[前列腺癌盆腔淋巴结转移的术前预测模型:结合临床特征和多参数MRI]。

Q3 Medicine
北京大学学报(医学版) Pub Date : 2025-08-18
Z Wang, S Yu, H Zheng, J Tao, Y Fan, X Zhang
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引用次数: 0

摘要

目的:分析前列腺癌盆腔淋巴结转移(pelvic lymph node metastasis, PLNM)的临床特征,建立前列腺癌盆腔淋巴结转移的术前预测模型,减少不必要的延长性盆腔淋巴结清扫(extended pelvic lymph node dissection, ePLND)。方法:根据预先制定的纳入和排除标准,回顾性收集2014 - 2024年在郑州大学第一附属医院行根治性前列腺切除术和ePLND的344例患者,其中病理证实为淋巴结阳性的患者77例(22.4%)。收集临床特征、MRI报告和病理结果。然后将数据随机分为训练组(241例,占70%)和验证组(103例,占30%)。采用单因素和多因素Logistic回归分析构建PLNM术前预测模型。结果:单因素Logistic回归分析显示,总前列腺特异性抗原(tPSA) (P=0.021)、游离前列腺特异性抗原(fPSA) (P=0.002)、fPSA与tPSA之比(fPSA/tPSA) (P=0.011)、活检阳性穿刺百分比(P < 0.001)、前列腺影像学报告和数据系统(PI-RADS)评分(P=0.004)、活检Gleason评分≥8 (P=0.005)、临床T分期(P < 0.001)、mri指示淋巴结受累(MRI-LNI) (P < 0.001)是PLNM的显著预测因子。多因素Logistic回归分析显示,活检切片阳性百分比(OR=91.24, 95%CI: 13.34 ~ 968.68)、PI-RADS评分(OR=7.64, 95%CI: 1.78 ~ 138.06)和MRI-LNI (OR=4.67, 95%CI: 1.74 ~ 13.24)是PLNM的独立危险因素。通过对这三个变量的综合,得到了一个新的预测PLNM的模态图。与单个预测因子:活检阳性切片百分比[曲线下面积(AUC)=0.806]、PI-RADS评分(AUC=0.679)和MRI-LNI (AUC=0.768)相比,纳入所有三个变量的多变量模型显示出显著优于预测性能(AUC=0.883)。校准曲线和决策曲线分析一致证实,与单变量模型相比,多变量模型具有较高的预测准确性,并提供显著的净临床效益。使用6%的截止值,多参数模型仅错过了约5.2%的PLNM病例(4/77),而减少了约53%的ePLND手术(139/267),显示出良好的预测效果。结论:活检针阳性百分比、PI-RADS评分和MRI-LNI是PLNM的独立危险因素。构建的多变量模型显著提高了ePLND的预测效果,为指导临床决策提供了有价值的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[A preoperative prediction model for pelvic lymph node metastasis in prostate cancer: Integrating clinical characteristics and multiparametric MRI].

Objective: To analyze the clinical features associated with pelvic lymph node metastasis (PLNM) in prostate cancer and to construct a preoperative prediction model for PLNM, thereby reducing unnecessary extended pelvic lymph node dissection (ePLND).

Methods: Based on predefined inclusion and exclusion criteria, 344 patients who underwent radical prostatectomy and ePLND at the First Affiliated Hospital of Zhengzhou University between 2014 and 2024 were retrospectively enrolled, among whom, 77 patients (22.4%) were pathologically confirmed to have lymph node-positive disease. The clinical characteristics, MRI reports, and pathological results were collected. The data were then randomly divi-ded into a training cohort (241 cases, 70%) and a validation cohort (103 cases, 30%). Univariate and multivariate Logistic regression analysis were employed to construct a preoperative prediction model for PLNM.

Results: Univariate Logistic regression analysis revealed that total prostate specific antigen (tPSA) (P=0.021), free prostate specific antigen (fPSA) (P=0.002), fPSA to tPSA ratio (fPSA/tPSA) (P=0.011), percentage of positive biopsy cores (P < 0.001), prostate imaging reporting and data system (PI-RADS) score (P=0.004), biopsy Gleason score ≥8 (P=0.005), clinical T stage (P < 0.001), and MRI-indicated lymph node involvement (MRI-LNI) (P < 0.001) were significant predictors of PLNM. Multivariate Logistic regression analysis demonstrated that the percentage of positive biopsy cores (OR=91.24, 95%CI: 13.34-968.68), PI-RADS score (OR=7.64, 95%CI: 1.78-138.06), and MRI-LNI (OR=4.67, 95%CI: 1.74-13.24) were independent risk factors for PLNM. And a novel nomogram for predicting PLNM was developed by integrating all these three variables. Compared with the individual predictors: percentage of positive biopsy cores [area under curve (AUC)=0.806], PI-RADS score (AUC=0.679), and MRI-LNI (AUC=0.768), the multivariate model incorporating all three variables demonstrated significantly superior predictive performance (AUC=0.883). Consistently, calibration curves and decision curve analyses confirmed that the multivariable model had high predictive accuracy and provided significant net clinical benefit relative to single-variable models. And using a cutoff of 6%, the multiparameter model missed only approximately 5.2% of PLNM cases (4/77), while reducing approximately 53% of ePLND procedures (139/267), demonstrating favorable predictive efficacy.

Conclusion: Percentage of positive biopsy cores, PI-RADS score and MRI-LNI are independent risk factors for PLNM. The constructed multivariate model significantly improves predictive efficacy, offering a valuable tool to guide clinical decisions on ePLND.

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来源期刊
北京大学学报(医学版)
北京大学学报(医学版) Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
9815
期刊介绍: Beijing Da Xue Xue Bao Yi Xue Ban / Journal of Peking University (Health Sciences), established in 1959, is a national academic journal sponsored by Peking University, and its former name is Journal of Beijing Medical University. The coverage of the Journal includes basic medical sciences, clinical medicine, oral medicine, surgery, public health and epidemiology, pharmacology and pharmacy. Over the last few years, the Journal has published articles and reports covering major topics in the different special issues (e.g. research on disease genome, theory of drug withdrawal, mechanism and prevention of cardiovascular and cerebrovascular diseases, stomatology, orthopaedic, public health, urology and reproductive medicine). All the topics involve latest advances in medical sciences, hot topics in specific specialties, and prevention and treatment of major diseases. The Journal has been indexed and abstracted by PubMed Central (PMC), MEDLINE/PubMed, EBSCO, Embase, Scopus, Chemical Abstracts (CA), Western Pacific Region Index Medicus (WPR), JSTChina, and almost all the Chinese sciences and technical index systems, including Chinese Science and Technology Paper Citation Database (CSTPCD), Chinese Science Citation Database (CSCD), China BioMedical Bibliographic Database (CBM), CMCI, Chinese Biological Abstracts, China National Academic Magazine Data-Base (CNKI), Wanfang Data (ChinaInfo), etc.
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