Song Zuhua, Liu Qian, Huang Jie, Zhang Dan, Yu Jiayi, Zhou Bi, Ma Jiang, Zou Ya, Chen Yuwei, Tang Zhuoyue
Department of Radiology, Chongqing General Hospital, Chongqing University, No.118, Xingguang Avenue, Liangjiang New Area, Chongqing, 401147, China.
BMC Cancer. 2025 Jul 1;25(1):1041. doi: 10.1186/s12885-025-14450-z.
More cases of thyroid micro-nodules have been diagnosed annually in recent years because of advancements in diagnostic technologies and increased public health awareness. To explore the application value of various machine learning (ML) algorithms based on dual-layer spectral computed tomography (DLCT) quantitative parameters in distinguishing benign from malignant thyroid micro-nodules.
All 338 thyroid micro-nodules (177 malignant micro-nodules and 161 benign micro-nodules) were randomly divided into a training cohort (n = 237) and a testing cohort (n = 101) at a ratio of 7:3. Four typical radiological features and 19 DLCT quantitative parameters in the arterial phase and venous phase were measured. Recursive feature elimination was employed for variable selection. Three ML algorithms-support vector machine (SVM), logistic regression (LR), and naive Bayes (NB)-were implemented to construct predictive models. Predictive performance was evaluated via receiver operating characteristic (ROC) curve analysis.
A variable set containing 6 key variables with "one standard error" rules was identified in the SVM model, which performed well in the training and testing cohorts (area under the ROC curve (AUC): 0.924 and 0.931, respectively). A variable set containing 2 key variables was identified in the NB model, which performed well in the training and testing cohorts (AUC: 0.882 and 0.899, respectively). A variable set containing 8 key variables was identified in the LR model, which performed well in the training and testing cohorts (AUC: 0.924 and 0.925, respectively). And nine ML models were developed with varying variable sets (2, 6, or 8 variables), all of which consistently achieved AUC values above 0.85 in the training, cross validation (CV)-Training, CV-Validation, and testing cohorts.
Artificial intelligence-based DLCT quantitative parameters are promising for distinguishing benign from malignant thyroid micro-nodules.
近年来,由于诊断技术的进步和公众健康意识的提高,每年诊断出的甲状腺微结节病例增多。旨在探讨基于双层光谱计算机断层扫描(DLCT)定量参数的各种机器学习(ML)算法在鉴别甲状腺微结节良恶性方面的应用价值。
将338个甲状腺微结节(177个恶性微结节和161个良性微结节)按7:3的比例随机分为训练队列(n = 237)和测试队列(n = 101)。测量动脉期和静脉期的四个典型放射学特征以及19个DLCT定量参数。采用递归特征消除法进行变量选择。实施三种ML算法——支持向量机(SVM)、逻辑回归(LR)和朴素贝叶斯(NB)——来构建预测模型。通过受试者操作特征(ROC)曲线分析评估预测性能。
在SVM模型中识别出一个包含6个关键变量且符合“一个标准误差”规则的变量集,该模型在训练队列和测试队列中表现良好(ROC曲线下面积(AUC)分别为0.924和0.931)。在NB模型中识别出一个包含2个关键变量的变量集,该模型在训练队列和测试队列中表现良好(AUC分别为0.882和0.899)。在LR模型中识别出一个包含8个关键变量的变量集,该模型在训练队列和测试队列中表现良好(AUC分别为0.924和0.925)。并且开发了九个具有不同变量集(2、6或8个变量)的ML模型,所有这些模型在训练、交叉验证(CV)-训练、CV-验证和测试队列中始终实现AUC值高于0.85。
基于人工智能的DLCT定量参数在鉴别甲状腺微结节良恶性方面具有前景。