GC-WIR:用于肺结节分类的三维全局坐标注意宽倒置 ResNet 网络。

IF 2.6 3区 医学 Q2 RESPIRATORY SYSTEM BMC Pulmonary Medicine Pub Date : 2024-09-20 DOI:10.1186/s12890-024-03272-7
Wenju Wang, Shuya Yin, Fang Ye, Yinan Chen, Lin Zhu, Hong Yu
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引用次数: 0

摘要

目的:目前,用于肺部良性和恶性结节分类的深度学习方法遇到的挑战包括算法模型复杂且不稳定、数据适应性有限以及模型参数过多。为了解决这些问题,本研究引入了一种新方法:三维全局协调注意力宽反转 ResNet 网络(GC-WIR)。该网络旨在利用其效率高、参数化简便、稳定性强等优点,实现肺结节良恶性的精确分类:在此框架内,设计了一个三维全局坐标注意机制(3D GCA),通过转换三维通道信息和多维位置线索来计算输入图像的特征。通过同时包含全局通道细节和空间位置线索,这种方法在灵活性和计算效率之间保持了明智的平衡。此外,GC-WIR 架构还采用了 3D 宽反转残差网络(3D WIRN),通过扩展输入通道来增强特征计算。这种增强功能可减轻特征提取过程中的信息损失,加快模型收敛,同时提高性能。反转残差结构的使用提高了模型的稳定性:结果:在 LUNA 16 数据集上对 GC-WIR 方法进行了经验验证,其预测结果超过了以前的模型。这种新方法的准确率高达 94.32%,特异性高达 93.69%,令人印象深刻。值得注意的是,该模型的参数数量保持在 5.76M 的适中水平,从而提供了最佳的分类准确性:此外,实验结果清楚地表明,即使在严格的计算限制条件下,GC-WIR 的性能也优于其他深度学习方法,从而建立了新的性能基准。
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GC-WIR : 3D global coordinate attention wide inverted ResNet network for pulmonary nodules classification.

Purpose: Currently, deep learning methods for the classification of benign and malignant lung nodules encounter challenges encompassing intricate and unstable algorithmic models, limited data adaptability, and an abundance of model parameters.To tackle these concerns, this investigation introduces a novel approach: the 3D Global Coordinated Attention Wide Inverted ResNet Network (GC-WIR). This network aims to achieve precise classification of benign and malignant pulmonary nodules, leveraging its merits of heightened efficiency, parsimonious parameterization, and robust stability.

Methods: Within this framework, a 3D Global Coordinate Attention Mechanism (3D GCA) is designed to compute the features of the input images by converting 3D channel information and multi-dimensional positional cues. By encompassing both global channel details and spatial positional cues, this approach maintains a judicious balance between flexibility and computational efficiency. Furthermore, the GC-WIR architecture incorporates a 3D Wide Inverted Residual Network (3D WIRN), which augments feature computation by expanding input channels. This augmentation mitigates information loss during feature extraction, expedites model convergence, and concurrently enhances performance. The utilization of the inverted residual structure imbues the model with heightened stability.

Results: Empirical validation of the GC-WIR method is performed on the LUNA 16 dataset, yielding predictions that surpass those generated by previous models. This novel approach achieves an impressive accuracy rate of 94.32%, coupled with a specificity of 93.69%. Notably, the model's parameter count remains modest at 5.76M, affording optimal classification accuracy.

Conclusion: Furthermore, experimental results unequivocally demonstrate that, even under stringent computational constraints, GC-WIR outperforms alternative deep learning methodologies, establishing a new benchmark in performance.

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来源期刊
BMC Pulmonary Medicine
BMC Pulmonary Medicine RESPIRATORY SYSTEM-
CiteScore
4.40
自引率
3.20%
发文量
423
审稿时长
6-12 weeks
期刊介绍: BMC Pulmonary Medicine is an open access, peer-reviewed journal that considers articles on all aspects of the prevention, diagnosis and management of pulmonary and associated disorders, as well as related molecular genetics, pathophysiology, and epidemiology.
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