优质护理在肿瘤PICC置管患者中应用维护以及依从性的研究
Journal of Clinic Nursing's Practicality(2016)
Abstract
目的 探讨优质护理在肿瘤PICC置管患者中的应用维护情况以及依从性的研究.方法 选取2014年9月~2016年3月在我院行PICC置管的肿瘤患者84例作为研究对象,将其随机分为两组,其中对照组患者采用常规护理模式,观察组患者采用综合优质护理干预措施,比较两组患者并发症发生情况、治疗依从性及患者满意度.结果 对照组中并发症发生率为23.81%(10/42),观察组总并发症发生率仅为2.38%(1/42),差异有统计学意义(P<0.05);对照组PICC管维护依从率为71.43%(30/42),观察组的依从率为92.86%(39/42),差异有统计学意义(P<0.05);在满意度研究中,对照组患者护理后满意度为66.67%(28/42),观察组患者对护理工作满意度为95.24%(40/42),差异有统计学意义(P<0.05).结论 对于肿瘤PICC置管患者,采用优质护理干预措施不仅能够更好的为PICC管提供维护,也能有效提高患者维护期间的依从性,保证了化疗的顺利进行,值得临床推广.
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