PSH模式用于腺样体、扁桃体切除患儿的临床价值
Journal of Qiannan Medical College for Nationalities(2021)
Abstract
目的:明确围术期患者之家(PSH)模式用于腺样体、扁桃体切除患儿的临床价值.方法:将行腺样体、扁桃体切除术的97例患儿按照随机数字表法分为实验组(n=49,行PSH护理)和对照组(n=48,行常规护理),比较两组患儿麻醉配合程度及术后临床资料、焦虑及疼痛评分、并发症及不良反应之间的差异,评价两组患儿家长的焦虑、依从性及护理满意度.结果:实验组患儿术后1晚、麻醉诱导时及术后12 h YPAS及NRS评分显著低于对照组(P<0.05);实验组患儿家长S-AI评分低于对照组、而Morisky评分及护理满意度显著高于对照组(P<0.05);实验组患者ICC评分低于对照组,而下地时间及住院时间均显著短于对照组(P<0.05);实验组患儿术后并发症及不良反应发生率显著低于对照组(P<0.05).结论:PSH模式能有效降低患儿及家长在腺样体、扁桃体切除前的焦虑程度,从而达到提升干预配合程度的作用,利于促进术后患儿的恢复,提升护理满意度.
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