...
首页> 外文期刊>Clinical ophthalmology >Artificial Intelligence to Identify Retinal Fundus Images, Quality Validation, Laterality Evaluation, Macular Degeneration, and Suspected Glaucoma
【24h】

Artificial Intelligence to Identify Retinal Fundus Images, Quality Validation, Laterality Evaluation, Macular Degeneration, and Suspected Glaucoma

机译:人工智能识别视网膜眼底图像,质量验证,横向评价,黄斑变性和可疑的青光眼

获取原文
           

摘要

Purpose: To assess the performance of deep learning algorithms for different tasks in retinal fundus images: (1) detection of retinal fundus images versus optical coherence tomography (OCT) or other images, (2) evaluation of good quality retinal fundus images, (3) distinction between right eye (OD) and left eye (OS) retinal fundus images,(4) detection of age-related macular degeneration (AMD) and (5) detection of referable glaucomatous optic neuropathy (GON). Patients and Methods: Five algorithms were designed. Retrospective study from a database of 306,302 images, Optretina’s tagged dataset. Three different ophthalmologists, all retinal specialists, classified all images. The dataset was split per patient in a training (80%) and testing (20%) splits. Three different CNN architectures were employed, two of which were custom designed to minimize the number of parameters with minimal impact on its accuracy. Main outcome measure was area under the curve (AUC) with accuracy, sensitivity and specificity. Results: Determination of retinal fundus image had AUC of 0.979 with an accuracy of 96% (sensitivity 97.7%, specificity 92.4%). Determination of good quality retinal fundus image had AUC of 0.947, accuracy 91.8% (sensitivity 96.9%, specificity 81.8%). Algorithm for OD/OS had AUC 0.989, accuracy 97.4%. AMD had AUC of 0.936, accuracy 86.3% (sensitivity 90.2% specificity 82.5%), GON had AUC of 0.863, accuracy 80.2% (sensitivity 76.8%, specificity 83.8%). Conclusion: Deep learning algorithms can differentiate a retinal fundus image from other images. Algorithms can evaluate the quality of an image, discriminate between right or left eye and detect the presence of AMD and GON with a high level of accuracy, sensitivity and specificity.
机译:目的:评估视网膜眼底的不同任务的深度学习算法的性能:(1)视网膜眼底图像与光学相干断层扫描(OCT)或其他图像,(2)评估良好质量的视网膜眼底图像,(3 )右眼(OD)和左眼(OS)视网膜眼底图像之间的区别,(4)检测年龄相关的黄斑变性(AMD)和(5)检测可参考的青光瘤视神经病变(GON)。患者和方法:设计了五种算法。 optretina的标记数据集数据库的回顾性研究。三位不同的眼科医生,所有视网膜专家,分类所有图像。数据集每位患者在训练中分开(80%)和测试(20%)分裂。采用了三种不同的CNN架构,其中两个是定制的,旨在最大限度地减少对其准确性的最小影响的参数数量。主要结果测量是曲线(AUC)下的面积,精度,敏感性和特异性。结果:视网膜眼底图像的测定具有0.979的AUC,精度为96%(敏感性97.7%,特异性92.4%)。良好质量的视网膜眼镜图像的测定为0.947,精度为91.8%(敏感性96.9%,特异性为81.8%)。 OD / OS的算法具有AUC 0.989,精度为97.4%。 AMD的AUC为0.936,精度为86.3%(敏感性90.2%特异性82.5%),GON均为0.863,精度为80.2%(敏感性76.8%,特异性为83.8%)。结论:深度学习算法可以将视网膜眼压图像与其他图像区分开来。算法可以评估图像的质量,区分右眼或左眼,并检测AMD和GON的存在,具有高水平的精度,灵敏度和特异性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号