卵巢子宫内膜异症不孕患者异位内膜组织中FMO3、DMBT1的表达变化及其意义
wf(2017)
Abstract
目的:观察卵巢子宫内膜异位症(EMs)不孕患者异位内膜组织中的含黄素单氧化酶3(FMO3,在输卵管上皮组织高表达)、脑恶性肿瘤缺失基因(DMBT1,在子宫内膜组织高表达)mRNA 及蛋白,并探讨其意义。方法将卵巢 EMs 不孕患者的异位内膜组织40例份作为观察组,选取卵巢 EMs 已育患者的异位内膜组织50例份作为对照组,以正常卵巢组织35例份作为正常组。采用 real-time PCR 法检测三组 FMO3、DMBT1 mRNA,采用 Western blotting 法检测 FMO3、DMBT1蛋白。结果观察组 FMO3 mRNA 及蛋白相对表达量高于对照组和正常组(P 均<0.05);观察组、对照组 DMBT1 mRNA 及蛋白相对表达量高于正常组(P 均<0.05)。结论卵巢 EMs 不孕患者异位内膜组织中 FMO3呈高表达,异位内膜组织来源可能为输卵管;输卵管组织来源的异位内膜组织可能与卵巢EMs 患者不孕有关。
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