CIAD UMR 7533, Univ. Bourgogne Franche-Comté, UB, F-21000, Dijon, France.
INSERM, UMR1093-CAPS, Univ. Bourgogne Franche-Comté, UB, 21000, Dijon, France.
Sci Data. 2022 Jul 12;9(1):399. doi: 10.1038/s41597-022-01483-3.
Clinical gait analysis is a promising approach for quantifying gait deviations and assessing the impairments altering gait in patients with osteoarthritis. There is a lack of consensus on the identification of kinematic outcomes that could be used for the diagnosis and follow up in patients. The proposed dataset has been established on 80 asymptomatic participants and 106 patients with unilateral hip osteoarthritis before and 6 months after arthroplasty. All volunteers walked along a 6 meters straight line at their self-selected speed. Three dimensional trajectories of 35 reflective markers were simultaneously recorded and Plugin Gait Bones, angles, Center of Mass trajectories and ground reaction forces were computed. Gait video recordings, when available, anthropometric and demographic descriptions are also available. A minimum of 10 trials have been made available in the weka file format and C3D file to enhance the use of machine learning algorithms. We aim to share this dataset to facilitate the identification of new movement-related kinematic outcomes for improving the diagnosis and follow up in patients with hip OA.
临床步态分析是一种很有前途的方法,可以量化步态偏差,并评估改变骨关节炎患者步态的障碍。目前对于可以用于诊断和随访的运动学结果的识别尚未达成共识。该数据集是基于 80 名无症状参与者和 106 名单侧髋关节骨关节炎患者在关节置换术前和术后 6 个月的数据建立的。所有志愿者都以自己选择的速度沿着 6 米的直线行走。同时记录了 35 个反光标记的三维轨迹,并计算了插件步态骨骼、角度、质心轨迹和地面反作用力。当有步态视频记录时,还提供了人体测量和人口统计学描述。在 weka 文件格式和 C3D 文件中提供了至少 10 次试验,以增强机器学习算法的使用。我们旨在共享这个数据集,以促进识别新的与运动相关的运动学结果,从而改善髋关节骨关节炎患者的诊断和随访。