高危前列腺癌患者穿刺病理预测模型的构建及验证研究
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1.南京医科大学第一附属医院泌尿外科;2.徐州医科大学附属医院泌尿外科

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江苏省科教能力提升工程(编号:ZDXK202219)


Construction and validation study of a puncture pathology prediction model for high-risk prostate cancer patients
Author:
Affiliation:

1.Department of Urology, The First Affiliated Hospital of Nanjing Medical University;2.LI Jie

Fund Project:

Jiangsu Province Capability Improvement Project through Science, Technology andEducation

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    摘要:

    [摘 要]:目的:通过分析高危前列腺癌患者的临床数据,建立模型预测其前列腺病灶的病理性质,识别可免于系统穿刺而单独进行靶向穿刺的患者,优化当前前列腺穿刺活检策略。方法:回顾性分析了2022年1月至2024年6月于南京医科大学第一附属医院行前列腺穿刺患者的临床数据,筛选出符合条件的患者分为训练集和验证集。单因素和多因素逻辑回归分析用于筛选前列腺靶向穿刺病理的显著相关因素。基于训练集的数据构建预测模型,并在验证集中验证该模型效能。受试者工作特征(Receiver Operating Characteristic,ROC)曲线用于评估模型在两个数据集中的诊断性能。结果:年龄(X1)、病灶数量(X2)、病灶所在的组织学区域(X3)、前列腺影像和数据报告系统(Prostate Imaging Reporting and Data System,PI-RADS)评分(X4)以及前列腺特异性抗原密度(X5)是与患者前列腺靶向穿刺病理相关的变量。预测模型的数学表达式为:p=1/[1+e^(-15.770+0.067×X1-0.658×X2+0.381×X3+2.271×X4+5.742×X5)]。预测模型在训练集中ROC曲线下面积(Area under the curve,AUC)为0.856(95%置信区间:0.812-0.900),在验证集中AUC为0.886(95%置信区间:0.776-0.995)。结论:本研究构建的针对高危前列腺癌患者靶向穿刺病理的预测模型能指导临床上前列腺穿刺策略,在保持良好诊断性能的同时减少穿刺针数,从而减少穿刺并发症的发生和医疗资源的浪费。 关键词:前列腺癌;前列腺穿刺活检;核磁共振;预测模型;

    Abstract:

    [Abstract]: Objective: To optimise the current strategy of prostate puncture biopsy by analysing the clinical data of high-risk prostate cancer patients, establishing a model to predict the pathological nature of their prostate lesions, and identifying patients who can be exempted from systematic biopsy and undergo targeted puncture alone. Methods: Clinical data of patients who underwent prostate puncture at the First Affiliated Hospital of Nanjing Medical University from January 2022 to June 2024 were retrospectively analysed, and eligible patients were screened and divided into a training set and a validation set. Single-factor and multifactor logistic regression analyses were used to screen the significant correlates of the pathology of prostate targeted biopsy. A predictive model was constructed based on the data from the training set, and the model efficacy was verified in the validation set. Receiver Operating Characteristic (ROC) curves were used to assess the diagnostic performance of the model in both data sets.Results: Age (X1), number of lesions (X2), histological region in which the lesions are located (X3), Prostate Imaging Reporting and Data System (PI-RADS) score (X4), and prostate-specific antigen density (X5) were the variables associated with the patient's prostate targeted biopsy pathology. The mathematical expression of the predictive model is: p=1/[1+e^(-15.770+0.067×X1-0.658×X2+0.381×X3+2.271×X4+5.742×X5)]. The Area under the curve (AUC) of the prediction model was 0.856 (95% confidence interval: 0.812-0.900) in the training set and 0.886 (95% confidence interval: 0.776-0.995) in the validation set.Conclusion: The constructed prediction model for targeted biopsy pathology in high-risk prostate cancer patients can guide the clinical strategy of prostate puncture to maintain good diagnostic performance while reducing the number of puncture needles, thus reducing the occurrence of complications and the waste of medical resources. Keywords: prostate cancer; prostate puncture biopsy; MRI; predictive model;

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  • 收稿日期:2025-03-31
  • 最后修改日期:2025-06-02
  • 录用日期:2025-07-02
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