A model fusion method based DAT-DenseNet for classification and diagnosis of aortic dissection.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-09-05 DOI:10.1007/s13246-024-01466-1
Linlong He, Shuhuan Wang, Ruibo Liu, Tienan Zhou, He Ma, Xiaozeng Wang
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Abstract

In this paper, we proposed a complete study method to achieve accurate aortic dissection diagnosis at the patient level. Based on the CT angiography (CTA) images, a classification model named DAT-DenseNet, which combined the deep attention Transformer module with the DenseNet architecture is proposed. In the first phase, two DAT-DenseNet are combined in parallel. It is used to accurately achieve two classification task at the CTA images. In the second stage, we propose a feature fusion module. It concatenates and fuses the image features output from the two classification models on a patient by patient basis. In the comparison experiments of classification model performance, DAT-DenseNet obtained 92.41 % accuracy at the image level, which was 2.20 % higher than the commonly used model. In the comparison experiments of model fusion method, our method obtained 90.83 % accuracy at the patient level. The experiments showed that DAT-DenseNet model exhibits high performance at the image level. Our feature fusion module achieves the mapping from two classification image features to patient outcomes. It achieves accurate patient classification. The experiments' results in the Discussion section elaborate the details of the experiment and confirmed that the results were reliable.

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基于 DAT-DenseNet 的主动脉夹层分类和诊断模型融合方法。
在本文中,我们提出了一种完整的研究方法,以在患者层面实现主动脉夹层的准确诊断。基于 CT 血管造影(CTA)图像,我们提出了一种名为 DAT-DenseNet 的分类模型,它将深度注意力转换器模块与 DenseNet 架构相结合。在第一阶段,两个 DAT-DenseNet 并行组合。它可用于准确完成 CTA 图像的两个分类任务。在第二阶段,我们提出了一个特征融合模块。它以患者为单位,将两个分类模型输出的图像特征进行串联和融合。在分类模型性能对比实验中,DAT-DenseNet 在图像水平上获得了 92.41 % 的准确率,比常用模型高出 2.20 %。在模型融合方法的对比实验中,我们的方法在患者层面获得了 90.83 % 的准确率。实验结果表明,DAT-DenseNet 模型在图像层面表现出很高的性能。我们的特征融合模块实现了从两个分类图像特征到患者结果的映射。它实现了准确的患者分类。讨论部分的实验结果详细阐述了实验细节,并证实了实验结果的可靠性。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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