Department of Statistics, University of Missouri - Columbia , Columbia, Missouri, USA.
Center for Surgery and Public Health, Brigham and Women's Hospital , Boston, Massachusetts, USA.
J Biopharm Stat. 2020 Jul 3;30(4):674-688. doi: 10.1080/10543406.2020.1730872. Epub 2020 Mar 4.
Understanding deficits in motor control through the analysis of pedaling biomechanics plays a key role in the treatment of stroke patients. A thorough study of the impact of different exercise patterns and workloads on the change between pre- and post-treatment movement patterns in the patients is therefore of utmost importance to the clinicians. The objective of this study was to analyze the difference between pre- and post-treatment pedaling torques when the patients are subject to different exercise groups with varying workloads. The effects of affected vs unaffected side along with the covariates age and BMI have also been accounted for in this work. Two different three-way ANOVA-based approaches have been implemented here. In the first approach, a random projection-based ANOVA technique has been performed treating the pedaling torques as functional response, whereas the second approach utilizes distance measures to summarize the difference between pre- and post-treatment torques and perform nonparametric tests on it. Bayesian bootstrap has been used here to perform tests on the median distance. A group of stroke patients have been studied in the Cleveland Clinic categorizing them into different exercise groups and workload patterns. The data obtained have been analyzed with the aforementioned techniques, and the results have been reported here. These techniques turn out to be promising and will help clinicians recommend personalized treatment to stroke patients for optimal results.
通过分析踩踏生物力学来理解运动控制缺陷在治疗中风患者方面起着关键作用。因此,深入研究不同运动模式和工作量对患者治疗前后运动模式变化的影响对于临床医生来说至关重要。本研究的目的是分析当患者受到不同工作量的运动组时,治疗前后踩踏扭矩的差异。本工作还考虑了受影响侧与未受影响侧以及协变量年龄和 BMI 的影响。这里实施了两种不同的基于三向方差分析的方法。在第一种方法中,采用基于随机投影的方差分析技术,将踩踏扭矩视为功能响应,而第二种方法则利用距离度量来总结治疗前后扭矩之间的差异,并对其进行非参数检验。这里使用贝叶斯引导来对中值距离进行检验。在克利夫兰诊所对一组中风患者进行了研究,将他们分为不同的运动组和工作量模式。使用上述技术对所获得的数据进行了分析,并报告了结果。这些技术很有前途,将帮助临床医生为中风患者推荐个性化治疗,以获得最佳效果。