利用深度学习网络对二维超声图像中的结节进行自动分类

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2024-08-22 DOI:10.3390/jimaging10080203
Tewele W Tareke, Sarah Leclerc, Catherine Vuillemin, Perrine Buffier, Elodie Crevisy, Amandine Nguyen, Marie-Paule Monnier Meteau, Pauline Legris, Serge Angiolini, Alain Lalande
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引用次数: 0

摘要

目的:在临床实践中,甲状腺结节通常由专业医生使用二维超声图像进行目测评估。根据他们的评估,可能会建议进行细针穿刺(FNA)。然而,根据超声图像对甲状腺结节进行目测分类可能会导致患者进行不必要的细针穿刺。本研究旨在开发一种自动甲状腺超声图像分类系统,以避免不必要的 FNA:方法:本研究提出了一种自动计算机辅助人工智能系统,该系统使用基于 DenseNet 架构的微调深度学习模型对甲状腺结节进行分类,其中包含一个注意力模块。数据集包括 591 张根据 Bethesda 评分分类的甲状腺结节图像。甲状腺结节被分为需要 FNA 或不需要 FNA。这项任务面临的挑战包括管理图像质量的可变性、处理超声图像数据集中存在的伪影、解决类别不平衡问题以及确保模型的可解释性。我们采用了数据增强、类别加权和梯度加权类别激活图(Grad-CAM)等技术来提高模型性能,并为决策提供见解:我们的方法取得了优异的成绩,平均准确率为 0.94,F1 分数为 0.93,灵敏度为 0.96。Grad-CAM 的使用为决策制定提供了洞察力,进而从最终用户的角度加强了二元分类的可靠性:我们提出了一种深度学习架构,能有效地从超声图像中将甲状腺结节分类为是否需要 FNA。尽管存在图像可变性、类别不平衡和可解释性等方面的挑战,但我们的方法表现出了较高的分类准确性,假阴性极低,显示了其在临床环境中减少不必要的 FNA 的潜力。
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Automatic Classification of Nodules from 2D Ultrasound Images Using Deep Learning Networks.

Objective: In clinical practice, thyroid nodules are typically visually evaluated by expert physicians using 2D ultrasound images. Based on their assessment, a fine needle aspiration (FNA) may be recommended. However, visually classifying thyroid nodules from ultrasound images may lead to unnecessary fine needle aspirations for patients. The aim of this study is to develop an automatic thyroid ultrasound image classification system to prevent unnecessary FNAs.

Methods: An automatic computer-aided artificial intelligence system is proposed for classifying thyroid nodules using a fine-tuned deep learning model based on the DenseNet architecture, which incorporates an attention module. The dataset comprises 591 thyroid nodule images categorized based on the Bethesda score. Thyroid nodules are classified as either requiring FNA or not. The challenges encountered in this task include managing variability in image quality, addressing the presence of artifacts in ultrasound image datasets, tackling class imbalance, and ensuring model interpretability. We employed techniques such as data augmentation, class weighting, and gradient-weighted class activation maps (Grad-CAM) to enhance model performance and provide insights into decision making.

Results: Our approach achieved excellent results with an average accuracy of 0.94, F1-score of 0.93, and sensitivity of 0.96. The use of Grad-CAM gives insights on the decision making and then reinforce the reliability of the binary classification for the end-user perspective.

Conclusions: We propose a deep learning architecture that effectively classifies thyroid nodules as requiring FNA or not from ultrasound images. Despite challenges related to image variability, class imbalance, and interpretability, our method demonstrated a high classification accuracy with minimal false negatives, showing its potential to reduce unnecessary FNAs in clinical settings.

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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
期刊最新文献
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