Department of Ultrasound, Beijing Friendship Hospital, Capital Medical University, Beijing, China.
Front Endocrinol (Lausanne). 2023 Jun 20;14:1186381. doi: 10.3389/fendo.2023.1186381. eCollection 2023.
The aim of this study was to develop and validate a dynamic nomogram by combining conventional ultrasound (US) and contrast-enhanced US (CEUS) to preoperatively evaluate the probability of central lymph node metastases (CLNMs) for patients with papillary thyroid carcinoma (PTC).
A total of 216 patients with PTC confirmed pathologically were included in this retrospective and prospective study, and they were divided into the training and validation cohorts, respectively. Each cohort was divided into the CLNM (+) and CLNM (-) groups. The least absolute shrinkage and selection operator (LASSO) regression method was applied to select the most useful predictive features for CLNM in the training cohort, and these features were incorporated into a multivariate logistic regression analysis to develop the nomogram. The nomogram's discrimination, calibration, and clinical usefulness were assessed in the training and validation cohorts.
In the training and validation cohorts, the dynamic nomogram (https://clnmpredictionmodel.shinyapps.io/PTCCLNM/) had an area under the receiver operator characteristic curve (AUC) of 0.844 (95% CI, 0.755-0.905) and 0.827 (95% CI, 0.747-0.906), respectively. The Hosmer-Lemeshow test and calibration curve showed that the nomogram had good calibration ( = 0.385, = 0.285). Decision curve analysis (DCA) showed that the nomogram has more predictive value of CLNM than US or CEUS features alone in a wide range of high-risk threshold. A Nomo-score of 0.428 as the cutoff value had a good performance to stratify high-risk and low-risk groups.
A dynamic nomogram combining US and CEUS features can be applied to risk stratification of CLNM in patients with PTC in clinical practice.
本研究旨在开发并验证一种动态列线图,该列线图结合常规超声(US)和超声造影(CEUS),以术前评估甲状腺乳头状癌(PTC)患者中央淋巴结转移(CLNM)的概率。
回顾性和前瞻性研究共纳入 216 例经病理证实的 PTC 患者,分别纳入训练队列和验证队列。每个队列分为 CLNM(+)和 CLNM(-)组。应用最小绝对收缩和选择算子(LASSO)回归方法在训练队列中选择对 CLNM 最有用的预测特征,并将这些特征纳入多变量逻辑回归分析中以建立列线图。在训练和验证队列中评估列线图的判别、校准和临床实用性。
在训练和验证队列中,动态列线图(https://clnmpredictionmodel.shinyapps.io/PTCCLNM/)的受试者工作特征曲线(ROC)下面积分别为 0.844(95%CI,0.755-0.905)和 0.827(95%CI,0.747-0.906)。Hosmer-Lemeshow 检验和校准曲线表明,该列线图具有良好的校准( = 0.385, = 0.285)。决策曲线分析(DCA)表明,在广泛的高风险阈值范围内,列线图比 US 或 CEUS 特征具有更高的 CLNM 预测价值。以 Nomo 评分 0.428 为截断值,可较好地对高危和低危组进行分层。
联合 US 和 CEUS 特征的动态列线图可用于临床实践中 PTC 患者 CLNM 的风险分层。