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后腹腔镜与输尿管镜技术对感染性输尿管上段结石取石碎石的比较

Modern Medical Imagelogy(2018)

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Abstract
目的:对比分析后腹腔镜与输尿管镜技术对感染性输尿管上段结石取石碎石的临床效果.方法:选取我院收治的120例感染性输尿管上段结石患者进行研究,以随机数字表法将患者分为两组,输尿管镜组采用输尿管镜技术治疗,后腹腔镜组患者采用后腹腔镜手术治疗,对比两组治疗效果.结果:输尿管镜组患者结石直径、手术时间、住院时间均明显小于后腹腔镜组(p<0.05);但腹腔镜组患者结石清除率及术后并发症发生率均明显优于输尿管镜组(p<0.05).结论:采用后腹腔镜切开取石术治疗感染性输尿管上段结石患者具有结石清除率高、术后并发症少等优点,对于感染性输尿管上段结石患者较为适用.
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