Das Deepjyoti, Chaturvedi Maitri, Arora Maneesh, Dikshit Sukanya, Padole Vishwal
Physiotherapy, Sardar Bhagwan Singh University, Dehradun, IND.
Incubation Center, Shriram Institute for Industrial Research, Gurugram, IND.
Cureus. 2024 Aug 30;16(8):e68232. doi: 10.7759/cureus.68232. eCollection 2024 Aug.
Background Gait analysis has evolved through many years of research. Many methods are used to analyze the gait of a subject. Recent times have shown a high demand for wearable sensor-based insoles integrated with smartphone-based devices used for gait analysis due to ease of use. This study utilized Curalgia Feet Sx Smart Insoles and its software toolset, Gait Analysis+, designed and manufactured in India making it an accessible and cost-effective option. The Curalgia Feet Sx Smart Insoles allow for a broad range of biofeedback-based rehabilitation and recovery training for several patients and have many applications, such as sports performance enhancement and neurological disorder rehab (e.g., brain stroke rehab). The system also significantly delays the onset of neurodegenerative illnesses by providing balance and proprioceptive training. The smart insole can help the athlete, the coach, and the sports medicine team get the on-field data in real-time, which will help them understand if any technical or biomechanical alterations are required. This may help in performance enhancement. This study aimed to determine the interrater reliability of the load distribution percentage parameter of the Curalgia Feet Sx Smart Insole for both feet while walking in a controlled setting. Methodology A total of 120 subjects were enrolled in the study. In total, 90 subjects were randomly selected using Research Randomizer which included male and female students and staff at Sardar Bhagwan Singh University. The subjects were asked to come to the research lab of the physiotherapy department wearing their sports shoes. Curalgia Feet Sx insoles were inserted into the shoe firmly to fit properly. Two assessors took two readings after the smart insole was connected to the smartphone-based application, GaitAnalysis+, via Bluetooth. The dynamic analysis option was selected, and each subject's analysis was done one after another with a desirable break in between. Each subject walked for three minutes at their normal speed after pressing "Start Analysis." At the three-minute mark, the subjects were asked to press "Stop Analysis" and the investigator downloaded the report on the smartphone. The data collected was compiled as the cumulative weight in kg (load distribution) borne and the % weight (load distribution %) borne by each foot for the duration of the walk. Statistical analysis was done using Karl Pearson's test and interclass correlation calculation. Results Assessor 1 and Assessor 2 collected readings for the left foot as "L" and the right foot as "R." Assessor 1 readings were L1-R1 for load distribution and L1% and R1% for load distribution %. Assessor 2 readings were L2-R2 for load distribution and L2% and R2% for load distribution %. The r value (correlation coefficient) was calculated using the load distribution. The mean value of L1 was 337.46 (SD=94.16). The mean L2 was 313.6 (SD=104.40). The R1 mean was 229.03 (SD=112.88), and the R2 mean was 233.011 (SD=79.84). The r was 0.7171 for the left foot and 0.7502 for the right foot, suggesting an excellent correlation. The ICC was calculated for load distribution %. The means of L1% was 55.94, L2% was 57.59, R1% was 44.06, and R2% was 42.41. The ICC was found to be 0.91 for both feet, suggesting high interrater reliability for the tested parameter. Conclusions The findings confirmed that the Curalgia Feet Sx Smart Insoles presented good interrater reliability for the load distribution % parameter.
步态分析经过多年研究不断发展。有多种方法用于分析受试者的步态。近年来,由于使用方便,对集成了基于智能手机设备的可穿戴式传感器鞋垫用于步态分析的需求很高。本研究使用了印度设计和制造的Curalgia Feet Sx智能鞋垫及其软件工具集Gait Analysis+,这使其成为一种易于获取且经济高效的选择。Curalgia Feet Sx智能鞋垫可为多名患者提供广泛的基于生物反馈的康复和恢复训练,并有许多应用,如提高运动表现和神经疾病康复(如中风康复)。该系统还通过提供平衡和本体感觉训练,显著延迟神经退行性疾病的发作。智能鞋垫可帮助运动员、教练和运动医学团队实时获取场上数据,这将有助于他们了解是否需要进行任何技术或生物力学调整。这可能有助于提高运动表现。本研究旨在确定在受控环境下行走时,Curalgia Feet Sx智能鞋垫双脚负荷分布百分比参数的评分者间信度。
共有120名受试者参与本研究。总共90名受试者通过Research Randomizer随机选择,包括萨达尔·巴格万·辛格大学的男女学生和工作人员。受试者被要求穿着运动鞋来到物理治疗系的研究实验室。将Curalgia Feet Sx鞋垫牢固地插入鞋中以确保合适的贴合度。在智能鞋垫通过蓝牙连接到基于智能手机的应用程序GaitAnalysis+后,两名评估者进行了两次读数。选择动态分析选项,每个受试者的分析依次进行,中间有适当的休息时间。按下“开始分析”后,每个受试者以正常速度行走三分钟。在三分钟标记处,要求受试者按下“停止分析”,研究人员在智能手机上下载报告。收集的数据被整理为行走期间每只脚承受的累积重量(负荷分布),以千克为单位,以及每只脚承受的重量百分比(负荷分布%)。使用卡尔·皮尔逊检验和组内相关计算进行统计分析。
评估者1和评估者2将左脚的读数记为“L”,右脚的读数记为“R”。评估者1的负荷分布读数为L1-R1,负荷分布%读数为L1%和R1%。评估者2的负荷分布读数为L2-R2,负荷分布%读数为L2%和R2%。使用负荷分布计算r值(相关系数)。L1的平均值为337.46(标准差=94.16)。L2的平均值为313.6(标准差=104.40)。R1的平均值为229.03(标准差=112.88),R2的平均值为233.011(标准差=79.84)。左脚的r值为0.7171,右脚的r值为0.7502,表明相关性良好。计算负荷分布%的组内相关系数(ICC)。L1%的平均值为55.94,L2%的平均值为57.59,R1%的平均值为44.06,R2%的平均值为42.41。发现双脚的ICC均为0.91,表明所测试参数的评分者间信度较高。
研究结果证实,Curalgia Feet Sx智能鞋垫在负荷分布%参数方面表现出良好的评分者间信度。