胰腺癌早期复发的术前预测:一种新的临床放射组学模型。

IF 4.7 2区 医学 Q1 ONCOLOGY
Yiting Xu, Ming Chen, Yang Chen, Zhihang Cai, Zongyan Luo, Bing Wang, Gaowei Jin, Yangyang Wang, Xu Han, Xing Xue, Liying Liu, Pu Liu, Zhihao Ma, Huan Luo, Tingbo Liang, Qi Zhang
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引用次数: 0

摘要

术后早期复发严重影响胰腺导管腺癌的预后,但全面的术前预测模型仍有待探索。在这项两中心回顾性研究中,895例treatment-naïve PDAC患者接受了直接切除术(训练n = 567;内部验证n = 241;外部验证n = 87),我们将早期复发定义为手术6个月内肿瘤复发。我们首先使用逻辑回归选择临床变量建立临床模型,并使用LASSO回归对术前CT图像提取的特征进行回归,建立放射组学模型,然后通过逻辑回归将这些模型组合成临床-放射组学综合模型。895例患者(男性64.4%,平均年龄64.4±8.7岁)中,213例(23.8%)出现早期复发。最终模型选择了4个临床变量(性别、CA125、放射学N分期、辅助治疗)和29个放射组学特征,训练队列的曲线下面积为0.862 (95% CI 0.828-0.896),内部验证为0.843(0.785-0.901),外部验证为0.848(0.748-0.949),均优于临床或放射组学模型。分层分析证实了亚组之间的稳健性,被模型分类为高风险的患者的无病生存期和总生存期明显较短(p
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preoperative prediction of early recurrence in pancreatic cancer: A novel clinical-radiomics model.

Early postoperative recurrence critically impacts pancreatic ductal adenocarcinoma prognosis, yet comprehensive preoperative prediction models remain underexplored. In this two-center retrospective study of 895 treatment-naïve PDAC patients who underwent direct resection (training n = 567; internal validation n = 241; external validation n = 87), we defined early recurrence as tumor relapse within 6 months of surgery. We first built a clinical model using logistic regression to select clinical variables and a radiomics model by applying LASSO regression to features extracted from preoperative CT images, then combined these into an integrated clinical-radiomics model via logistic regression. Of the 895 patients (64.4% male; mean age 64.4 ± 8.7 years), 213 (23.8%) experienced early recurrence. Four clinical variables (gender, CA125, radiologic N stage, adjuvant treatment) and 29 radiomics features were selected for the final model, which achieved area under the curve values of 0.862 (95% CI 0.828-0.896) in the training cohort, 0.843 (0.785-0.901) in internal validation, and 0.848 (0.748-0.949) in external validation-each outperforming either the clinical or radiomics model alone. Stratified analyses confirmed robustness across subgroups, and patients classified as high risk by the model had significantly shorter disease-free and overall survival (both p < .001). This clinical-radiomics model offers a preoperative tool to identify PDAC patients at high risk of early postoperative recurrence, thereby supporting personalized treatment planning beyond immediate surgery.

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来源期刊
CiteScore
13.40
自引率
3.10%
发文量
460
审稿时长
2 months
期刊介绍: The International Journal of Cancer (IJC) is the official journal of the Union for International Cancer Control—UICC; it appears twice a month. IJC invites submission of manuscripts under a broad scope of topics relevant to experimental and clinical cancer research and publishes original Research Articles and Short Reports under the following categories: -Cancer Epidemiology- Cancer Genetics and Epigenetics- Infectious Causes of Cancer- Innovative Tools and Methods- Molecular Cancer Biology- Tumor Immunology and Microenvironment- Tumor Markers and Signatures- Cancer Therapy and Prevention
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