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Combining Structural and Functional Measurements to Improve Detection of Glaucoma Progression using Bayesian Hierarchical Models

机译:使用贝叶斯分层模型结合结构和功能测量以改善对青光眼进展的检测

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Purpose.: To present and evaluate a new methodology for combining longitudinal information from structural and functional tests to improve detection of glaucoma progression and estimation of rates of change. Methods.: This observational cohort study included 434 eyes of 257 participants observed for an average of 4.2 ?± 1.1 years and recruited from the Diagnostic Innovations in Glaucoma Study (DIGS). The subjects were examined annually with standard automated perimetry, optic disc stereophotographs, and scanning laser polarimetry with enhanced corneal compensation. Rates of change over time were measured using the visual field index (VFI) and average retinal nerve fiber layer thickness (TSNIT average). A Bayesian hierarchical model was built to integrate information from the longitudinal measures and classify individual eyes as progressing or not. Estimates of sensitivity and specificity of the Bayesian method were compared with those obtained by the conventional approach of ordinary least-squares (OLS) regression. Results.: The Bayesian method identified a significantly higher proportion of the 405 glaucomatous and suspect eyes as having progressed when compared with the OLS method (22.7% vs. 12.8%; P 0.001), while having the same specificity of 100% in 29 healthy eyes. In addition, the Bayesian method identified a significantly higher proportion of eyes with progression by optic disc stereophotographs compared with the OLS method (74% vs. 37%; P = 0.001). Conclusions.: A Bayesian hierarchical modeling approach for combining functional and structural tests performed significantly better than the OLS method for detection of glaucoma progression. (ClinicalTrials.gov number, NCT00221897.)
机译:目的:介绍和评估一种新的方法,该方法结合了来自结构和功能测试的纵向信息,以改善对青光眼进展的检测和变化率的估计。方法:这项观察性队列研究纳入了257名参与者的434眼,平均观察了4.2±1.1年,并从青光眼诊断创新研究(DIGS)中招募。每年用标准自动视野检查法,视盘立体照相法和增强角膜补偿的扫描激光偏振法对受试者进行检查。使用视野指数(VFI)和平均视网膜神经纤维层厚度(TSNIT平均值)测量随时间的变化率。建立了贝叶斯分层模型,以整合来自纵向度量的信息,并将单个眼睛分类为进步眼睛还是不进步眼睛。贝叶斯方法的敏感性和特异性的估计与通过普通最小二乘(OLS)回归的传统方法获得的估计值进行了比较。结果:与OLS方法相比,贝叶斯方法确定了405眼青光眼和可疑眼中有进展的比例显着更高(22.7%vs. 12.8%; P <0.001),而在29中具有100%的相同特异性健康的眼睛。此外,与OLS方法相比,贝叶斯方法通过视盘立体摄影术确定的眼睛进展程度明显更高(74%比37%; P = 0.001)。结论:结合功能和结构测试的贝叶斯分层建模方法的性能明显优于用于检测青光眼进展的OLS方法。 (ClinicalTrials.gov编号,NCT00221897。)

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