Chu Xuan, Wang Tengfei, Chen Meiwen, Li Jingyu, Wang Luyao, Wang Chengjie, Wang Hongzhi, Wong Stephen Tc, Chen Yongchao, Li Hai
Hefei Cancer Hospital, Chinese Academy of Sciences, Hefei 230031, PR China.
Hefei Cancer Hospital, Chinese Academy of Sciences, Hefei 230031, PR China; Anhui Province Key Laboratory of Medical Physics and Technology, Institute of Health and Medical Technology, Hefei Institutes of Physical Science, Chinese Academy of Sciences, Hefei 230031, PR China.
Comput Med Imaging Graph. 2025 Sep;124:102576. doi: 10.1016/j.compmedimag.2025.102576. Epub 2025 May 26.
The automatic screening of thyroid nodules using computer-aided diagnosis holds great promise in reducing missed and misdiagnosed cases in clinical practice. However, most current research focuses on single-modal images and does not fully leverage the comprehensive information from multimodal medical images, limiting model performance. To enhance screening accuracy, this study uses a deep learning framework that integrates high-dimensional convolutions of B-mode ultrasound (BMUS) and strain elastography (SE) images to predict the malignancy of TI-RADS 4 thyroid nodules with high-risk features. First, we extract nodule regions from the images and expand the boundary areas. Then, adaptive particle swarm optimization (APSO) and contrast limited adaptive histogram equalization (CLAHE) algorithms are applied to enhance ultrasound image contrast. Finally, deep learning techniques are used to extract and fuse high-dimensional features from both ultrasound modalities to classify benign and malignant thyroid nodules. The proposed model achieved an AUC of 0.937 (95 % CI 0.917-0.949) and 0.927 (95 % CI 0.907-0.948) in the test and external validation sets, respectively, demonstrating strong generalization ability. When compared with the diagnostic performance of three groups of radiologists, the model outperformed them significantly. Meanwhile, with the model's assistance, all three radiologist groups showed improved diagnostic performance. Furthermore, heatmaps generated by the model show a high alignment with radiologists' expertise, further confirming its credibility. The results indicate that our model can assist in clinical thyroid nodule diagnosis, reducing the risk of missed and misdiagnosed diagnoses, particularly for high-risk populations, and holds significant clinical value.
使用计算机辅助诊断自动筛查甲状腺结节在减少临床实践中漏诊和误诊病例方面具有巨大潜力。然而,目前大多数研究集中在单模态图像上,未充分利用多模态医学图像的综合信息,限制了模型性能。为提高筛查准确性,本研究使用了一个深度学习框架,该框架整合了B超(BMUS)和应变弹性成像(SE)图像的高维卷积,以预测具有高风险特征的TI-RADS 4类甲状腺结节的恶性程度。首先,我们从图像中提取结节区域并扩展边界区域。然后,应用自适应粒子群优化(APSO)和对比度受限自适应直方图均衡化(CLAHE)算法来增强超声图像对比度。最后,使用深度学习技术从两种超声模态中提取并融合高维特征,以对甲状腺结节的良恶性进行分类。所提出的模型在测试集和外部验证集中的AUC分别为0.937(95%CI 0.917 - 0.949)和0.927(95%CI 0.907 - 0.948),显示出很强的泛化能力。与三组放射科医生的诊断性能相比,该模型表现明显优于他们。同时,在该模型的辅助下,所有三组放射科医生的诊断性能均有所提高。此外,该模型生成的热图与放射科医生的专业知识高度吻合,进一步证实了其可信度。结果表明,我们的模型可以辅助临床甲状腺结节诊断,降低漏诊和误诊的风险,特别是对于高风险人群,具有重要的临床价值。