Li Mei Hua, Liu Long, Feng Lian, Zheng Li Jun, Xu Qin Mei, Zhang Yin Juan, Zhang Fu Rong, Feng Lin Na
Department of Ultrasound, Sijing Hospital of Songjiang District, Shanghai, China.
Department of Ultrasound, Shanghai General Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Front Oncol. 2024 Jan 25;14:1291767. doi: 10.3389/fonc.2024.1291767. eCollection 2024.
To assess the utility of predictive models using ultrasound radiomic features to predict cervical lymph node metastasis (CLNM) in solitary papillary thyroid carcinoma (PTC) patients.
A total of 570 PTC patients were included (456 patients in the training set and 114 in the testing set). Pyradiomics was employed to extract radiomic features from preoperative ultrasound images. After dimensionality reduction and meticulous selection, we developed radiomics models using various machine learning algorithms. Univariate and multivariate logistic regressions were conducted to identify independent risk factors for CLNM. We established clinical models using these risk factors. Finally, we integrated radiomic and clinical models to create a combined nomogram. We plotted ROC curves to assess diagnostic performance and used calibration curves to evaluate alignment between predicted and observed probabilities.
A total of 1561 radiomics features were extracted from preoperative ultrasound images. After dimensionality reduction and feature selection, 16 radiomics features were identified. Among radiomics models, the logistic regression (LR) model exhibited higher predictive efficiency. Univariate and multivariate logistic regression results revealed that patient age, tumor size, gender, suspicious cervical lymph node metastasis, and capsule contact were independent predictors of CLNM (all < 0.05). By constructing a clinical model, the LR model demonstrated favorable diagnostic performance. The combined model showed superior diagnostic efficacy, with an AUC of 0.758 (95% CI: 0.712-0.803) in the training set and 0.759 (95% CI: 0.669-0.849) in the testing set. In the training dataset, the AUC value of the nomogram was higher than that of the clinical and radiomics models ( = 0.027 and 0.002, respectively). In the testing dataset, the AUC value of the nomogram model was also greater than that of the radiomics models ( = 0.012). However, there was no significant statistical difference between the nomogram and the clinical model ( = 0.928). The calibration curve indicated a good fit of the combined model.
Ultrasound radiomics technology offers a quantitative and objective method for predicting CLNM in PTC patients. Nonetheless, the clinical indicators persists as irreplaceable.
评估使用超声影像组学特征的预测模型对孤立性甲状腺乳头状癌(PTC)患者颈部淋巴结转移(CLNM)的预测效用。
共纳入570例PTC患者(训练集456例,测试集114例)。采用Pyradiomics从术前超声图像中提取影像组学特征。经过降维和精心筛选,我们使用各种机器学习算法建立了影像组学模型。进行单因素和多因素逻辑回归以确定CLNM的独立危险因素。我们使用这些危险因素建立了临床模型。最后,我们整合影像组学和临床模型以创建联合列线图。我们绘制ROC曲线以评估诊断性能,并使用校准曲线评估预测概率与观察概率之间的一致性。
从术前超声图像中总共提取了1561个影像组学特征。经过降维和特征选择,确定了16个影像组学特征。在影像组学模型中,逻辑回归(LR)模型表现出更高的预测效率。单因素和多因素逻辑回归结果显示,患者年龄、肿瘤大小、性别、可疑颈部淋巴结转移和包膜接触是CLNM的独立预测因素(均P<0.05)。通过构建临床模型,LR模型显示出良好的诊断性能。联合模型显示出更高的诊断效能,训练集中的AUC为0.758(95%CI:0.712 - 0.803),测试集中为0.759(95%CI:0.669 - 0.849)。在训练数据集中,列线图的AUC值高于临床和影像组学模型(分别为P = 0.027和0.002)。在测试数据集中,列线图模型的AUC值也大于影像组学模型(P = 0.012)。然而,列线图与临床模型之间无显著统计学差异(P = 0.928)。校准曲线表明联合模型拟合良好。
超声影像组学技术为预测PTC患者的CLNM提供了一种定量、客观的方法。尽管如此,临床指标仍然具有不可替代的作用。