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玻璃体切除术后患者的视功能评价

Chinese Journal of Strabismus & Pediatric Ophthalmology(2021)

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Abstract
目的 评价玻璃体切除术后视力正常患者与正常对照者之间的视功能差异.方法 选取在我院行玻璃体切除术后ETDRS视力正常的孔源性视网膜脱离患者作为研究组.对照组为年龄及ETDRS视力评分匹配后的正常志愿者.两组均行眼科对比敏感度、微视野检查以及NEI VFQ-25量表测评,分析两组之间的差异.结果 研究组在高空间频率(12cpd与18cpd)对比敏感度低于对照组,差异有统计学意义(Z =-3.03,P<0.01;Z=-2.89,P<0.01).研究组视网膜平均灵敏度低于对照组,差异有统计学意义(t = 7.43,P<0.01).NEI VFQ-25量表评价结果显示两组视觉生存质量存在统计学差异.结论 经玻璃体切除手术治疗后视力正常的患者仍需对视功能进行全面的评价.
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