Department of Community Medicine and Rehabilitation, Physiotherapy, Umeå University, Umeå, Sweden.
Department of Physiotherapy, College of Health Sciences, University of Sharjah, Sharjah, United Arab Emirates.
J Neuroeng Rehabil. 2021 Apr 16;18(1):64. doi: 10.1186/s12984-021-00857-9.
Robotic-Assisted Gait Training (RAGT) may enable high-intensive and task-specific gait training post-stroke. The effect of RAGT on gait movement patterns has however not been comprehensively reviewed. The purpose of this review was to summarize the evidence for potentially superior effects of RAGT on biomechanical measures of gait post-stroke when compared with non-robotic gait training alone.
Nine databases were searched using database-specific search terms from their inception until January 2021. We included randomized controlled trials investigating the effects of RAGT (e.g., using exoskeletons or end-effectors) on spatiotemporal, kinematic and kinetic parameters among adults suffering from any stage of stroke. Screening, data extraction and judgement of risk of bias (using the Cochrane Risk of bias 2 tool) were performed by 2-3 independent reviewers. The Grading of Recommendations Assessment Development and Evaluation (GRADE) criteria were used to evaluate the certainty of evidence for the biomechanical gait measures of interest.
Thirteen studies including a total of 412 individuals (mean age: 52-69 years; 264 males) met eligibility criteria and were included. RAGT was employed either as monotherapy or in combination with other therapies in a subacute or chronic phase post-stroke. The included studies showed a high risk of bias (n = 6), some concerns (n = 6) or a low risk of bias (n = 1). Meta-analyses using a random-effects model for gait speed, cadence, step length (non-affected side) and spatial asymmetry revealed no significant differences between the RAGT and comparator groups, while stride length (mean difference [MD] 2.86 cm), step length (affected side; MD 2.67 cm) and temporal asymmetry calculated in ratio-values (MD 0.09) improved slightly more in the RAGT groups. There were serious weaknesses with almost all GRADE domains (risk of bias, consistency, directness, or precision of the findings) for the included outcome measures (spatiotemporal and kinematic gait parameters). Kinetic parameters were not reported at all.
There were few relevant studies and the review synthesis revealed a very low certainty in current evidence for employing RAGT to improve gait biomechanics post-stroke. Further high-quality, robust clinical trials on RAGT that complement clinical data with biomechanical data are thus warranted to disentangle the potential effects of such interventions on gait biomechanics post-stroke.
机器人辅助步态训练(RAGT)可能使中风后能够进行高强度和特定任务的步态训练。然而,RAGT 对步态运动模式的影响尚未得到全面综述。本综述的目的是总结 RAGT 对中风后步态生物力学测量指标的潜在优势,与单独使用非机器人步态训练相比。
使用特定数据库的搜索词,从各数据库建立起对其进行搜索,直到 2021 年 1 月。我们纳入了随机对照试验,这些试验研究了 RAGT(例如,使用外骨骼或末端效应器)对任何阶段中风成人的时空、运动学和动力学参数的影响。两名或三名独立评审员进行了筛选、数据提取和偏倚风险评估(使用 Cochrane 偏倚风险 2 工具)。使用推荐评估、制定与评价(GRADE)标准来评估对生物力学步态测量指标的证据确定性。
共有 13 项研究,总计 412 名参与者(平均年龄:52-69 岁;264 名男性)符合入选标准。RAGT 用于亚急性期或慢性期中风后,或单独使用,或与其他疗法联合使用。纳入的研究存在高偏倚风险(n=6)、存在一些关注(n=6)或低偏倚风险(n=1)。使用随机效应模型进行的 meta 分析,分析了步态速度、步频、非患侧步长和空间不对称的结果,发现 RAGT 组和对照组之间没有显著差异,而 RAGT 组的步长(均值差[MD]2.86cm)、患侧步长(MD2.67cm)和以比值计算的时间不对称性(MD0.09)略有改善。纳入的所有结局指标(时空和运动学步态参数)都存在几乎所有 GRADE 领域(偏倚风险、一致性、直接性或研究结果的准确性)的严重缺陷。动力学参数根本没有报告。
相关研究很少,综述综合结果表明,当前关于使用 RAGT 改善中风后步态生物力学的证据确定性非常低。因此,需要进一步开展高质量、稳健的 RAGT 临床试验,将生物力学数据与临床数据相结合,以厘清此类干预措施对中风后步态生物力学的潜在影响。