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首页> 外文期刊>IEEE Transactions on Medical Imaging >Semi-Supervised Medical Image Classification With Relation-Driven Self-Ensembling Model
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Semi-Supervised Medical Image Classification With Relation-Driven Self-Ensembling Model

机译:具有关系驱动的自我合奏模型的半监督医学图像分类

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摘要

Training deep neural networks usually requires a large amount of labeled data to obtain good performance. However, in medical image analysis, obtaining high-quality labels for the data is laborious and expensive, as accurately annotating medical images demands expertise knowledge of the clinicians. In this paper, we present a novel relation-driven semi-supervised framework for medical image classification. It is a consistency-based method which exploits the unlabeled data by encouraging the prediction consistency of given input under perturbations, and leverages a self-ensembling model to produce high-quality consistency targets for the unlabeled data. Considering that human diagnosis often refers to previous analogous cases to make reliable decisions, we introduce a novel sample relation consistency (SRC) paradigm to effectively exploit unlabeled data by modeling the relationship information among different samples. Superior to existing consistency-based methods which simply enforce consistency of individual predictions, our framework explicitly enforces the consistency of semantic relation among different samples under perturbations, encouraging the model to explore extra semantic information from unlabeled data. We have conducted extensive experiments to evaluate our method on two public benchmark medical image classification datasets, i.e., skin lesion diagnosis with ISIC 2018 challenge and thorax disease classification with ChestX-ray14. Our method outperforms many state-of-the-art semi-supervised learning methods on both single-label and multi-label image classification scenarios.
机译:培训深度神经网络通常需要大量标记的数据来获得良好的性能。然而,在医学图像分析中,获得对数据的高质量标签是费力且昂贵的,因为准确注释医学图像要求临床医生的专业知识。在本文中,我们提出了一种用于医学图像分类的新型关系驱动的半监督框架。它是一种基于一致性的方法,它通过鼓励扰动下给定输入的预测一致性来利用未标记的数据,并利用自组装模型来为未标记数据产生高质量的一致性目标。考虑到人类诊断通常是指以前的类似案例来做出可靠的决策,我们介绍了一种新颖的样本关系一致性(SRC)范式来通过在不同样本之间建模关系信息来有效利用未标记的数据。优于现有的基于一致性的方法,这简单地强制执行各个预测的一致性,我们的框架明确地强制执行不同样本在扰动下的语义关系的一致性,鼓励模型探索来自未标记数据的额外语义信息。我们已经进行了广泛的实验,以评估我们在两个公共基准医学图像分类数据集上的方法, i.e. ,皮肤病变诊断患有ISIC 2018挑战和胸部疾病分类与Chestx-ray14。我们的方法优于单一标签和多标签图像分类方案的许多最先进的半监督学习方法。

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