Construction and validation of a nomogram for patients with pancreatic neuroendocrine tumors: A population study of 5,927 patients

Gaobo Huang, W. Song, Yanchao Zhang, B. Ren, Y. Lv, Kang-Nian Liu
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Abstract

Background Pancreatic neuroendocrine tumors (pNETs) are a group of uncommon tumors derived from peptide neurons and neuroendocrine cells, and account for roughly 2% to 4% of all pancreatic neoplasms. This study aimed to construct and validate a nomogram for predicting the prognosis of patients with pNETs. Our data came from the SEER database. Methods A total of 5927 pNETs patients between 2004 and 2018 were included in this study. The nomogram was constructed base on eight prognostic factors and validated by C-index, ROC curve and calibration curves. A nomogram based on eight independent prognostic factors (patient age, sex, race, tumor grade, AJCC T, AJCC N, AJCC M, surgery, radiation, chemotherapy, tumor function and marital status) was developed for the prediction of CSS at 3 and 5 years. Results The C-index and AUCs of the nomogram demonstrated that its superiority in discrimination over AJCC staging system. The calibration plots showed the good consistency between predictions and actual observations. Conclusions In conclusion, our nomogram could better predict the prognosis of pNETs patients than AJCC staging system. The nomogram could be improved by integrating more important factors other than SEER database.
胰腺神经内分泌肿瘤患者列线图的构建和验证:5927名患者的群体研究
背景胰腺神经内分泌肿瘤(pNETs)是一组来源于肽神经元和神经内分泌细胞的罕见肿瘤,约占所有胰腺肿瘤的2%至4%。本研究旨在构建和验证用于预测pNETs患者预后的列线图。我们的数据来自SEER数据库。方法本研究共纳入2004年至2018年间5927例pNETs患者。基于8个预后因素构建列线图,并通过C指数、ROC曲线和校准曲线进行验证。基于八个独立预后因素(患者年龄、性别、种族、肿瘤分级、AJCC T、AJCC N、AJCC M、手术、放疗、化疗、肿瘤功能和婚姻状况)制定了一个列线图,用于预测3年和5年的CSS。结果诺模图的C指数和AUCs表明其在区分AJCC分期系统方面的优越性。校准图显示了预测和实际观测之间的良好一致性。结论与AJCC分期系统相比,我们的列线图可以更好地预测pNETs患者的预后。列线图可以通过整合SEER数据库以外的更重要因素来改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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