Department of Clinical Sciences, Ophthalmology, Malmö University Hospital, Lund University, Malmoe, Sweden.
Acta Ophthalmol. 2010 Feb;88(1):44-52. doi: 10.1111/j.1755-3768.2009.01784.x. Epub 2010 Jan 8.
To compare the performance of two machine learning classifiers (MLCs), artificial neural networks (ANNs) and support vector machines (SVMs), with input based on retinal nerve fibre layer thickness (RNFLT) measurements by optical coherence tomography (OCT), on the diagnosis of glaucoma, and to assess the effects of different input parameters.
We analysed Stratus OCT data from 90 healthy persons and 62 glaucoma patients. Performance of MLCs was compared using conventional OCT RNFLT parameters plus novel parameters such as minimum RNFLT values, 10th and 90th percentiles of measured RNFLT, and transformations of A-scan measurements. For each input parameter and MLC, the area under the receiver operating characteristic curve (AROC) was calculated.
There were no statistically significant differences between ANNs and SVMs. The best AROCs for both ANN (0.982, 95%CI: 0.966-0.999) and SVM (0.989, 95% CI: 0.979-1.0) were based on input of transformed A-scan measurements. Our SVM trained on this input performed better than ANNs or SVMs trained on any of the single RNFLT parameters (p < or = 0.038). The performance of ANNs and SVMs trained on minimum thickness values and the 10th and 90th percentiles were at least as good as ANNs and SVMs with input based on the conventional RNFLT parameters.
No differences between ANN and SVM were observed in this study. Both MLCs performed very well, with similar diagnostic performance. Input parameters have a larger impact on diagnostic performance than the type of machine classifier. Our results suggest that parameters based on transformed A-scan thickness measurements of the RNFL processed by machine classifiers can improve OCT-based glaucoma diagnosis.
比较两种机器学习分类器(MLC),人工神经网络(ANN)和支持向量机(SVM)的性能,它们的输入基于光学相干断层扫描(OCT)测量的视网膜神经纤维层厚度(RNFLT),用于诊断青光眼,并评估不同输入参数的影响。
我们分析了 90 名健康人和 62 名青光眼患者的 Stratus OCT 数据。使用传统的 OCT RNFLT 参数以及新颖的参数(例如最小 RNFLT 值,测量的 RNFLT 的第 10 和第 90 百分位数,以及 A 扫描测量值的转换)比较 MLC 的性能。对于每个输入参数和 MLC,计算了接收者操作特征曲线(AROC)下的面积。
ANN 和 SVM 之间没有统计学上的显着差异。ANN(0.982,95%CI:0.966-0.999)和 SVM(0.989,95%CI:0.979-1.0)的最佳 AROC 均基于转换后的 A 扫描测量值的输入。基于此输入训练的我们的 SVM 性能优于基于任何单个 RNFLT 参数(p <或= 0.038)训练的 ANN 或 SVM。基于最小厚度值和第 10 和第 90 百分位数训练的 ANN 和 SVM 的性能至少与基于传统 RNFLT 参数的 ANN 和 SVM 的性能一样好。
在这项研究中,我们没有观察到 ANN 和 SVM 之间的差异。这两种 MLC 都表现得非常好,具有相似的诊断性能。输入参数对诊断性能的影响大于机器分类器的类型。我们的结果表明,基于机器分类器处理的 RNFL 的 A 扫描厚度测量值的参数可以改善基于 OCT 的青光眼诊断。