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患侧甲状腺全切除联合峡部切除术式治疗甲状腺单侧结节

Yiayao Qianyan(2018)

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Abstract
目的:探究患侧甲状腺全切除联合峡部切除术式在治疗甲状腺单侧结节的效果.方法:选取2014年8月-2015年8月110例甲状腺单侧结节需要手术的患者,按照1:1的比例随机分配为实验组和对照组,每组55例.对照组采取甲状腺单侧结节切除传统的治疗方式,实验组采用患侧甲状腺全切除联合峡部切除术式的方式进行治疗,比较来两组患者疗效以及并发症情况.结果:在切口长度和切口出血量上,实验组优于对照组(P<0.05).在手术时间和切除结节大小上无明显差异,不具有统计学意义(P>0.05).术后复发率上,实验组优于对照组差异显著(P<0.05).结论:患侧甲状腺全切除联合峡部切除术比传统的单侧结节切除术治疗效果要好,是目前较为理想的治疗方式,具有实用价值,在甲状腺结节治疗中值得推广.
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