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光学相干断层扫描对视网膜神经纤维层进行正常分类,以预测未来的视野损失。

Retinal nerve fiber layer normative classification by optical coherence tomography for prediction of future visual field loss.

机构信息

Department of Ophthalmology, College of Medicine, University of Ulsan, Asan Medical Center, Seoul, Korea.

出版信息

Invest Ophthalmol Vis Sci. 2011 Apr 22;52(5):2634-9. doi: 10.1167/iovs.10-6246.

DOI:10.1167/iovs.10-6246
PMID:21282570
Abstract

PURPOSE

To evaluate the utility of baseline Stratus optical coherence tomography (OCT; Carl Zeiss Meditec, Dublin, CA) retinal nerve fiber layer (RNFL) normative classification in the prediction of future visual field (VF) loss.

METHODS

Eighty-eight eyes with suspected glaucoma with abnormal RNFL classification by Stratus OCT were followed up for more than 4 years. VF conversion in three consecutive tests was assessed after baseline Stratus OCT and VF examination. Baseline intraocular pressure, VF global indices, OCT RNFL thickness, and number of abnormal OCT sectors were compared between VF converters (CG) and nonconverters (NCG). Positive and negative predictive values (PPV, NPV) of OCT sectors with abnormal classifications were calculated with respect to VF conversion. Hazard ratios (HRs) of various risk factors, including abnormal OCT classification, with respect to future VF conversion, were determined by use of the Cox proportional hazard model.

RESULTS

Twenty-one (23.9%) eyes showed VF conversion during follow-up. Baseline OCT RNFL thickness was significantly lower and the number of abnormal OCT RNFL sectors significantly greater in CG than in NCG patients (P = 0.022 for both). The PPV and NPV of normative OCT RNFL classification was highest in the inferior quadrant (50%, 87.1%, respectively). Baseline VF mean deviation (MD) and the number of abnormal OCT RNFL sectors were both associated with future VF conversion (HR, 0.788 and 1.290, respectively).

CONCLUSIONS

In patients with suspected glaucoma, an abnormal RNFL classification in the inferior area of the optic disc or an elevated number of abnormal RNFL sectors, as determined by Stratus OCT, were both associated with future VF conversion.

摘要

目的

评估基线 Stratus 光学相干断层扫描(OCT;Carl Zeiss Meditec,都柏林,CA)视网膜神经纤维层(RNFL)正常分类在预测未来视野(VF)损失中的效用。

方法

对 88 只疑似青光眼且 Stratus OCT 显示 RNFL 分类异常的眼进行了超过 4 年的随访。在基线 Stratus OCT 和 VF 检查后,评估了连续 3 次测试中的 VF 转换情况。比较了 VF 转换者(CG)和非转换者(NCG)的基线眼内压、VF 全局指数、OCT RNFL 厚度和异常 OCT 象限数。计算了异常分类的 OCT 象限的阳性和阴性预测值(PPV、NPV)与 VF 转换的关系。使用 Cox 比例风险模型确定包括异常 OCT 分类在内的各种危险因素相对于未来 VF 转换的风险比(HR)。

结果

21 只(23.9%)眼在随访期间出现 VF 转换。CG 患者的基线 OCT RNFL 厚度明显较低,异常 OCT RNFL 象限数明显较多(P=0.022)。正常 OCT RNFL 分类的 PPV 和 NPV 在下方象限最高(分别为 50%和 87.1%)。基线 VF 平均偏差(MD)和异常 OCT RNFL 象限数均与未来 VF 转换相关(HR 分别为 0.788 和 1.290)。

结论

在疑似青光眼患者中,Stratus OCT 确定的视盘下方区域的 RNFL 异常分类或异常 RNFL 象限数增加均与未来 VF 转换相关。

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