Bowd Christopher, Medeiros Felipe A, Zhang Zuohua, Zangwill Linda M, Hao Jiucang, Lee Te-Won, Sejnowski Terrence J, Weinreb Robert N, Goldbaum Michael H
Hamilton Glaucoma Center, University of California, San Diego, California, USA.
Invest Ophthalmol Vis Sci. 2005 Apr;46(4):1322-9. doi: 10.1167/iovs.04-1122.
To classify healthy and glaucomatous eyes using relevance vector machine (RVM) and support vector machine (SVM) learning classifiers trained on retinal nerve fiber layer (RNFL) thickness measurements obtained by scanning laser polarimetry (SLP).
Seventy-two eyes of 72 healthy control subjects (average age = 64.3 +/- 8.8 years, visual field mean deviation = -0.71 +/- 1.2 dB) and 92 eyes of 92 patients with glaucoma (average age = 66.9 +/- 8.9 years, visual field mean deviation = -5.32 +/- 4.0 dB) were imaged with SLP with variable corneal compensation (GDx VCC; Laser Diagnostic Technologies, San Diego, CA). RVM and SVM learning classifiers were trained and tested on SLP-determined RNFL thickness measurements from 14 standard parameters and 64 sectors (approximately 5.6 degrees each) obtained in the circumpapillary area under the instrument-defined measurement ellipse (total 78 parameters). Ten-fold cross-validation was used to train and test RVM and SVM classifiers on unique subsets of the full 164-eye data set and areas under the receiver operating characteristic (AUROC) curve for the classification of eyes in the test set were generated. AUROC curve results from RVM and SVM were compared to those for 14 SLP software-generated global and regional RNFL thickness parameters. Also reported was the AUROC curve for the GDx VCC software-generated nerve fiber indicator (NFI).
The AUROC curves for RVM and SVM were 0.90 and 0.91, respectively, and increased to 0.93 and 0.94 when the training sets were optimized with sequential forward and backward selection (resulting in reduced dimensional data sets). AUROC curves for optimized RVM and SVM were significantly larger than those for all individual SLP parameters. The AUROC curve for the NFI was 0.87.
Results from RVM and SVM trained on SLP RNFL thickness measurements are similar and provide accurate classification of glaucomatous and healthy eyes. RVM may be preferable to SVM, because it provides a Bayesian-derived probability of glaucoma as an output. These results suggest that these machine learning classifiers show good potential for glaucoma diagnosis.
使用基于扫描激光偏振仪(SLP)获得的视网膜神经纤维层(RNFL)厚度测量值训练的相关向量机(RVM)和支持向量机(SVM)学习分类器,对健康眼和青光眼眼进行分类。
对72名健康对照受试者的72只眼(平均年龄 = 64.3 +/- 8.8岁,视野平均偏差 = -0.71 +/- 1.2 dB)和92名青光眼患者的92只眼(平均年龄 = 66.9 +/- 8.9岁,视野平均偏差 = -5.32 +/- 4.0 dB)使用具有可变角膜补偿功能的SLP(GDx VCC;Laser Diagnostic Technologies,圣地亚哥,加利福尼亚州)进行成像。RVM和SVM学习分类器在仪器定义的测量椭圆下的视乳头周围区域获得的14个标准参数和64个扇区(每个扇区约5.6度)的SLP确定的RNFL厚度测量值上进行训练和测试(共78个参数)。使用十折交叉验证在完整的164只眼数据集的唯一子集上训练和测试RVM和SVM分类器,并生成测试集中眼睛分类的接收器操作特征(AUROC)曲线下的面积。将RVM和SVM的AUROC曲线结果与14个SLP软件生成的全局和区域RNFL厚度参数的结果进行比较。还报告了GDx VCC软件生成的神经纤维指标(NFI)的AUROC曲线。
RVM和SVM的AUROC曲线分别为0.90和0.91,当使用顺序向前和向后选择优化训练集时(导致数据集维度降低),分别增加到0.93和0.94。优化后的RVM和SVM的AUROC曲线显著大于所有单个SLP参数的曲线。NFI的AUROC曲线为0.87。
基于SLP RNFL厚度测量值训练的RVM和SVM的结果相似,能够准确分类青光眼眼和健康眼。RVM可能比SVM更可取,因为它提供了贝叶斯推导的青光眼概率作为输出。这些结果表明,这些机器学习分类器在青光眼诊断方面具有良好的潜力。