait features were extracted from gait videos to correlate with the composite and individual components of CVD, including coronary artery disease, peripheral artery disease, heart failure, and cerebrovascular events. The incremental value of incorporating gait information with traditional CVD clinical variables was also evaluated. Three hundred fifty-two participants were included in the final analysis [mean (standard deviation) age, 59.4 (9.8) years; 25.3% were female]. Compared with the baseline clinical variable model [area under the receiver operating curve (AUC) 0.717, (0.690–0.743)], the gait feature model demonstrated statistically better performance [AUC 0.753, (0.726–0.780)] in predicting the composite CVD, with further incremental value when incorporated with the clinical variables [AUC 0.764, (0.741–0.786)]. Notably, gait features exhibited varied association with different CVD component conditions, especially for peripheral artery disease [AUC 0.752, (0.728–0.775)] and heart failure [0.733, (0.707–0.758)]. Additional analyses also revealed association of gait information with CVD risk factors and the established CVD risk score. We demonstrated the association and predictive value of non-contact, video-based gait information for general CVD status. Further studies for gait video-based daily living CVD monitoring are promising.
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步态视频信息与一般心血管疾病的关系:一项前瞻性横断面研究
传统的临床方法可能无法及时发现心血管疾病(CVD)。异常步态与病理状况有关,可以通过步态视频进行连续监测。我们旨在测试非接触式视频步态信息与一般心血管疾病状态之间的关联。 一项前瞻性横断面研究纳入了接受心血管疾病确诊评估的个体。步态视频由 Kinect 摄像机录制。从步态视频中提取步态特征,与心血管疾病的综合和单个组成部分相关联,包括冠状动脉疾病、外周动脉疾病、心力衰竭和脑血管事件。此外,还评估了将步态信息与传统心血管疾病临床变量相结合的增量价值。最终分析纳入了 352 名参与者[平均(标准差)年龄为 59.4 (9.8)岁;25.3% 为女性]。与基线临床变量模型[接收器工作曲线下面积(AUC)0.717,(0.690-0.743)]相比,步态特征模型在预测综合心血管疾病方面表现出了更好的统计性能[AUC 0.753,(0.726-0.780)],当与临床变量结合时[AUC 0.764,(0.741-0.786)],步态特征模型的价值进一步增加。值得注意的是,步态特征与不同的心血管疾病构成条件有不同的关联,尤其是外周动脉疾病[AUC 0.752,(0.728-0.775)]和心力衰竭[0.733,(0.707-0.758)]。其他分析还显示了步态信息与心血管疾病风险因素和既定心血管疾病风险评分之间的关联。 我们证明了非接触式视频步态信息与一般心血管疾病状况的关联性和预测价值。基于步态视频的日常生活心血管疾病监测的进一步研究前景广阔。
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