基于SEER数据库的胃癌肝转移预后因素分析与预后模型构建
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周彤, Email: zhoutong0088@163.com

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川北医学院科研发展计划资助项目(CBY17-A-ZD06);四川省南充市市校联合合作科研专项资金资助项目(18SXHZ0548)。


Analysis of prognostic factors and construction of prognostic models for gastric cancer liver metastasis based on SEER database
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    摘要:

    背景与目的:胃癌其因具有恶性程度高、易早期转移等特点而导致患者往往具有较差的临床预后,其中胃癌肝转移(GCLM)更是导致患者死亡的主要因素,然而,目前对于GCLM的预后评价手段仍然存在着一定的不足。因此,本研究利用SEER数据库分析GCLM患者的临床病理特征和预后风险因素,从而建立具有良好预测能力的评估模型,以提升对患者个体化预后的评估能力。
    方法:从SEER数据库中提取2010—2015年确诊的GCLM患者的临床资料。根据纳入和排除标准,严格筛选后纳入研究病例共2 554例,按7:3比例随机分配为建模集(1 790例)和验证集(764例),比较建模集与验证集中患者的临床基线特征差异,用Cox等比例回归模型与Fine-Gray竞争风险模型分别筛选出GCLM患者总体生存期(OS)与癌症特异性生存期(CSS)的独立危险因素。基于建模集Cox或Fine-Gray风险模型的多元回归分析及AIC因素优化的结果,构建预测GCLM患者OS或CSS的列线图模型。最后,采用一致性指数、ROC曲线和校正曲线评估模型预测的可靠性。
    结果: 建模集与验证集患者的基线特征无明显差异。分析结果显示,患者年龄、化疗、肿瘤分级、原发灶切除和原发灶数目是影响GCLM患者OS预后的独立危险因素,而化疗、肿瘤分级、原发灶切除和原发灶数目是影响GCLM患者CSS预后的独立危险因素(均P<0.05)。基于上述指标分别构建列线图模型并进行评价,预测OS与CSS列线图模型的一致性指数均明显高于AJCC-TNM分期系统(建模集:0.706 vs. 0.560、0.670 vs. 0.554;验证集:0.769 vs. 0.534、0.744 vs. 0.518),并且ROC曲线分析亦展示出预测模型具有较高的准确度。最后,校正曲线分析显示,构建的列线图模型预测患者OS或CSS的生存率与实际观察值均具有良好的一致性。
    结论: 基于SEER数据库分析构建的列线图模型在预测GCLM患者OS和CSS方面有较高的准确性,将有助于临床医师对GCLM患者制定个体化的治疗策略。

    Abstract:

    Background and Aims: Gastric cancer, characterized by high degree of malignancy and early metastasis, often leads to poor clinical prognosis, and particularly the gastric cancer liver metastasis (GCLM) is the main cause of death of the patients. However, there are still certain deficiencies in the evaluation methods for the prognosis of patients with GCLM at present. Therefore, this study was conducted to establish a prognostic evaluation model with good predictive ability by analyzing the clinicopathologic characteristics and prognostic risk factors of patients with GCLM based on the SEER database, so as to improve the individualized prognostic evaluation ability for the patients. 
    Methods: The clinical data of GCLM patients diagnosed from 2010 to 2015 were extracted from SEER database. According to the inclusion and exclusion criteria, a total of 2 554 patients were included in the study after strict screening, and then the patients were randomly assigned to modeling set (1 790 cases) and validation set (764 cases) with a 7:3 ratio. The clinical baseline characteristics of patients in modeling set and the validation set were compared, and the independent risk factors for the overall survival (OS) and the cancer-specific survival (CSS) of GCLM patients were screened by Cox equal proportional regression model and Fine-Gray competitive risk model, respectively. Based on the results of multiple regression analysis of the modeling set Cox and Fine-Gray risk model and AIC optimization, the nomogram models for predicting the OS and CSS of GCLM patients were constructed. Finally, the reliability of the predictions obtained from the models were evaluated by C-index, ROC curve and calibration curve.
    Results:  There were no significant difference in the baseline characteristic between the patients in modeling set and validation set. The results of analysis showed that age, chemotherapy, tumor grade, primary lesion resection and number of primary lesions were independent risk factors for OS, and chemotherapy, tumor grade, primary lesion resection and number of primary lesions were independent risk factors for CSS in GCLM patients. Based on the above variables, the nomogram models were constructed and evaluated, respectively. The C-index of either the nomogram model for predicting OS or for predicting CSS was remarkably higher than that of AJCC-TNM staging system (modeling set: 0.706 vs. 0.560 and 0.670 vs. 0.554; validation set: 0.769 vs. 0.534 and 0.744 vs. 0.518). Moreover, the ROC curve analysis showed that both prediction models had a relatively high accuracy. Finally, the calibration curve analysis showed that both nomogram models predicted OS or CSS had a good consistency with the actual observed values.
    Conclusion: The constructed nomogram models based on SEER database have relatively high accuracy in predicting the OS and CSS in GCLM patients, which may help the clinicians to develop individualized treatment strategies for GCLM patients.

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侯松林, 谢兴江, 彭强, 周国俊, 李利发, 周何, 张广军, 周彤,.基于SEER数据库的胃癌肝转移预后因素分析与预后模型构建[J].中国普通外科杂志,2020,29(10):1212-1223.
DOI:10.7659/j. issn.1005-6947.2020.10.008

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  • 收稿日期:2020-08-14
  • 最后修改日期:2020-09-28
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  • 在线发布日期: 2020-10-25