cN0期甲状腺乳头状癌右喉返神经深层淋巴结转移的影响因素及预测模型构建
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武汉大学人民医院 乳腺甲状腺外科,湖北 武汉 430060

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董萌,武汉大学人民医院硕士研究生,主要从事甲状腺肿瘤方面研究。

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Factors and predictive model construction for lymph nodes posterior to right recurrent laryngeal nerve metastasis in cN0-stage papillary thyroid carcinoma
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Department of Breast and Thyroid Surgery, Renmin Hospital of Wuhan University, Wuhan 430060, China

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    摘要:

    背景与目的 甲状腺乳头状癌(PTC)患者往往伴有中央区淋巴结转移,单/双侧甲状腺腺叶切除加中央区淋巴结清扫(CLND)是主要的治疗手段。然而因解剖结构的差异,对于颈部淋巴结在临床上呈阴性(cN0)的PTC患者是否需要进行右侧喉返神经深层淋巴结(LN-prRLN)清扫,仍存在争议。目前,有关影响cN0期PTC患者LN-prRLN转移因素的研究较少,缺乏个体化的定量预测LN-prRLN转移风险的工具。因此,本研究旨在探讨影响cN0期PTC患者LN-prRLN转移的因素,并构建个体化预测模型,以提供行LN-prRLN清扫的决策依据。方法 回顾性分析2019年6月—2022年12月武汉大学人民医院乳腺甲状腺外科行甲状腺手术的410例PTC患者的临床病理资料,按7∶3的比例随机分为训练组和验证组。根据LN-prRLN术后病理转移结果,将患者分为LN-prRLN阳性组和LN-prRLN阴性组。收集患者年龄、性别、体质量指数(BMI)、甲状腺超声结果、甲状腺功能、术后病理、淋巴结转移情况等资料,并通过单因素分析及多因素Logistic回归分析确定影响cN0期PTC LN-prRLN转移的独立危险因素,根据筛选出的独立危险因素构建可视化列线图预测模型。并通过绘制ROC曲线计算曲线下面积(AUC)、校准曲线及决策曲线分析(DCA)对模型性能进行验证。结果 LN-prRLN阳性组与LN-prRLN阴性组比较,单因素分析发现在肿瘤大小(P<0.001)、肿瘤多灶性(P=0.021)、被膜/腺外侵犯(P=0.011)和右颈ⅥA区淋巴结阳性(P<0.001)差异有统计学意义;多因素Logistic回归分析结果表明,癌灶较大(P=0.037)、肿瘤多灶性(P=0.031)、被膜/腺外侵犯(P=0.033)、右颈ⅥA区淋巴结阳性(P<0.001),是cN0期PTC患者LN-prRLN转移的独立危险因素。基于上述因素建立预测模型并以可视化列线图呈现。经过验证,训练组和验证组中该模型的AUC分别为0.870(95% CI=0.807~0.933)和0.857(95% CI=0.750~0.964)。训练组和验证组的校准曲线近似于理想曲线,表明该模型的预测概率与实际概率相一致。DCA也显示,在临床中应用该模型可获得收益。结论 根据本研究所确定的cN0期PTC的LN-prRLN转移独立危险因素建立的可视化列线图预测模型有助于客观、个体化地评估颈部淋巴结,尤其是LN-prRLN的转移情况,平衡手术解剖收益和手术并发症风险,并为是否行LN-prRLN清扫提供证据,优化诊疗。

    Abstract:

    Background and Aims Patients with papillary thyroid carcinoma (PTC) often present with central lymph node metastasis, and unilateral/bilateral thyroid lobectomy combined with central lymph node dissection (CLND) is the primary treatment approach. However, due to anatomical variations, there is still controversy regarding whether dissection of the lymph nodes posterior to right recurrent laryngeal nerve (LN-prRLN) should be performed in PTC patients with clinically negative neck lymph nodes (cN0). Currently, there is limited research on the factors influencing LN-prRLN metastasis in cN0-stage PTC patients, and there is a lack of personalized quantitative prediction tools for assessing the risk of LN-prRLN metastasis. Therefore, this study was conducted to explore the factors for LN-prRLN metastasis in cN0-stage PTC patients and develop an individualized prediction model to provide decision-making guidance for LN-prRLN dissection.Methods The clinicopathologic data of 410 patients with papillary thyroid cancer who underwent thyroid surgery at Department of Breast and Thyroid Surgery, Renmin Hospital of Wuhan University from June 2019 to December 2022 were retrospectively analyzed. The patients were randomly divided into a training group and a validation group in a 7∶3 ratio. Based on the postoperative pathological results of LN-prRLN metastasis, the patients were categorized into LN-prRLN positive and LN-prRLN negative groups. Data including patient age, sex, BMI, thyroid ultrasound results, thyroid function, postoperative pathology, and lymph node metastasis were collected. Univariate analysis and multivariate Logistic regression analysis were performed to determine independent risk factors for LN-prRLN metastasis in cN0-stage PTC. A visualized prediction nomogram model was constructed based on the selected independent risk factors. The model's performance was validated by plotting the ROC curve to calculate the area under the curve (AUC), calibration curves and decision curve analysis.Results In comparison between the LN-prRLN positive group and the LN-prRLN negative group, univariate analysis revealed statistically significant differences in tumor size (P<0.001), tumor multifocality (P=0.021), capsular/extrathyroidal invasion (P=0.011), and positive lymph nodes in the right neck level VIA (P<0.001). The results of multivariate Logistic regression analysis showed that larger tumor size (P=0.037), tumor multifocality (P=0.031), capsular/extrathyroidal invasion (P=0.033), and positive lymph nodes of level VIA on the right side (P<0.001) were independent risk factors for LN-prRLN metastasis in cN0-stage PTC patients. A prediction model based on these factors was established and presented a visual nomogram. After validation, the AUC of this model in the training group and validation group were 0.870 (95% CI=0.807-0.933) and 0.857 (95% CI=0.750-0.964), respectively. The calibration curves for both the training and validation groups closely approximated the ideal curve, indicating that the predicted probabilities from the model were consistent with the actual probabilities. Decision curve analysis also demonstrated that applying this model in clinical practice resulted in clinical gains.Conclusion The visualized predictive nomogram model established based on independent risk factors for LN-prRLN metastasis in cN0-stage PTC, as determined by this study, helps to objectively and individually assess cervical lymph nodes, particularly the metastasis of LN-prRLN. It balances the surgical anatomical benefits and the risk of surgical complications, and provides evidence for whether LN-prRLN dissection should be performed, optimizing diagnosis and treatment.

    表 3 训练组LN-prRLN转移的多因素回归分析Table 3 Multivariate regression analysis of factors for LN-prRLN metastasis in training group
    表 1 训练组和验证组临床病理资料比较Table 1 Comparison of clinical data between training group and validation group
    图1 预测cN0期PTC LN-prRLN转移的列线图模型Fig.1 Nomogram model for LN-prRLN metastasis in cN0 stage PTC
    图2 训练组和验证组的ROC曲线Fig.2 The ROC curves of the training group and validation group
    图3 训练组和验证组的校准曲线Fig.3 The calibration curves of the training group and validation group
    图4 训练组和验证组的DCA曲线Fig.4 DCA curves of the training group and validation group
    表 2 训练组LN-prRLN转移的单因素分析Table 2 Univariate analysis of factors for LN-prRLN metastasis in training group
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董萌,洪晨忱,聂昕玥,廖仕翀,姚峰. cN0期甲状腺乳头状癌右喉返神经深层淋巴结转移的影响因素及预测模型构建[J].中国普通外科杂志,2023,32(5):673-681.
DOI:10.7659/j. issn.1005-6947.2023.05.006

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  • 收稿日期:2023-02-20
  • 最后修改日期:2023-04-29
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  • 在线发布日期: 2023-06-03