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早期综合护理干预对全麻腰椎手术后腹胀发生率的影响研究

China Higher Medical Education(2017)

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Abstract
目的:探讨早期综合护理干预对全麻腰椎手术后腹胀发生率的影响.方法:随机选取2016年1月到2016年11月我院收治的全麻腰椎手术患者550例,依据护理干预方法分为常规护理干预组(n=275)和综合护理干预组(n=275)两组,对两组患者的腹胀情况、肛门排气排便时间进行统计分析.结果:综合护理干预组患者的腹胀发生率16.7% (46/275)显著高于常规护理干预组50.2% (138/275) (P<0.05),肛门排气排便时间显著短于常规护理干预组(P<0.05).结论:早期综合护理干预较常规护理干预更能有效降低全麻腰椎手术后腹胀发生率.
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