Deng Huan, Lu Zhenhua, Wang Yajie, Xiao Lin, Pan Yisheng
Department of Gastrointestinal Surgery, Peking University First Hospital, Beijing 100034, China.
Department of General Surgery, The First Medical Center, Chinese People's Liberation Army General Hospital, Beijing 100853, China.
Curr Oncol. 2025 Aug 21;32(8):473. doi: 10.3390/curroncol32080473.
Objective This study aimed to show the clinicopathological characteristics of large retroperitoneal liposarcoma (RLS) and to develop a customized nomogram model for patients with large RLS. Methods A total of 1735 patients diagnosed with RLS were selected from the public SEER database. Among them, 1113 patients with a maximum tumor diameter greater than 150 mm were included for further analysis. Nomogram models were developed based on Lasso and multivariate Cox regression analyses. A total of 166 patients that presented in the same period at our institution were used for external validations. Results A larger tumor size in RLS was associated with worse survival outcomes. Lasso and Cox regression analyses consistently identified age, TNM stage, occurrence pattern, histology, and surgery as important prognostic factors for OS. The constructed model demonstrated robust predictive performance, with better time-ROC (time-dependent receiver operating characteristic) for 1-year (83.1%), 3-year (83.8%), and 5-year (81.4%) survival in the training cohort. The concordance index (C-index) was approximately 0.80 in both the training and validation cohorts, reflecting excellent discriminatory ability of the model. Survival risk stratification analysis revealed significant differences in survival outcomes of large RLS (HR = 4.12 [3.31-5.12], < 0.001, in the training cohort). Decision curve analysis (DCA) confirmed that the nomogram provided greater net benefits across a range of threshold probabilities. Conclusion This study identified important prognostic factors for survival in patients with large RLS and developed a reliable nomogram for predicting OS. The model's strong predictive performance supports its use in personalized treatment strategies, improving prognosis assessment and clinical decision making for these patients.
目的 本研究旨在揭示大型腹膜后脂肪肉瘤(RLS)的临床病理特征,并为大型RLS患者开发定制的列线图模型。方法 从公共SEER数据库中选取1735例诊断为RLS的患者。其中,纳入1113例最大肿瘤直径大于150 mm的患者进行进一步分析。基于套索和多变量Cox回归分析开发列线图模型。共166例同期在本机构就诊的患者用于外部验证。结果 RLS中较大的肿瘤大小与较差的生存结果相关。套索和Cox回归分析一致确定年龄、TNM分期、发生模式、组织学和手术是总生存期的重要预后因素。构建的模型表现出强大的预测性能,在训练队列中,1年(83.1%)、3年(83.8%)和5年(81.4%)生存率的时间依赖受试者工作特征曲线(time-ROC)较好。训练队列和验证队列中的一致性指数(C指数)均约为0.80,反映了模型出色的区分能力。生存风险分层分析显示大型RLS的生存结果存在显著差异(训练队列中HR = 4.12 [3.31 - 5.12],P < 0.001)。决策曲线分析(DCA)证实列线图在一系列阈值概率范围内提供了更大的净效益。结论 本研究确定了大型RLS患者生存的重要预后因素,并开发了一种可靠的列线图用于预测总生存期。该模型强大的预测性能支持其在个性化治疗策略中的应用,改善这些患者的预后评估和临床决策。