基于人的不确定性学习的Choquet积分视盘分割

H. Qiu, P. Su, Shanshan Jiang, Xingyu Yue, Yitian Zhao, Jiang Liu
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引用次数: 2

摘要

现代深度神经网络能够在一些医学图像处理任务中击败人类注释器。在医学图像分割任务的实际手工标注中,标注者的标签往往存在观察者间变异(IOV),这主要是由于标注者对专业知识的理解不同造成的。为了建立一个可靠的分割系统,鲁棒模型应该考虑如何捕捉样本和标签中的不确定性。与传统的多数投票等标签融合处理视盘分割的方法不同,提出了一种基于模糊积分的视盘分割多深度学习模型集成框架。每个组件分割模型都是根据注释器进行训练的。然后,以神经网络的形式利用强大的非线性聚集函数Choquet积分对多个标注器的分割结果进行整合。该方法在由169张眼底图像组成的RIM-ONE公共数据集上进行了验证,每张图像由5位专家进行了注释。与传统的分割集成方法相比,本文方法的Dice得分(98.69%)更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning from Human Uncertainty by Choquet Integral for Optic Disc Segmentation
Modern deep neural networks are able to beat human annotators in several medical image processing tasks. In practical manual annotation for medical image segmentation tasks, the labels of annotators often show inter-observer variability (IOV) which is mainly caused by annotators’ different understandings of expertise. In order to build a trustworthy segmentation system, robust models should consider how to capture uncertainty in samples and labels. Different from the conventional way of handling IOV with label fusion such as majority voting, a fuzzy integral based ensemble framework of multiple deep learning models for optic disc segmentation is proposed. Each component segmentation model is trained with respect to an annotator. Then, a powerful nonlinear aggregation function, the Choquet integral, is employed in form of a neural network to integrate the segmentation results of multiple annotators. The proposed method is validated on the public RIM-ONE dataset consisting of 169 fundus images and each image is annotated by 5 experts. Compared with conventional segmentation ensemble methods, the proposed methods achieves a higher Dice score (98.69%).
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