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Retinal Nerve Fiber Layer Defect Detection using Machine Learning on Optic Disc Photograph

机译:视网膜神经纤维层缺陷检测使用机器学习光盘照片

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Glaucoma is a neurodegenerative disease presents with retinal nerve fiber layer (RNFL) defects. We apply machine learning classifiers on the color information of the RNFL to differentiate between intact RNFL (i-RNFL) and RNFL defect (d-RNFL) on optic disc photographs (DPs). DPs from individuals with and without glaucoma were collected. Then, a semi-circle was automatically marked on the DPs, to label i-RNFL versus d-RNFL. RGB intensities and other color spaces of two profiles were collected. Five-fold cross validation is used to compare classification efficiency of five classifiers. A total of 2,051 profiles from 89, 32 and 15 DPs from patients with glaucoma, glaucoma suspects and control subjects were collected. There were 702 and 175 points of d-RNFL and 940 and 234 of i-RNFL in the training and test sets. In the training set, the 3 best classifiers using RGB intensities were fine Gaussian support vector machine (SVM), medium k-Nearest Neighbor and ensemble RUSBoosted Trees, with accuracies of 81.8%, 79.4% and 79.2%. The performance of the fine Gaussian SVM was similar between RGB and other color spaces. In the test set, the highest sensitivity (71.4%) and specificity (88.5%) were archived using RGB and the combination of RGB and Cb and Cr.
机译:青光眼是一种神经变性疾病,具有视网膜神经纤维层(RNFL)缺陷。我们在RNFL的颜色信息上应用机器学习分类器,以区分在光盘照片(DPS)上的完整RNFL(I-RNFL)和RNFL缺陷(D-RNFL)之间。收集来自个体的DPS,没有青光眼。然后,半圈在DPS上自动标记为标记I-RNFL与D-RNFL。收集了两个型材的RGB强度和其他颜色空间。五倍交叉验证用于比较五分类器的分类效率。收集了来自89,32和15例来自青光眼,青光眼嫌疑人和对照受试者的89,32和15 dps的2,051例型材。在培训和测试集中有702和175点D-RNFL和I-RNFL的940和234点。在培训集中,使用RGB强度的3个最佳分类器是精细的高斯支持向量机(SVM),中k最近邻居和集合的鲁布罗斯德树,精度为81.8%,79.4%和79.2%。精细高斯SVM的性能在RGB和其他颜色空间之间类似。在试验组中,使用RGB和RGB和Cb和Cr的组合存档最高敏感性(71.4%)和特异性(88.5%)。

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