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早期子宫内膜癌术后近期盆底肌电生理特点和远期盆底功能障碍性疾病的分析

Chinese Journal for Clinicians(2019)

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Abstract
目的 探讨早期子宫内膜癌患者术后近期盆底肌电生理特点及远期盆底功能障碍性疾病的发生状况.方法 选取符合条件的连续的子宫内膜癌患者72例为研究对象,前瞻性地收集研究对象的一般资料.在术后1个月应用PHENIX U2盆底康复治疗仪进行盆底肌电生理检测,术后1年评估盆底功能障碍性疾病发生状况.结果 60.6% ~94.4%的患者术后盆底肌电生理指标存在异常.30例(43.5%)患者至少出现1种盆底功能障碍性疾病表现,其中以压力性尿失禁最为多见(33.3%).术后肌力异常者的盆底功能障碍性疾病发生率显著高于肌力正常者.结论 子宫内膜癌术后早期存在明显的盆底肌电生理异常,术后远期有较高的PFD风险,术后早期进行盆底肌电生理检查有助于筛选高危患者.
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