Xu Yan, Xu Mingmin, Geng Zhe, Liu Jie, Meng Bin
Department of Ultrasound, Zhejiang Rongjun Hospital, No.309 Shuangyuan Road, Jiaxing, 314001, China.
Interventional Cancer Institute of Chinese Integrative Medicine, Putuo Hospital, Shanghai University of Traditional Chinese Medicine, Shanghai, 200062, China.
BMC Cancer. 2025 Mar 25;25(1):544. doi: 10.1186/s12885-025-13917-3.
The accurate diagnosis of thyroid nodules represents a critical and frequently encountered challenge in clinical practice, necessitating enhanced precision in diagnostic methodologies. In this study, we investigate the predictive efficacy of distinguishing between benign and malignant thyroid nodules by employing traditional machine learning algorithms and a deep transfer learning model, aiming to advance the diagnostic paradigm in this field.
In this retrospective study, ITK-Snap software was utilized for image preprocessing and feature extraction from thyroid nodules. Feature screening and dimensionality reduction were conducted using the least absolute shrinkage and selection operator (LASSO) regression method. To identify the optimal model, both traditional machine learning and transfer learning approaches were employed, followed by model fusion using post-fusion techniques. The performance of the model was rigorously evaluated through the area under the curve (AUC), calibration curve analysis, and decision curve analysis (DCA).
A total of 1134 images from 630 cases of thyroid nodules were included in this study, comprising 589 benign nodules and 545 malignant nodules. Through comparative analysis, the support vector machine (SVM), which demonstrated the best diagnostic performance among traditional machine learning models, and the Inception V3 convolutional neural network model, based on transfer learning, were selected for model construction. The SVM model achieved an AUC of 0.748 (95% CI: 0.684-0.811) for diagnosing malignant thyroid nodules, while the Inception V3 transfer learning model yielded an AUC of 0.763 (95% CI: 0.702-0.825). Following model fusion, the AUC improved to 0.783 (95% CI: 0.724-0.841). The difference in performance between the fusion model and the traditional machine learning model was statistically significant (p = 0.036). Decision curve analysis (DCA) further confirmed that the fusion model exhibits superior clinical utility, highlighting its potential for practical application in thyroid nodule diagnosis.
Our findings demonstrate that the fusion model, which integrates a convolutional neural network (CNN) with traditional machine learning and deep transfer learning techniques, can effectively differentiate between benign and malignant thyroid nodules through the analysis of ultrasound images. This model fusion approach significantly optimizes and enhances diagnostic performance, offering a robust and intelligent tool for the clinical detection of thyroid diseases.
甲状腺结节的准确诊断是临床实践中一项关键且常见的挑战,需要提高诊断方法的精准度。在本研究中,我们通过运用传统机器学习算法和深度迁移学习模型来探究区分甲状腺良恶性结节的预测效能,旨在推动该领域的诊断范式发展。
在这项回顾性研究中,使用ITK-Snap软件对甲状腺结节进行图像预处理和特征提取。采用最小绝对收缩和选择算子(LASSO)回归方法进行特征筛选和降维。为确定最优模型,同时采用传统机器学习和迁移学习方法,随后使用融合后技术进行模型融合。通过曲线下面积(AUC)、校准曲线分析和决策曲线分析(DCA)对模型性能进行严格评估。
本研究共纳入630例甲状腺结节患者的1134张图像,其中良性结节589个,恶性结节545个。通过比较分析,选择在传统机器学习模型中诊断性能最佳的支持向量机(SVM)以及基于迁移学习的Inception V3卷积神经网络模型进行模型构建。SVM模型诊断甲状腺恶性结节的AUC为0.748(95%CI:0.684-0.811),而Inception V3迁移学习模型的AUC为0.763(95%CI:0.702-0.825)。模型融合后,AUC提高至0.783(95%CI:0.724-0.841)。融合模型与传统机器学习模型在性能上的差异具有统计学意义(p = 0.036)。决策曲线分析(DCA)进一步证实融合模型具有更好的临床实用性,并突出了其在甲状腺结节诊断中实际应用的潜力。
我们的研究结果表明,将卷积神经网络(CNN)与传统机器学习和深度迁移学习技术相结合的融合模型,能够通过超声图像分析有效区分甲状腺良恶性结节。这种模型融合方法显著优化和提高了诊断性能,为甲状腺疾病的临床检测提供了一种强大且智能的工具。