利用反卷积神经网络可视化和理解SD-OCT对年龄相关性黄斑变性进展的固有特征

Applied AI letters Pub Date : 2020-10-14 DOI:10.1002/ail2.16
Sajib Saha, Ziyuan Wang, Srinivas Sadda, Yogesan Kanagasingam, Zhihong Hu
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引用次数: 6

摘要

开发卷积神经网络可视化策略,以便更好地确定与年龄相关性黄斑变性(AMD)演变有关的光学相干断层扫描(OCT)特征。我们训练了一个U-Net模型,利用基线OCT来预测地理萎缩(GA)的进展,这是AMD的一种晚期表现。我们通过附加反卷积神经网络(deconvolution neural networks, deconvnets)增强了U-Net架构。Deconvnets产生重建的特征图,并提供有关促进GA进展的固有基线OCT特征的指示。实验采集70只GA眼的纵向光谱域(SD -OCT)和眼底自体荧光图像。Bruch膜-外脉络膜(BMChoroid)视网膜连接的强度在GA进展中表现出24%的相对重要性。视网膜内色素上皮(RPE)和基底膜交界处(InRPEBM)强度的相对重要性为22%。BMChoroid(包括黄斑变性特征/绒毛膜损伤)和InRPEBM(包括黄斑变性特征/黄斑变性损伤)似乎是预测黄斑变性进展最相关的层。
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Visualizing and understanding inherent features in SD-OCT for the progression of age-related macular degeneration using deconvolutional neural networks

To develop a convolutional neural network visualization strategy so that optical coherence tomography (OCT) features contributing to the evolution of age-related macular degeneration (AMD) can be better determined. We have trained a U-Net model to utilize baseline OCT to predict the progression of geographic atrophy (GA), a late stage manifestation of AMD. We have augmented the U-Net architecture by attaching deconvolutional neural networks (deconvnets). Deconvnets produce the reconstructed feature maps and provide an indication regarding the inherent baseline OCT features contributing to GA progression. Experiments were conducted on longitudinal spectral domain (SD)-OCT and fundus autofluorescence images collected from 70 eyes with GA. The intensity of Bruch's membrane-outer choroid (BMChoroid) retinal junction exhibited a relative importance of 24%, in the GA progression. The intensity of the inner retinal pigment epithelium (RPE) and BM junction (InRPEBM) showed a relative importance of 22%. BMChoroid (where the AMD feature/damage of choriocapillaris was included) followed by InRPEBM (where the AMD feature/damage of RPE was included) are the layers which appear to be most relevant in predicting the progression of AMD.

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