基于类统计损失的自适应双轴风格再校准网络用于不平衡医学图像分类

Xiaoqing Zhang;Zunjie Xiao;Jingzhe Ma;Xiao Wu;Jilu Zhao;Shuai Zhang;Runzhi Li;Yi Pan;Jiang Liu
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摘要

在医学影像检查下,显著病变和小病变(如眼底微动脉瘤)在现实世界的疾病诊断中都发挥着重要作用。尽管深度神经网络(deep neural networks, dnn)在医学图像分类方面取得了很好的成绩,但在捕获显著病灶和小病灶信息方面往往存在局限性,制约了不平衡医学图像分类性能的提高。最近,随着基于dnn的风格转移在医学图像生成中的出现,临床风格的作用引起了人们的极大兴趣,因为它们是病变的关键指标。基于这一观察结果,我们提出了一种新的基于自适应双轴风格的再校准(ADSR)模块,利用临床风格的潜力来指导dnn从双轴角度有效地学习显著和小病变信息。ADSR首先通过基于全局风格的自适应来强调突出的病变信息,然后通过基于像素的基于风格的融合来捕获小的病变信息。通过叠加多个ADSR模块,构建了用于不平衡医学图像分类的ADSR网络。此外,dnn通常采用交叉熵损失进行参数优化,忽略了类预测概率分布的影响。为了解决这个问题,我们引入了一种新的分类统计损失(Class-wise Statistics Loss, CWS),结合CE进一步提高了不平衡医学图像的分类结果。在5个不平衡医学图像数据集上的大量实验表明,ADSR-Net和CWS方法不仅优于最先进的(SOTA)方法,而且还提高了置信度校准结果。例如,在ISIC2018上,具有拟议损失的ADSR-Net在F1和B-ACC上的表现明显优于CABNet50,分别为21.39%和27.82%,而在ECE和BS上的表现分别为3.31%和4.57%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Dual-Axis Style-Based Recalibration Network With Class-Wise Statistics Loss for Imbalanced Medical Image Classification
Salient and small lesions (e.g., microaneurysms on fundus) both play significant roles in real-world disease diagnosis under medical image examinations. Although deep neural networks (DNNs) have achieved promising medical image classification performance, they often have limitations in capturing both salient and small lesion information, restricting performance improvement in imbalanced medical image classification. Recently, with the advent of DNN-based style transfer in medical image generation, the roles of clinical styles have attracted great interest, as they are crucial indicators of lesions. Motivated by this observation, we propose a novel Adaptive Dual-Axis Style-based Recalibration (ADSR) module, leveraging the potential of clinical styles to guide DNNs in effectively learning salient and small lesion information from a dual-axis perspective. ADSR first emphasizes salient lesion information via global style-based adaptation, then captures small lesion information with pixel-wise style-based fusion. We construct an ADSR-Net for imbalanced medical image classification by stacking multiple ADSR modules. Additionally, DNNs typically adopt cross-entropy loss for parameter optimization, which ignores the impacts of class-wise predicted probability distributions. To address this, we introduce a new Class-wise Statistics Loss (CWS) combined with CE to further boost imbalanced medical image classification results. Extensive experiments on five imbalanced medical image datasets demonstrate not only the superiority of ADSR-Net and CWS over state-of-the-art (SOTA) methods but also their improved confidence calibration results. For example, ADSR-Net with the proposed loss significantly outperforms CABNet50 by 21.39% and 27.82% in F1 and B-ACC while reducing 3.31% and 4.57% in ECE and BS on ISIC2018.
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