论文标题

加入:联合视盘/杯段和中央凹检测的先前指导的多任务学习

JOINED : Prior Guided Multi-task Learning for Joint Optic Disc/Cup Segmentation and Fovea Detection

论文作者

He, Huaqing, Lin, Li, Cai, Zhiyuan, Tang, Xiaoying

论文摘要

底眼摄影通常用于记录各种视网膜退行性疾病的存在和严重性,例如与年龄相关的黄斑变性,青光眼和糖尿病性视网膜病变,为中央凹,光盘(OD)和Optic CUP(OC)是重要的解剖学上标志。这些解剖学地标的识别至关重要。然而,视网膜变性期间病变,drusen和其他异常的存在严重复杂化了自动的地标检测和分割。大多数现有作品将每个地标的识别视为一项任务,通常不利用任何临床先验信息。在本文中,我们提出了一种名为“加入的新方法”,用于先前指导的多任务学习,用于关节OD/OC分割和中央凹检测。除分割分支和检测分支外,还构建了用于距离预测的辅助分支,以有效利用从每个图像像素到感兴趣的地标的距离信息。我们提出的加入管道包括一个粗糙的阶段和一个良好的阶段。在粗糙阶段,我们通过关节分割和检测模块获得了OD/OC粗分割和中央凹的热图定位。之后,我们为随后的精细处理而裁剪感兴趣的区域,并在粗阶段获得的预测作为其他信息,以提高性能和更快的收敛性。实验结果表明,我们提出的加入了胜过公共可用的伽玛,棕榈和避难所数据集的现有最先进的方法。此外,在MICCAI2021研讨会OMIA8主持的伽马挑战赛中,加入了OD/OC细分和Fovea检测任务的第五名。

Fundus photography has been routinely used to document the presence and severity of various retinal degenerative diseases such as age-related macula degeneration, glaucoma, and diabetic retinopathy, for which the fovea, optic disc (OD), and optic cup (OC) are important anatomical landmarks. Identification of those anatomical landmarks is of great clinical importance. However, the presence of lesions, drusen, and other abnormalities during retinal degeneration severely complicates automatic landmark detection and segmentation. Most existing works treat the identification of each landmark as a single task and typically do not make use of any clinical prior information. In this paper, we present a novel method, named JOINED, for prior guided multi-task learning for joint OD/OC segmentation and fovea detection. An auxiliary branch for distance prediction, in addition to a segmentation branch and a detection branch, is constructed to effectively utilize the distance information from each image pixel to landmarks of interest. Our proposed JOINED pipeline consists of a coarse stage and a fine stage. At the coarse stage, we obtain the OD/OC coarse segmentation and the heatmap localization of fovea through a joint segmentation and detection module. Afterwards, we crop the regions of interest for subsequent fine processing and use predictions obtained at the coarse stage as additional information for better performance and faster convergence. Experimental results reveal that our proposed JOINED outperforms existing state-of-the-art approaches on the publicly-available GAMMA, PALM, and REFUGE datasets of fundus images. Furthermore, JOINED ranked the 5th on the OD/OC segmentation and fovea detection tasks in the GAMMA challenge hosted by the MICCAI2021 workshop OMIA8.

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