Improved prediction of rates of visual field loss in glaucoma using empirical Bayes estimates of slopes of change

利用经验贝叶斯估计法对变化斜率进行估计,可提高青光眼视野丧失速度的预测准确性。

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Abstract

PURPOSE: To describe and test a new methodology for estimation of rates of progressive visual field loss in glaucoma. METHODS: This observational cohort study enrolled 643 eyes of 368 patients recruited from the Diagnostic Innovations in Glaucoma Study, followed for an average of 6.5±2.0 years. The visual field index was used to evaluate degree of visual field loss in standard automated perimetry. Growth mixture models were used to evaluate visual field index changes over time. Empirical Bayes estimates of best linear unbiased predictions (BLUPs) were used to obtain slopes of change based on the first 5 visual fields for each eye. These slopes were then used to predict future observations. The same procedure was done for ordinary least squares (OLS) estimates. The mean square error of the predictions was used to compare the predictive performance of the different methods. RESULTS: The growth mixture model successfully identified subpopulations of nonprogressors, slow, moderate, and fast progressors. The mean square error was significantly higher for OLS compared with the BLUP method (32.3 vs 13.9, respectively; P<0.001), indicating a better performance of the BLUP method to predict future observations. The benefit of BLUP predictions was especially evident in eyes with moderate and fast rates of change. CONCLUSIONS: Empirical Bayes estimates of rates of change performed significantly better than the commonly used technique of OLS regression in predicting future observations. Use of BLUP estimates should be considered when evaluating rates of functional change in glaucoma and predicting future impairment from the disease.

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