Clinical and CT characteristics for predicting lymph node metastasis in patients with synchronous multiple primary lung adenocarcinoma.

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING BMC Medical Imaging Pub Date : 2024-10-29 DOI:10.1186/s12880-024-01464-5
Yantao Yang, Ziqi Jiang, Qiubo Huang, Wen Jiang, Chen Zhou, Jie Zhao, Huilian Hu, Yaowu Duan, Wangcai Li, Jia Luo, Jiezhi Jiang, Lianhua Ye
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Abstract

Purpose: This study aims to investigate the risk factors for lymph node metastasis (LNM) in synchronous multiple primary lung cancer (sMPLC) using clinical and CT features, and to offer guidance for preoperative LNM prediction and lymph node (LN) resection strategy.

Materials and methods: A retrospective analysis was conducted on the clinical data and CT features of patients diagnosed with sMPLC at the Third Affiliated Hospital of Kunming Medical University from January 1, 2018 to December 31, 2022. Patients were classified into two groups: the LNM group and the non-LNM (n-LNM) group. The study utilized univariate analysis to examine the disparities in clinical data and CT features between the two groups. Additionally, multivariate analysis was employed to discover the independent risk variables for LNM. The diagnostic efficacy of various parameters was evaluated using the receiver operating characteristic (ROC) curve.

Results: Among the 688 patients included in this study, 59 exhibited LNM. Univariate analysis revealed significant differences between the LNM and n-LNM groups in terms of gender, smoking history, CYFRA21-1 level, CEA level, NSE level, lesion type, total lesion diameter, main lesion diameter, spiculation sign, lobulation sign, cavity sign, and pleural traction sign. Logistic regression identified CEA level (OR = 1.042, 95%CI: 1.009-1.075), lesion type (OR = 9.683, 95%CI: 3.485-26.902), and main lesion diameter (OR = 1.677, 95%CI: 1.347-2.089) as independent predictors of LNM. The regression equation for the joint prediction was as follows: logit(p)= -7.569+0.041*CEA level +2.270* lesion type +0.517* main lesion diameter.ROC curve analysis showed that the AUC for CEA level was 0.765 (95% CI, 0.694-0.836), for lesion type was 0.794 (95% CI, 0.751-0.838), for main lesion diameter was 0.830 (95% CI, 0.784-0.875), and for the combine predict model was 0.895 (95% CI, 0.863-0.928).

Conclusion: The combination of clinical and imaging features can better predict the status of LNM of sMPLC, and the prediction efficiency is significantly higher than that of each factor alone, and can provide a basis for lymph node management decision.

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预测同步多发性原发性肺腺癌患者淋巴结转移的临床和 CT 特征。
目的:本研究旨在利用临床和CT特征研究同步多发原发性肺癌(sMPLC)淋巴结转移(LNM)的危险因素,为术前LNM预测和淋巴结(LN)切除策略提供指导:对昆明医科大学第三附属医院2018年1月1日至2022年12月31日确诊的sMPLC患者的临床资料和CT特征进行回顾性分析。患者被分为两组:LNM组和非LNM(n-LNM)组。研究采用单变量分析法来检验两组患者在临床数据和 CT 特征方面的差异。此外,研究还采用了多变量分析来发现 LNM 的独立风险变量。采用接收者操作特征曲线(ROC)评估了各种参数的诊断效果:本研究共纳入 688 例患者,其中 59 例表现为 LNM。单变量分析显示,LNM 组和 n-LNM 组在性别、吸烟史、CYFRA21-1 水平、CEA 水平、NSE 水平、病变类型、病变总直径、主要病变直径、棘征、分叶征、空洞征和胸膜牵引征等方面存在显著差异。逻辑回归确定 CEA 水平(OR = 1.042,95%CI:1.009-1.075)、病变类型(OR = 9.683,95%CI:3.485-26.902)和主病变直径(OR = 1.677,95%CI:1.347-2.089)是 LNM 的独立预测因素。联合预测的回归方程如下:Logit(P)=-7.569+0.041*CEA水平+2.270*病变类型+0.517*主病变直径。ROC曲线分析显示,CEA水平的AUC为0.ROC曲线分析显示,CEA水平的AUC为0.765(95% CI,0.694-0.836),病变类型的AUC为0.794(95% CI,0.751-0.838),主病变直径的AUC为0.830(95% CI,0.784-0.875),联合预测模型的AUC为0.895(95% CI,0.863-0.928):结论:结合临床和影像学特征可以更好地预测sMPLC的淋巴结状态,其预测效率明显高于单独预测,可为淋巴结管理决策提供依据。
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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
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