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首页> 外文期刊>Investigative ophthalmology & visual science >Improving Glaucoma Detection Using Spatially Correspondent Clusters of Damage and by Combining Standard Automated Perimetry and Optical Coherence Tomography
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Improving Glaucoma Detection Using Spatially Correspondent Clusters of Damage and by Combining Standard Automated Perimetry and Optical Coherence Tomography

机译:使用损伤的空间对应簇并结合标准自动视野和光学相干断层扫描技术改善青光眼的检测

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Purpose.: To improve the detection of glaucoma, techniques for assessing local patterns of damage and for combining structure and function were developed. Methods.: Standard automated perimetry (SAP) and frequency-domain optical coherence tomography (fdOCT) data, consisting of macular retinal ganglion cell plus inner plexiform layer (mRGCPL) as well as macular and optic disc retinal nerve fiber layer (mRNFL and dRNFL) thicknesses, were collected from 52 eyes of 52 healthy controls and 156 eyes of 96 glaucoma suspects and patients. In addition to generating simple global metrics, SAP and fdOCT data were searched for contiguous clusters of abnormal points and converted to a continuous metric (pcc ). The pcc metric, along with simpler methods, was used to combine the information from the SAP and fdOCT. The performance of different methods was assessed using the area under receiver operator characteristic curves (AROC scores). Results.: The pcc metric performed better than simple global measures for both the fdOCT and SAP. The best combined structure-function metric (mRGCPL&SAP pcc , AROC = 0.868 ?± 0.032) was better (statistically significant) than the best metrics for independent measures of structure and function. When SAP was used as part of the inclusion and exclusion criteria, AROC scores increased for all metrics, including the best combined structure-function metric (AROC = 0.975 ?± 0.014). Conclusions.: A combined structure-function metric improved the detection of glaucomatous eyes. Overall, the primary sources of value-added for glaucoma detection stem from the continuous cluster search (the pcc ), the mRGCPL data, and the combination of structure and function.
机译:目的:为了改善对青光眼的检测,开发了评估局部损伤模式以及将结构和功能结合起来的技术。方法:标准自动视野检查(SAP)和频域光学相干断层扫描(fdOCT)数据,包括黄斑视网膜神经节细胞加内丛状层(mRGCPL)以及黄斑和视盘视网膜神经纤维层(mRNFL和dRNFL)从52名健康对照者的52只眼和96名青光眼可疑者和患者的156只眼中收集厚度。除了生成简单的全局指标外,还搜索SAP和fdOCT数据以查找异常点的连续簇,并将其转换为连续指标(pcc)。 pcc度量标准和更简单的方法用于合并来自SAP和fdOCT的信息。使用接收器操作员特征曲线(AROC分数)下的面积评估不同方法的性能。结果:对于fdOCT和SAP,pcc指标的性能优于简单的整体指标。最佳组合结构功能度量(mRGCPL&SAP pcc,AROC = 0.868±0.032)比独立度量结构和功能的最佳度量更好(具有统计意义)。当将SAP用作纳入和排除标准的一部分时,所有指标(包括最佳组合结构函数指标)的AROC得分均会增加(AROC = 0.975±0.014)。结论:组合的结构功能度量改进了青光眼的检测。总体而言,青光眼检测的增值主要来自持续的聚类搜索(pcc),mRGCPL数据以及结构和功能的组合。

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