系统功能康复用于胫骨平台骨折内固定术后的效果观察
Reflexology and Rehabilitation Medicine(2020)
Abstract
目的 探讨胫骨平台骨折内固定术后采用系统功能康复的临床疗效.方法 回顾性分析2018年2月—2019年1月昆明医科大学第二附属医院收治的80例胫骨平台骨折内固定治疗患者资料,将其按照随机法分为甲、乙两组,每组40例,甲组患者进行传统功能康复,乙组患者进行系统性康复,对比各项数据.结果 乙组患者各项膝关节功能评分均优于甲组,差异有统计学意义(P<0.05).乙组患者的治疗有效率为95.0%,高于甲组的70.0%,差异有统计学意义(P<0.05).乙组患者的治疗优良率为97.5%,高于甲组的80.0%,差异有统计学意义(P<0.05).结论 胫骨平台骨折内固定术后进行系统性康复,可大幅度改善患者的膝关节功能,促进膝关节功能恢复,治疗效果显著,值得大力推广使用.
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