首页|期刊导航|浙江大学学报(医学版)|多模态影像组学模型预测临床淋巴结阴性甲状腺乳头状微小癌患者颈部中央区淋巴结转移

多模态影像组学模型预测临床淋巴结阴性甲状腺乳头状微小癌患者颈部中央区淋巴结转移OA

Predictive value of a multimodal radiomics model for central lymph node metastasis in clinically node-negative papillary thyroid microcarcinoma based on machine learning

中文摘要英文摘要

目的:探索多模态影像组学结合机器学习对临床淋巴结阴性(cN0)甲状腺乳头状微小癌(PTMC)患者颈部中央区淋巴结转移(CLNM)的预测价值.方法:回顾性研究2022年1月至2024年6月常州市第一人民医院甲状腺外科和苏州市立医院甲乳外科收治的532例cN0 PTMC患者的临床资料,其中常州市第一人民医院487例(随机分为训练集352例和内部验证集135例),苏州市立医院45例作为外部验证集.临床特征筛选采用方差膨胀因子进行共线性分析,排除多重共线性的变量后,再通过logistic回归确定与CLNM相关的独立危险因素.采用三维Slicer软件提取超声影像组学特征874个,采用LIFEx软件提取CT影像组学特征1433个,通过统计学检验和互信息分析进行初筛,再经LASSO回归选择关键特征.基于优化后的关键特征构建随机森林、梯度提升机、支持向量机和K最近邻四种机器学习模型,采用十折交叉验证和网格搜索优化参数,通过受试者操作特征曲线下面积(AUC)、决策曲线分析及沙普利可加性特征解释(SHAP)评估模型性能.结果:logistic回归确定5个与CLNM显著相关的临床特征:年龄<55岁(OR=2.391,95%CI:1.072~5.334,P<0.05)、合并桥本甲状腺炎(OR=3.084,95%CI:1.474~6.453,P<0.01)、肿瘤最大直径(OR=11.086,95%CI:2.881~48.378,P<0.01)、单核细胞计数(OR=0.005,95%CI:0.001~0.044,P<0.01)、淋巴细胞与单核细胞比值(OR=0.564,95%CI:0.486~0.654,P<0.01).LASSO回归筛选出2个关键超声影像组学特征和6个关键CT影像组学特征.在四种模型中,基于多模态特征融合的梯度提升机模型性能最佳,其训练集、内部验证集和外部验证集的AUC分别为0.975、0.833和0.916,准确率分别为0.925、0.748和0.863,特异度分别为0.950、0.800和0.881,灵敏度分别为0.900、0.720和0.804.决策曲线分析显示梯度提升机模型在0.1~0.8的阈值概率范围内净临床获益最高.SHAP特征重要性分析显示,淋巴细胞与单核细胞比值及单核细胞计数对预测CLNM的贡献最大,肿瘤最大直径和影像组学纹理特征次之.结论:基于多模态特征融合的梯度提升机模型能准确预测cN0 PTMC患者CLNM风险,有助于制订个体化的术前风险评估和临床决策.

Objective:To develop and validate a machine learning-based multimodal radiomics model for predicting central lymph node metastasis(CLNM)in patients with clinically node-negative(cN0)papillary thyroid microcarcinoma(PTMC).Methods:A retrospective study was conducted on the clinical data of 532 consecutive cN0 PTMC patients who underwent surgery at the Department of Thyroid Surgery of the First People's Hospital of Changzhou and the Department of Thyroid and Breast Surgery of Suzhou Municipal Hospital between January 2022 and June 2024.Among them,487 patients from the First People's Hospital of Changzhou were randomly assigned to a training set(n=352)or an internal validation set(n=135),while 45 patients from Suzhou Municipal Hospital served as an external validation set.Clinical feature screening involved collinearity analysis using variance inflation factors,followed by logistic regression to identify independent risk factors for CLNM.Radiomics features were extracted from ultrasound and CT images.An initial feature screening was performed using statistical tests(t-test or Mann-Whitney U test,P<0.05)along with mutual information analysis(score>0.015),followed by least absolute shrinkage and selection operator(LASSO)regression for key feature selection.Using the optimized feature set,four machine learning models were constructed:random forest,gradient boosting machine(GBM),support vector machine,and K-nearest neighbors.Model performance was evaluated using the area under the receiver operating characteristic curve(AUC),decision curve analysis,and Shapley Additive exPlanations(SHAP)method.Results:Logistic regression identified five clinical features independently associated with CLNM:age<55 years(OR=2.391,95%CI:1.072-5.334,P<0.05),coexisting Hashimoto's thyroiditis(OR=3.084,95%CI:1.474-6.453,P<0.01),maximum tumor diameter(OR=11.086,95%CI:2.881-48.378,P<0.01),monocyte count(OR=0.005,95%CI:0.001-0.044,P<0.01),and the lymphocyte-to-monocyte ratio(OR=0.564,95%CI:0.486-0.654,P<0.01).LASSO regression selected two key ultrasound and six key CT radiomics features.Among the four models,the GBM model based on multimodal feature fusion performed best,with AUC values of 0.975,0.833,and 0.916,accuracies of 0.925,0.748,and 0.863,specificities of 0.950,0.800,and 0.881,and sensitivities of 0.900,0.720,and 0.804 in the training,internal validation,and external validation sets,respectively.Decision curve analysis showed that the GBM model provided the highest net clinical benefit within the threshold probability range of 0.1-0.8.SHAP feature importance analysis revealed that the lymphocyte-to-monocyte ratio and monocyte count contributed most to CLNM prediction,followed by maximum tumor diameter and radiomics texture features.Conclusion:The GBM-based multimodal radiomics model can accurately predict the risk of CLNM in patients with cN0 PTMC,which may facilitate individualized preoperative risk stratification and clinical descision-making.

冯嘉伟;杨语欣;刘水清;秦安成;叶晶;江勇

常州市第一人民医院甲状腺外科,江苏 常州 213003常州市第一人民医院甲状腺外科,江苏 常州 213003常州市第一人民医院超声医学科,江苏 常州 213003苏州市立医院甲乳外科,江苏 苏州 215000常州市第一人民医院甲状腺外科,江苏 常州 213003常州市第一人民医院甲状腺外科,江苏 常州 213003

医药卫生

甲状腺乳头状癌甲状腺微小癌中央区淋巴结转移影像组学预测模型机器学习

Papillary thyroid carcinomaMicrocarcinoma of thyroidCentral lymph node metastasisRadiomicsForecasting modelMachine learning

《浙江大学学报(医学版)》 2026 (1)

46-55,10

常州市龙城英才计划-青年科技人才托举工程(常科协[2023]52号)常州市第十一批科技计划(CJ20244009)This study was supported by Changzhou Longcheng Talent Program-Young Scientific and Technological Talent Support Project (Changzhou Association for Science and Technology[2023]No. 52) and the 11th Batch of Changzhou Science and Technology Program (CJ20244009)

10.3724/zdxbyxb-2025-0648

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