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High Definition Optical Coherence Tomography and Standard Automated Perimetry dataset generator for glaucoma diagnosis

机译:用于青光眼诊断的高清光学相干断层扫描和标准自动视野测量数据集生成器

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Glaucoma is an optical neuropathy, whose progression results in visual field impairments and blindness. In this paper an artificial data generator called GLOR is presented, which is based on a Monte Carlo method and designed for the training of machine learning classifiers for glaucoma diagnosis. The generated population is characterized by the functional and structural data of eyes. In this study, these parameters are provided by high definition optical coherence tomography (HD-OCT) and by standard automated perimetry (SAP) instruments. A Naive-Bayes classifier trained by using an artificial population comprising of 4500 normal and 500 glaucomatous subjects, obtained a rate of 77% for sensibility and 93% for specificity, during a classification performance evaluation using real patient data. The area under a ROC (receiver operating characteristic) curve was 0.9308.
机译:青光眼是一种视神经病变,其进展会导致视野受损和失明。在本文中,提出了一种名为GLOR的人工数据生成器,它基于Monte Carlo方法,旨在训练用于青光眼诊断的机器学习分类器。生成的种群的特征在于眼睛的功能和结构数据。在这项研究中,这些参数由高清光学相干断层扫描(HD-OCT)和标准自动视野检查(SAP)仪器提供。通过使用包含4500名正常和500名青光眼受试者的人工种群训练的Naive-Bayes分类器,在使用真实患者数据进行分类性能评估的过程中,敏感性为77%,特异性为93%。 ROC(接收机工作特性)曲线下的面积为0.9308。

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