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基于新型小波变换的卷积分类网络在甲状腺乳头状癌超声图像中对颈部淋巴结转移的诊断

A novel wavelet-transform-based convolution classification network for cervical lymph node metastasis of papillary thyroid carcinoma in ultrasound images.

机构信息

School of Computer Engineering and Science, Shanghai University, Shangda Rd, Shanghai, 200444, China.

School of Computer Engineering and Science, Shanghai University, Shangda Rd, Shanghai, 200444, China.

出版信息

Comput Med Imaging Graph. 2023 Oct;109:102298. doi: 10.1016/j.compmedimag.2023.102298. Epub 2023 Sep 9.

Abstract

Preoperative assessment of cervical lymph nodes metastasis (CLNM) for accurate qualitative and locating diagnosis is important for choosing the best treatment option for patients with papillary thyroid cancer. Non-destructive, non-invasive ultrasound is currently the imaging method of choice for lymph node metastatic assessment. For lymph node characteristics and ultrasound images, this paper proposes a multitasking network framework for diagnosing metastatic lymph nodes in ultrasound images, in which localization module not only provides information on the location of lymph nodes to focus on the peripheral and self regions of lymph nodes, but also provides structural features of lymph nodes for subsequent classification module. In the classification module, we design a novel wavelet-transform-based convolution network. Wavelet transform is introduced into the deep learning convolution module to analyze ultrasound images in both spatial and frequency domains, which effectively enriches the feature information and improves the classification performance of the model without increasing the model parameters. We collected 510 patient data (N = 1376) from Shanghai Sixth People's Hospital regarding ultrasound lymph nodes in the neck, as well as used three publicly available ultrasound datasets, including SCUI2020 (N = 2914), DDTI (N = 480), and BUSI (N = 780). Compared to the optimal two-stage model, our model has improved its accuracy and AUC indexes by 5.83% and 4%, which outperforms the two-stage architectures and also surpasses the latest classification networks.

摘要

术前评估颈部淋巴结转移 (CLNM) 对于准确的定性和定位诊断对于选择甲状腺乳头状癌患者的最佳治疗方案非常重要。非破坏性、非侵入性的超声目前是淋巴结转移评估的首选成像方法。针对淋巴结特征和超声图像,本文提出了一种用于诊断超声图像中转移性淋巴结的多任务网络框架,其中定位模块不仅提供了淋巴结位置的信息,以关注淋巴结的外围和自身区域,还提供了淋巴结的结构特征,以供后续的分类模块使用。在分类模块中,我们设计了一种新颖的基于小波变换的卷积网络。将小波变换引入到深度学习卷积模块中,以在空间和频率域分析超声图像,这有效地丰富了特征信息,提高了模型的分类性能,而无需增加模型参数。我们从上海第六人民医院收集了 510 名患者的数据(N=1376),涉及颈部超声淋巴结,还使用了三个公开的超声数据集,包括 SCUI2020(N=2914)、DDTI(N=480)和 BUSI(N=780)。与最优的两阶段模型相比,我们的模型在准确性和 AUC 指标上分别提高了 5.83%和 4%,优于两阶段架构,也超过了最新的分类网络。

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