首页> 外文期刊>Investigative ophthalmology & visual science >Using unsupervised learning with independent component analysis to identify patterns of glaucomatous visual field defects.
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Using unsupervised learning with independent component analysis to identify patterns of glaucomatous visual field defects.

机译:使用无监督学习和独立成分分析来识别青光眼视野缺损的模式。

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PURPOSE: Clustering by unsupervised learning with machine learning classifiers was shown to segment clusters of patterns in standard automated perimetry (SAP) for glaucoma in previous publications. In this study, unsupervised learning by independent component analysis decomposed SAP field patterns into axes, and the information represented by these axes was evaluated. METHODS: SAP fields were used that were obtained with the Humphrey Visual Field Analyzer (Carl Zeiss Meditec, Dublin, CA) from 189 normal eyes and 156 eyes with glaucomatous optic neuropathy (GON) determined by masked review with stereoscopic optic disc photographs. The variational Bayesian independent component analysis mixture model (vB-ICA-mm) partitioned the SAP fields into the most informative number of clusters. Simultaneously, the model learned an optimal number of maximally independent axes for each cluster. RESULTS: The most informative number of clusters in the SAP set was two. vB-ICA-mm placed 68.6% of the eyes with GON in a cluster labeled G and 98.4% of the eyes with normal optic discs in a cluster labeled N. Cluster G optimally contained six axes. Post hoc analysis of patterns generated at -1 SD and +2 SD from the cluster G mean on the six axes revealed defects similar to those identified by experts as indicative of glaucoma. SAP fields associated with an axis showed increasing severity, as they were located farther in the positive direction from the cluster G mean. CONCLUSIONS: vB-ICA-mm represented the SAP fields with patterns that were meaningful for glaucoma experts. This process also captured severity in the patterns uncovered. These findings should validate vB-ICA-mm as a data-mining technique for new and unfamiliar complex tests.
机译:目的:在以前的出版物中,通过无监督学习与机器学习分类器的聚类已显示出在青光眼的标准自动视野检查(SAP)中分割模式的聚类。在这项研究中,通过独立成分分析的无监督学习将SAP场模式分解为轴,并评估了由这些轴表示的信息。方法:使用通过汉弗莱视野分析仪(Carl Zeiss Meditec,都柏林,加利福尼亚州)从189眼正常眼和156眼青光眼视神经病变(GON)中获得的SAP视场,并通过立体视盘照片的蒙版检查确定。贝叶斯独立分量分析混合模型(vB-ICA-mm)将SAP字段划分为信息量最大的群集。同时,该模型为每个群集学习了最大数量的最大独立轴。结果:SAP集中最具信息量的群集数量为两个。 vB-ICA-mm在标记为G的聚类中放置68.6%的GON眼,在标记为N的聚类中放置98.4%的普通视盘。聚类G最佳包含六个轴。事后分析了在六个轴上从簇G均值在-1 SD和+2 SD处产生的模式,显示出与专家鉴定为青光眼的缺陷相似的缺陷。与轴关联的SAP字段的严重性不断提高,因为它们位于距聚类G均值正方向更远的位置。结论:vB-ICA-mm用对青光眼专家有意义的模式代表了SAP领域。此过程还发现了所发现模式中的严重性。这些发现应验证vB-ICA-mm是用于新的和不熟悉的复杂测试的数据挖掘技术。

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