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中心静脉置管两种体外固定方式在普外科患者中的比较研究

Today Nurse(2018)

Cited 4|Views0
Abstract
目的 探讨中心静脉置管两种体外固定方式在普外科创伤、恶性肿瘤和慢性消耗性疾病患者中的应用效果.方法 将本院普外科2017年3月-12月收治的100例CVC置管患者按随机数表法分为实验组和对照组50例,对照组采用外科缝线固定CVC导管,实验组用思乐扣固定CVC导管.比较在普外科置CVC患者中选择缝线固定与思乐扣固定在导管滑脱、局部皮肤炎性反应及患者舒适度方面的差异.结果 实验组患者CVC滑脱率和穿刺点局部皮肤炎性反应发生率均低于对照组,两组比较差异有统计学意义(P<0.05);实验组患者护理舒适度高于对照组,差异有统计学意义(P<0.05).结论 采用思乐扣固定装置固定CVC,滑脱率低,能降低患者置管期间穿刺点周围皮肤炎性反应,提高患者舒适度.
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