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三维轴向注意力肺结节分类。

3D axial-attention for lung nodule classification.

机构信息

Electrical and Computer Systems Engineering Discipline, School of Engineering, Monash University Malaysia, 47500, Bandar Sunway, Selangor, Malaysia.

School of Electrical and Computer Engineering, University of Oklahoma, Norman, OK, 73019, USA.

出版信息

Int J Comput Assist Radiol Surg. 2021 Aug;16(8):1319-1324. doi: 10.1007/s11548-021-02415-z. Epub 2021 May 31.

Abstract

PURPOSE

In recent years, Non-Local-based methods have been successfully applied to lung nodule classification. However, these methods offer 2D attention or limited 3D attention to low-resolution feature maps. Moreover, they still depend on a convenient local filter such as convolution as full 3D attention is expensive to compute and requires a big dataset, which might not be available.

METHODS

We propose to use 3D Axial-Attention, which requires a fraction of the computing power of a regular Non-Local network (i.e., self-attention). Unlike a regular Non-Local network, the 3D Axial-Attention network applies the attention operation to each axis separately. Additionally, we solve the invariant position problem of the Non-Local network by proposing to add 3D positional encoding to shared embeddings.

RESULTS

We validated the proposed method on 442 benign nodules and 406 malignant nodules, extracted from the public LIDC-IDRI dataset by following a rigorous experimental setup using only nodules annotated by at least three radiologists. Our results show that the 3D Axial-Attention model achieves state-of-the-art performance on all evaluation metrics, including AUC and Accuracy.

CONCLUSIONS

The proposed model provides full 3D attention, whereby every element (i.e., pixel) in the 3D volume space attends to every other element in the nodule effectively. Thus, the 3D Axial-Attention network can be used in all layers without the need for local filters. The experimental results show the importance of full 3D attention for classifying lung nodules.

摘要

目的

近年来,基于非局部的方法已成功应用于肺结节分类。然而,这些方法提供了 2D 注意力或有限的 3D 注意力给低分辨率特征图。此外,它们仍然依赖于方便的局部滤波器,如卷积,因为全 3D 注意力计算成本高,需要大数据集,而这可能不可用。

方法

我们提出使用 3D 轴向注意力,它只需要常规非局部网络(即自注意力)的一小部分计算能力。与常规非局部网络不同,3D 轴向注意力网络分别对每个轴应用注意力操作。此外,我们通过提出将 3D 位置编码添加到共享嵌入中来解决非局部网络的不变位置问题。

结果

我们在 442 个良性结节和 406 个恶性结节上验证了所提出的方法,这些结节是从公共 LIDC-IDRI 数据集通过仅使用至少三名放射科医生注释的结节遵循严格的实验设置提取的。我们的结果表明,3D 轴向注意力模型在所有评估指标上都达到了最先进的性能,包括 AUC 和准确性。

结论

所提出的模型提供了全 3D 注意力,即 3D 体积空间中的每个元素(即像素)都能有效地关注结节中的其他每个元素。因此,3D 轴向注意力网络可以在所有层中使用,而无需局部滤波器。实验结果表明了全 3D 注意力对肺结节分类的重要性。

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