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Learning From Data: Recognizing Glaucomatous Defect Patterns and Detecting Progression From Visual Field Measurements

机译:从数据中学习:识别青光眼的缺陷模式并从视野测量中检测进展

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摘要

A hierarchical approach to learn from visual field data was adopted to identify glaucomatous visual field defect patterns and to detect glaucomatous progression. The analysis pipeline included three stages, namely, clustering, glaucoma boundary limit detection, and glaucoma progression detection testing. First, cross-sectional visual field tests collected from each subject were clustered using a mixture of Gaussians and model parameters were estimated using expectation maximization. The visual field clusters were further estimated to recognize glaucomatous visual field defect patterns by decomposing each cluster into several axes. The glaucoma visual field defect patterns along each axis then were identified. To derive a definition of progression, the longitudinal visual fields of stable glaucoma eyes on the abnormal cluster axes were projected and the slope was approximated using linear regression (LR) to determine the confidence limit of each axis. For glaucoma progression detection, the longitudinal visual fields of each eye on the abnormal cluster axes were projected and the slope was approximated by LR. Progression was assigned if the progression rate was greater than the boundary limit of the stable eyes; otherwise, stability was assumed. The proposed method was compared to a recently developed progression detection method and to clinically available glaucoma progression detection software. The clinical accuracy of the proposed pipeline was as good as or better than the currently available methods.
机译:采用了一种从视野数据中学习的分层方法来识别青光眼视野缺损模式并检测青光眼进展。分析流程包括三个阶段,即聚类,青光眼边界极限检测和青光眼进展检测测试。首先,使用高斯混合算法对从每个受试者收集的横截面视野测试进行聚类,并使用期望最大化来估计模型参数。通过将每个群集分解为几个轴,可以进一步估计视野群集以识别青光眼视野缺损模式。然后确定沿每个轴的青光眼视野缺损模式。为了得出进展的定义,投影了稳定的青光眼在异常簇轴上的纵向视野,并使用线性回归(LR)估算了斜率,以确定每个轴的置信度极限。对于青光眼进展检测,投影每只眼睛在异常簇轴上的纵向视野,并通过LR近似斜率。如果进展速度大于稳定眼的边界极限,则指定进展。否则,假定稳定性。将提出的方法与最近开发的进展检测方法以及临床上可用的青光眼进展检测软件进行了比较。拟议中的管道的临床准确性与目前可用的方法一样好或更好。

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