Department of Biomedical Engineering, Duke University, Durham, NC, 27708, USA.
Department of Ophthalmology, Scheie Eye Institute, University of Pennsylvania, Philadelphia, PA, 19104, USA.
Sci Rep. 2017 Jul 26;7(1):6620. doi: 10.1038/s41598-017-07103-0.
Imaging with an adaptive optics scanning light ophthalmoscope (AOSLO) enables direct visualization of the cone photoreceptor mosaic in the living human retina. Quantitative analysis of AOSLO images typically requires manual grading, which is time consuming, and subjective; thus, automated algorithms are highly desirable. Previously developed automated methods are often reliant on ad hoc rules that may not be transferable between different imaging modalities or retinal locations. In this work, we present a convolutional neural network (CNN) based method for cone detection that learns features of interest directly from training data. This cone-identifying algorithm was trained and validated on separate data sets of confocal and split detector AOSLO images with results showing performance that closely mimics the gold standard manual process. Further, without any need for algorithmic modifications for a specific AOSLO imaging system, our fully-automated multi-modality CNN-based cone detection method resulted in comparable results to previous automatic cone segmentation methods which utilized ad hoc rules for different applications. We have made free open-source software for the proposed method and the corresponding training and testing datasets available online.
自适应光学扫描激光检眼镜(AOSLO)的成像是可以直接观察活体人视网膜中视锥光感受器的镶嵌图。AOSLO 图像的定量分析通常需要手动分级,这既耗时又主观;因此,高度需要自动化算法。以前开发的自动化方法通常依赖于特定于特定情况的规则,这些规则可能无法在不同的成像模式或视网膜位置之间转移。在这项工作中,我们提出了一种基于卷积神经网络(CNN)的用于检测视锥的方法,该方法可以直接从训练数据中学习到感兴趣的特征。该用于识别视锥的算法是在共焦和分裂探测器 AOSLO 图像的单独数据集上进行训练和验证的,结果表明其性能与黄金标准的手动过程非常相似。此外,我们的全自动多模态基于 CNN 的视锥检测方法无需针对特定的 AOSLO 成像系统进行算法修改,其结果与之前利用特定规则用于不同应用的自动视锥分割方法相当。我们已经为该方法以及相应的训练和测试数据集提供了免费的开源软件,可供在线使用。