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Recognizing patterns of visual field loss using unsupervised machine learning

机译:使用无监督机器学习识别视野损失的模式

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摘要

Glaucoma is a potentially blinding optic neuropathy that results in a decrease in visual sensitivity. Visual field abnormalities (decreased visual sensitivity on psychophysical tests) are the primary means of glaucoma diagnosis. One form of visual field testing is Frequency Doubling Technology (FDT) that tests sensitivity at 52 points within the visual field. Like other psychophysical tests used in clinical practice, FDT results yield specific patterns of defect indicative of the disease. We used Gaussian Mixture Model with Expectation Maximization (GEM), (EM is used to estimate the model parameters) to automatically separate FDT data into clusters of normal and abnormal eyes. Principal component analysis (PCA) was used to decompose each cluster into different axes (patterns). FDT measurements were obtained from 1,190 eyes with normal FDT results and 786 eyes with abnormal (i.e., glaucomatous) FDT results, recruited from a university-based, longitudinal, multi-center, clinical study on glaucoma. The GEM input was the 52-point FDT threshold sensitivities for all eyes. The optimal GEM model separated the FDT fields into 3 clusters. Cluster 1 contained 94% normal fields (94% specificity) and clusters 2 and 3 combined, contained 77% abnormal fields (77% sensitivity). For clusters 1, 2 and 3 the optimal number of PCA-identified axes were 2, 2 and 5, respectively. GEM with PCA successfully separated FDT fields from healthy and glaucoma eyes and identified familiar glaucomatous patterns of loss.
机译:青光眼是一种潜在的致盲性视神经病变,会导致视觉敏感性降低。视野异常(心理物理检查中视敏度降低)是青光眼诊断的主要手段。视野测试的一种形式是倍频技术(FDT),它可以在视野内的52个点上测试灵敏度。像临床实践中使用的其他心理物理测试一样,FDT结果产生指示疾病的特定缺陷模式。我们使用具有期望最大化(GEM)的高斯混合模型(EM用于估计模型参数)将FDT数据自动分为正常和异常眼睛的群集。主成分分析(PCA)用于将每个聚类分解为不同的轴(模式)。 FDT测量是从1190眼FDT结果正常的眼睛和786眼FDT结果异常(即青光眼)的眼睛中获得的,这些结果来自于大学基于青光眼的纵向多中心临床研究。 GEM输入是所有眼睛的52点FDT阈值敏感度。最佳GEM模型将FDT字段分为3个簇。聚类1包含94%的正常视野(94%的特异性),聚类2和3合并在一起,包含77%的异常视野(77%的敏感性)。对于群集1、2和3,PCA识别的最佳轴数分别为2、2和5。带有PCA的GEM成功地将FDT视野与健康和青光眼分开,并确定了常见的青光眼损失模式。

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