Liu Xingqi, Li Haoyang, Zhang Lixin, Gao Qing, Wang Yingfei
Department of General Surgery, Jinzhou Medical University Postgraduate Training Base (Liaoyang Central Hospital), Liaoyang, China.
Department of General Surgery, Liaoyang Central Hospital, Liaoyang, China.
Gland Surg. 2025 Mar 31;14(3):344-357. doi: 10.21037/gs-2024-508. Epub 2025 Mar 26.
Papillary thyroid microcarcinoma (PTMC), a subset of papillary thyroid carcinoma (PTC), is characterized by tumors ≤10 mm in size. While generally indolent, central lymph node metastasis (CLNM) is associated with higher risks of recurrence and distant metastasis. Existing prediction models for CLNM predominantly depend on isolated clinical or imaging parameters, failing to integrate multidimensional predictors such as clinicopathological, ultrasonographic, and serological features. This limitation significantly undermines their clinical applicability. Therefore, we developed a machine learning-based nomogram that integrates comprehensive predictors to enhance preoperative risk stratification and facilitate personalized surgical decision-making.
A retrospective study was conducted on 503 PTMC patients who underwent thyroidectomy in Liaoyang Central Hospital between 2020 and 2023. Patients were randomly divided into training (n=352) and validation (n=151) cohorts. Inclusion criteria required preoperative imaging to confirm no cervical lymph node metastasis (LNM), complete clinicopathologic data, and initial surgery with central lymph node dissection, as well as postoperative pathology confirming PTC. Multidimensional predictors (clinical demographics, ultrasonographic features, serological markers, and histopathological characteristics) were analyzed. CLNM was definitively diagnosed via postoperative histopathology. Least absolute shrinkage and selection operator (LASSO) regression was used to identify key predictors, which were incorporated into a logistic regression model. The model's performance was evaluated using receiver operating characteristic (ROC) curves, calibration plots, and decision curve analysis (DCA).
Among 503 enrolled patients (mean age: 48.5 years; male: 24%, female: 76%), CLNM was pathology confirmed in 28.8% (145/503). Age, gender, tumor size, tumor location, and extrathyroidal extension (ETE) were identified as independent predictors of CLNM. The nomogram achieved an area under the curve (AUC) of 0.88 (sensitivity 0.84, specificity 0.76) in the training cohort and 0.78 (sensitivity 0.80, specificity 0.70) in the validation cohort. Calibration plots indicated excellent agreement between predicted and observed probabilities, with mean absolute errors below 0.05. DCA demonstrated clinical utility for threshold probabilities ranging from 15% to 88%. These results suggest that the nomogram has good predictive performance and clinical applicability in assessing the risk of CLNM in PTMC patients.
This Machine learning-based predictive nomogram provides a reliable tool for assessing CLNM risk in PTMC patients, supporting personalized surgical strategies. Further validation in external cohorts is required to confirm its generalizability.
甲状腺微小乳头状癌(PTMC)是甲状腺乳头状癌(PTC)的一个亚型,其特征为肿瘤大小≤10mm。虽然通常进展缓慢,但中央区淋巴结转移(CLNM)与更高的复发和远处转移风险相关。现有的CLNM预测模型主要依赖单一的临床或影像参数,未能整合临床病理、超声和血清学特征等多维度预测指标。这一局限性严重削弱了它们的临床适用性。因此,我们开发了一种基于机器学习的列线图,该列线图整合了综合预测指标,以加强术前风险分层并促进个性化手术决策。
对2020年至2023年期间在辽阳中心医院接受甲状腺切除术的503例PTMC患者进行了一项回顾性研究。患者被随机分为训练组(n = 352)和验证组(n = 151)。纳入标准要求术前影像检查确认无颈部淋巴结转移(LNM)、完整的临床病理数据、初次手术时行中央区淋巴结清扫,以及术后病理确诊为PTC。分析了多维度预测指标(临床人口统计学、超声特征、血清学标志物和组织病理学特征)。CLNM通过术后组织病理学明确诊断。使用最小绝对收缩和选择算子(LASSO)回归来识别关键预测指标,并将其纳入逻辑回归模型。使用受试者工作特征(ROC)曲线、校准图和决策曲线分析(DCA)评估模型的性能。
在503例纳入患者中(平均年龄:48.5岁;男性:24%,女性:76%),28.8%(145/503)经病理证实存在CLNM。年龄、性别、肿瘤大小、肿瘤位置和甲状腺外侵犯(ETE)被确定为CLNM的独立预测指标。该列线图在训练组中的曲线下面积(AUC)为0.88(灵敏度0.84,特异度0.76),在验证组中的AUC为0.78(灵敏度0.80,特异度0.70)。校准图显示预测概率与观察概率之间具有良好的一致性,平均绝对误差低于0.05。DCA表明该列线图在阈值概率为15%至88%时具有临床实用性。这些结果表明,该列线图在评估PTMC患者CLNM风险方面具有良好的预测性能和临床适用性。
这种基于机器学习的预测列线图为评估PTMC患者的CLNM风险提供了一种可靠的工具,支持个性化手术策略。需要在外部队列中进一步验证以确认其可推广性。