基于高阶相互作用和样本分布再平衡的肝纤维化MR图像分类。

IF 4.7 3区 医学 Q1 MEDICAL INFORMATICS Health Information Science and Systems Pub Date : 2023-11-08 eCollection Date: 2023-12-01 DOI:10.1007/s13755-023-00255-6
Ling Zhang, Zhennan Xiao, Wenchao Jiang, Chengbin Luo, Ming Ye, Guanghui Yue, Zhiyuan Chen, Shuman Ouyang, Yupin Liu
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引用次数: 0

摘要

肝纤维化MR图像的分形特征呈现不规则的碎片化分布,弥漫性特征分布缺乏互联性,导致特征学习不完全,识别准确率较差。在本文中,我们将递归门控卷积插入到ResNet18网络中,在特征学习过程中引入空间信息交互,并使用递归将其扩展到更高阶。高阶空间信息交互增强了特征之间的相关性,使神经网络能够更多地关注像素级依赖关系,从而实现肝脏MR图像的全局解释。此外,成像过程中存在光散射和量子噪声,再加上长时间屏气引起的呼吸伪影等环境因素,都会影响MR图像的质量。为了提高神经网络的分类性能和更好地捕捉样本特征,我们引入了自适应再平衡损失函数,并将特征范式作为可学习的自适应属性纳入到角边缘辅助函数中。自适应再平衡损失函数可以扩大类间距离,缩小类内差异,进一步增强模型的判别能力。我们对209例患者进行了广泛的肝纤维化MR成像实验。结果表明,与ResNet18相比,识别精度平均提高了2%。github在https://github.com/XZN1233/paper.git。
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Liver fibrosis MR images classification based on higher-order interaction and sample distribution rebalancing.

The fractal features of liver fibrosis MR images exhibit an irregular fragmented distribution, and the diffuse feature distribution lacks interconnectivity, result- ing in incomplete feature learning and poor recognition accuracy. In this paper, we insert recursive gated convolution into the ResNet18 network to introduce spatial information interactions during the feature learning process and extend it to higher orders using recursion. Higher-order spatial information interactions enhance the correlation between features and enable the neural network to focus more on the pixel-level dependencies, enabling a global interpretation of liver MR images. Additionally, the existence of light scattering and quantum noise during the imaging process, coupled with environmental factors such as breathing artifacts caused by long time breath holding, affects the quality of the MR images. To improve the classification performance of the neural network and better cap- ture sample features, we introduce the Adaptive Rebalance loss function and incorporate the feature paradigm as a learnable adaptive attribute into the angular margin auxiliary function. Adaptive Rebalance loss function can expand the inter-class distance and narrow the intra-class difference to further enhance discriminative ability of the model. We conduct extensive experiments on liver fibrosis MR imaging involving 209 patients. The results demonstrate an average improvement of two percent in recognition accuracy compared to ResNet18. The github is at https://github.com/XZN1233/paper.git.

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来源期刊
CiteScore
11.30
自引率
5.00%
发文量
30
期刊介绍: Health Information Science and Systems is a multidisciplinary journal that integrates artificial intelligence/computer science/information technology with health science and services, embracing information science research coupled with topics related to the modeling, design, development, integration and management of health information systems, smart health, artificial intelligence in medicine, and computer aided diagnosis, medical expert systems. The scope includes: i.) smart health, artificial Intelligence in medicine, computer aided diagnosis, medical image processing, medical expert systems ii.) medical big data, medical/health/biomedicine information resources such as patient medical records, devices and equipments, software and tools to capture, store, retrieve, process, analyze, optimize the use of information in the health domain, iii.) data management, data mining, and knowledge discovery, all of which play a key role in decision making, management of public health, examination of standards, privacy and security issues, iv.) development of new architectures and applications for health information systems.
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