Patterns of glaucomatous visual field loss in sita fields automatically identified using independent component analysis.

Michael H Goldbaum, Gil-Jin Jang, Chris Bowd, Jiucang Hao, Linda M Zangwill, Jeffrey Liebmann, Christopher Girkin, Tzyy-Ping Jung, Robert N Weinreb, Pamela A Sample
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Abstract

Purpose: To determine if the patterns uncovered with variational Bayesian-independent component analysis-mixture model (VIM) applied to a large set of normal and glaucomatous fields obtained with the Swedish Interactive Thresholding Algorithm (SITA) are distinct, recognizable, and useful for modeling the severity of the field loss.

Methods: SITA fields were obtained with the Humphrey Visual Field Analyzer (Carl Zeiss Meditec, Inc, Dublin, California) on 1,146 normal eyes and 939 glaucoma eyes from subjects followed by the Diagnostic Innovations in Glaucoma Study and the African Descent and Glaucoma Evaluation Study. VIM modifies independent component analysis (ICA) to develop separate sets of ICA axes in the cluster of normal fields and the 2 clusters of abnormal fields. Of 360 models, the model with the best separation of normal and glaucomatous fields was chosen for creating the maximally independent axes. Grayscale displays of fields generated by VIM on each axis were compared. SITA fields most closely associated with each axis and displayed in grayscale were evaluated for consistency of pattern at all severities.

Results: The best VIM model had 3 clusters. Cluster 1 (1,193) was mostly normal (1,089, 95% specificity) and had 2 axes. Cluster 2 (596) contained mildly abnormal fields (513) and 2 axes; cluster 3 (323) held mostly moderately to severely abnormal fields (322) and 5 axes. Sensitivity for clusters 2 and 3 combined was 88.9%. The VIM-generated field patterns differed from each other and resembled glaucomatous defects (eg, nasal step, arcuate, temporal wedge). SITA fields assigned to an axis resembled each other and the VIM-generated patterns for that axis. Pattern severity increased in the positive direction of each axis by expansion or deepening of the axis pattern.

Conclusions: VIM worked well on SITA fields, separating them into distinctly different yet recognizable patterns of glaucomatous field defects. The axis and pattern properties make VIM a good candidate as a preliminary process for detecting progression.

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使用独立分量分析自动识别青光眼视野丧失模式。
目的:确定将变分贝叶斯独立分量分析混合模型(VIM)应用于瑞典交互式阈值算法(SITA)获得的大量正常和青光眼视场的模式是否明显、可识别,并有助于模拟视场损失的严重程度。方法:使用Humphrey视野分析仪(Carl Zeiss Meditec, Inc ., Dublin, California)获得1146只正常眼睛和939只青光眼的SITA视野,随后进行青光眼诊断创新研究和非洲裔青光眼评估研究。VIM对独立分量分析(ICA)进行了改进,在正常场集群和2个异常场集群中建立了独立的ICA轴集。在360个模型中,选择正常视场和青光眼视场分离最好的模型来创建最大程度独立的轴。比较了VIM在各轴上产生的场的灰度显示。与每个轴最密切相关并以灰度显示的SITA字段在所有严重程度上评估模式的一致性。结果:最佳VIM模型有3个聚类。集群1(1193例)大部分正常(1089例,95%特异性),有2个轴。集群2(596)包含轻度异常场(513)和2轴;集群3(323)大多有中度到重度异常场(322)和5个轴。聚类2和聚类3的敏感性为88.9%。vim产生的视野模式各不相同,类似青光眼缺陷(如鼻阶、弓形、颞楔)。分配给一个轴的SITA字段彼此相似,并且vim为该轴生成的模式相似。随着轴型的扩大或加深,各轴正向格局严重程度增加。结论:VIM在SITA视野上效果良好,可将其划分为明显不同但可识别的青光眼视野缺损模式。轴和模式的性质使VIM作为一个很好的候选的初步过程检测进程。
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