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Retinal SD-OCT image-based pituitary tumor screening

机译:基于视网膜SD-OCT图像的垂体肿瘤筛选

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In most cases, the pituitary tumor compresses optic chiasma and causes optic nerves atrophy, which will reflect in retina. In this paper, an Adaboost classification based method is first proposed to screen pituitary tumor from retinal spectral-domain optical coherence tomography (SD-OCT) image. The method includes four parts: pre-processing, feature extraction and selection, training and testing. First, in the pre-processing step, the retinal OCT image is segmented into 10 layers and the first 5 layers are extracted as our volume of interest (VOI). Second, 19 textural and spatial features are extracted from the VOI. Principal component analysis (PCA) is utilized to select the primary features. Third, in the training step, an Adaboost based classifier is trained using the above features. Finally, in the testing phase, the trained model is utilized to screen pituitary tumor. The proposed method was evaluated on 40 retinal OCT images from 30 patients and 30 OCT images from 15 normal subjects. The accuracy rate for the diseased retina was (85.00+ 16.58)% and the rate for normal retina was (76.68 + 21.34)%. Totally average accuracy of the Adaboost classifier was (81.43 ± 9.15)%. The preliminary results demonstrated the feasibility of the proposed method.
机译:在大多数情况下,垂体肿瘤压缩视神经和导致视神经萎缩,这将反映在视网膜中。本文首先提出基于ADABoost分类的方法,从视网膜光谱域光相干断层扫描(SD-OCT)图像中筛过垂体肿瘤。该方法包括四个部分:预处理,特征提取和选择,培训和测试。首先,在预处理步骤中,视网膜OCT图像被分段为10层,并且将前5层提取为我们的感兴趣的体积(VOI)。第二,从VOI中提取了19个纹理和空间特征。主要成分分析(PCA)用于选择主要功能。第三,在训练步骤中,使用上述特征训练基于AdaBoost基于的分类器。最后,在测试阶段,培训的模型用于筛网垂体肿瘤。从30名患者的40例和30个OCT图像中评估了所提出的方法,从15名正常受试者评估。患病视网膜的准确率(85.00 + 16.58)%,正常视网膜的速率(76.68 + 21.34)%。 Adaboost分类器的完全平均精度为(81.43±9.15)%。初步结果表明了该方法的可行性。

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