Semi-Supervised Thyroid Nodule Detection in Ultrasound Videos

Xiang Luo;Zhongyu Li;Canhua Xu;Bite Zhang;Liangliang Zhang;Jihua Zhu;Peng Huang;Xin Wang;Meng Yang;Shi Chang
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Abstract

Deep learning techniques have been investigated for the computer-aided diagnosis of thyroid nodules in ultrasound images. However, most existing thyroid nodule detection methods were simply based on static ultrasound images, which cannot well explore spatial and temporal information following the clinical examination process. In this paper, we propose a novel video-based semi-supervised framework for ultrasound thyroid nodule detection. Especially, considering clinical examinations that need to detect thyroid nodules at the ultrasonic probe positions, we first construct an adjacent frame guided detection backbone network by using adjacent supporting reference frames. To further reduce the labour-intensive thyroid nodule annotation in ultrasound videos, we extend the video-based detection in a semi-supervised manner by using both labeled and unlabeled videos. Based on the detection consistency in sequential neighbouring frames, a pseudo label adaptation strategy is proposed for the refinement of unpredicted frames. The proposed framework is validated on 996 transverse viewed and 1088 longitudinal viewed ultrasound videos. Experimental results demonstrated the superior performance of our proposed method in the ultrasound video-based detection of thyroid nodules.
超声视频中的半监督甲状腺结节检测
深度学习技术已被用于研究超声图像中甲状腺结节的计算机辅助诊断。然而,现有的甲状腺结节检测方法大多是简单地基于静态超声图像,不能很好地探索临床检查过程中的时空信息。本文提出了一种新颖的基于视频的半监督超声甲状腺结节检测框架。特别是考虑到临床检查需要检测超声探头位置的甲状腺结节,我们首先利用相邻的支持参考帧构建了相邻帧引导检测骨干网络。为了进一步减少超声视频中甲状腺结节标注的劳动密集程度,我们使用已标注和未标注的视频,以半监督的方式扩展了基于视频的检测。根据连续相邻帧的检测一致性,我们提出了一种伪标签适应策略,用于细化未预测的帧。所提出的框架在 996 个横向查看和 1088 个纵向查看的超声波视频上进行了验证。实验结果表明,我们提出的方法在基于超声视频的甲状腺结节检测中表现出色。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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