Convolutional Neural Network Transfer for Automated Glaucoma Identification

被引:82
|
作者
Ignacio Orlando, Jose [1 ,2 ]
Prokofyeva, Elena [3 ,4 ]
del Fresno, Mariana [2 ,5 ]
Blaschko, Matthew B. [6 ]
机构
[1] Consejo Nacl Invest Cient & Tecn, Buenos Aires, DF, Argentina
[2] Pladema Inst, Gral Pinto 399, RA-7000 Tandil, Argentina
[3] Sci Inst Publ Hlth WIV ISP, Brussels, Belgium
[4] FAMHP, Pl Victor Horta 40-40, B-1060 Brussels, Belgium
[5] CIC PBA, Buenos Aires, DF, Argentina
[6] Katholieke Univ Leuven, Dept Elektrotech, Ctr Proc Speech & Images, Kasteelpk Arenberg 10, B-3001 Leuven, Belgium
来源
12TH INTERNATIONAL SYMPOSIUM ON MEDICAL INFORMATION PROCESSING AND ANALYSIS | 2017年 / 10160卷
关键词
Fundus imaging; Glaucoma; Convolutional Neural Networks; l(1) and l(2) regularized logistic regression; BLOOD-VESSEL SEGMENTATION; COLOR RETINAL IMAGES; OPTIC DISK;
D O I
10.1117/12.2255740
中图分类号
O43 [光学];
学科分类号
070207 ; 0803 ;
摘要
Most current systems for automated glaucoma detection in fundus images rely on segmentation-based features, which are known to be influenced by the underlying segmentation methods. Convolutional Neural Networks (CNNs) are powerful tools for solving image classification tasks as they are able to learn highly discriminative features from raw pixel intensities. However, their applicability to medical image analysis is limited by the non-availability of large sets of annotated data required for training. In this article we present results of analysis of the viability of using CNNs that are pre-trained from non-medical data for automated glaucoma detection. Two different CNNs, namely OverFeat and VGG-S, were applied to fundus images to generate feature vectors. Preprocessing techniques such as vessel inpainting, contrast-limited adaptive histogram equalization (CLAHE) or cropping around the optic nerve head (ONH) area were explored within this framework to evaluate the improvement in feature discrimination, combined with both l(1) and l(2) regularized logistic regression models. Results on the Drishti-GS1 dataset, evaluated in terms of area under the average ROC curve, suggests the viability of this approach and offer significant evidence of the importance of well-chosen image pre-processing for transfer learning when the amount of data is not sufficient for fine-tuning the network.
引用
收藏
页数:10
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