Measurement of central subfield thickness based on depth learning

Yuanying Wang, Jiangyan Zhou, Wei Liu
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Abstract

Central subfield thickness (CST) can assist in the diagnosis of many diseases, which can be observed through OCT images. This paper proposes a new deep learning framework for measuring CST. In this paper, the original OCT image is segmented based on U-Net, and a classification task is introduced here to determine whether the original image is taken from the center of the eye, so as to improve the segmentation effect of the center of the retina. The CST value of the segmented image is calculated through a double tower regression model, which is composed of the reduced dimension self-attention model and ResNet splicing. Through experimental verification, the regression accuracy of this framework is about 8% higher than that of other models.
基于深度学习的中心子场厚度测量
中心子场厚度(Central subfield thickness, CST)可以通过OCT图像观察到,有助于许多疾病的诊断。本文提出了一种新的用于测量CST的深度学习框架。本文基于U-Net对原始OCT图像进行分割,并引入一个分类任务来判断原始图像是否取自眼球中心,从而提高视网膜中心的分割效果。通过由降维自注意模型和ResNet拼接组成的双塔回归模型计算分割后图像的CST值。通过实验验证,该框架的回归精度比其他模型高出8%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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