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Deep-learning-based prediction of late age-related macular degeneration progression

机译:Deep-learning-based预测与年龄相关黄斑变性恶化

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Both genetic and environmental factors influence the etiology of age-related macular degeneration (AMD), a leading cause of blindness. AMD severity is primarily measured by images of the fundus of the retina and recently developed machine learning methods can successfully predict AMD progression using image data. However, none of these methods have used both genetic and image data for predicting AMD progression. Here we used both genotypes and fundus images to predict whether an eye had progressed to late AMD with a modified deep convolutional neural network. In total, we used 31,262 fundus images and 52 AMD-associated genetic variants from 1,351 subjects from the Age-Related Eye Disease Study, which provided disease severity phenotypes and fundus images available at baseline and follow-up visits over a period of 12 years. Our results showed that fundus images coupled with genotypes could predict late AMD progression with an averaged area-under-the-curve value of 0.85 (95%confidence interval 0.83-0.86). The results using fundus images alone showed an averaged area under the receiver operating characteristic curve value of 0.81 (95%confidence interval 0.80-0.83). We implemented our model in a cloud-based application for individual risk assessment. Age-related macular degeneration is a serious eye disease which should be detected as early as possible. Using both fundus images and genetic information, a deep neural network is able to detect the severity of the disease and predict its progression seven years into the future.
机译:遗传和环境因素的影响年龄相关性黄斑变性的病因(AMD),一个失明的主要原因。主要是衡量的眼底图像的视网膜和最近开发的机器学习方法可以成功地预测AMD进程使用的图像数据。这些方法使用遗传和形象数据预测AMD发展。基因型和眼底图像预测一只眼睛是否已经进展到后期AMD的修改后的深卷积神经网络。总,我们使用31262眼底图像和52从1351年AMD-associated遗传变异受试者年龄相关性眼病的研究中,提供疾病表型和严重程度眼底图像可以在基线和随访访问的12年。表明,眼底图像加上基因型和一个可以预测后期AMD发展吗平均曲线下的面积值为0.85(95%置信区间0.83 - -0.86)。单独使用眼底图像显示平均面积接受者操作特性曲线值为0.81(95%置信区间0.80 - -0.83)。我们实现了我们的模型在一个基于云计算的申请个人风险评估。年龄相关性黄斑变性是一种严重的眼睛应该早发现疾病可能的。信息,能够深层神经网络检测疾病的严重程度和预测它的发展在未来七年。

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