探讨轮廓化鼻内镜手术对伴息肉难治性鼻窦炎的临床疗效
China Practical Medical(2020)
Abstract
目的 对伴息肉难治性鼻窦炎(DTRS)进行轮廓化鼻内镜手术(RSS)治疗,观察其治疗效果.方法 35例伴息肉难治性鼻窦炎患者为研究对象,比较患者内镜Lund-Kennedy评分、整体症状视觉模拟评分法(VAS)评分和嗅觉障碍VAS评分,并观察治疗效果.结果 治疗后,患者的内镜Lund-Kennedy评分、整体症状VAS评分和嗅觉障碍VAS评分分别为(6.54±2.45)、(1.92±1.68)、(2.44±1.22)分,均低于治疗前的(13.63±3.89)、(6.39±1.61)、(6.38±1.60)分,差异均有统计学意义(P<0.05).19例(54.29%)病情完全控制,16例(45.71%)病情部分控制,0例(0)病情未控制.结论 采用轮廓化鼻内镜手术对伴息肉难治性鼻窦炎患者进行治疗,疗效显著,可以显著改善患者的嗅觉功能和鼻部不适症状.
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