Department of Hepatobiliary Surgery, Fuzhou Second Hospital.
Department of Hepatobiliary Surgery, Fuzhou Second Hospital, Fuzhou, Fujian Province, China.
Eur J Gastroenterol Hepatol. 2024 Jan 1;36(1):129-134. doi: 10.1097/MEG.0000000000002678.
The purpose of this present research was to construct a nomograph model to predict prognosis in gallbladder cancer liver metastasis (GCLM) patients so as to provide a basis for clinical decision-making.
We surveyed patients diagnosed with GCLM in the Surveillance Epidemiology and the End Results database between 2010 and 2019. They were randomized 7 : 3 into a training set and a validation set. In the training set, meaningful prognostic factors were determined using univariate and multivariate Cox regression analyses, and an individualized nomogram prediction model was generated. The prediction model was evaluated by C-index, calibration curve, ROC curve and DCA curve from the training set and the validation set.
A total of 727 confirmed cases were enrolled in the research, 510 in the training set and 217 in the validation set. Factors including bone metastasis, surgery, chemotherapy and radiotherapy were independent prognostic factors for cancer-specific survival (CSS) rates and were employed in the construction of the nomogram model. The C-index for the training set and validation set were 0.688 and 0.708, respectively. The calibration curve exhibited good consistency between predicted and actual CSS rates. ROC curve and DCA of the nomogram showed superior performance at 6 months CSS, 1-year CSS and 2 years CSS in both the training set and validation set.
We have successfully constructed a nomogram model that can predict CSS rates in patients with GCLM. This prediction model can help patients in counseling and guide clinicians in treatment decisions.
本研究旨在构建一种列线图模型来预测胆囊癌肝转移(GCLM)患者的预后,为临床决策提供依据。
我们调查了 2010 年至 2019 年在监测、流行病学和最终结果数据库中诊断为 GCLM 的患者。将患者随机分为 7:3 进入训练集和验证集。在训练集中,使用单因素和多因素 Cox 回归分析确定有意义的预后因素,并生成个体化列线图预测模型。通过训练集和验证集的 C 指数、校准曲线、ROC 曲线和 DCA 曲线来评估预测模型。
共纳入 727 例确诊病例,其中 510 例进入训练集,217 例进入验证集。骨转移、手术、化疗和放疗是影响癌症特异性生存率(CSS)的独立预后因素,用于构建列线图模型。训练集和验证集的 C 指数分别为 0.688 和 0.708。校准曲线显示预测 CSS 率与实际 CSS 率之间具有良好的一致性。ROC 曲线和 DCA 曲线显示,在训练集和验证集中,该列线图在 6 个月 CSS、1 年 CSS 和 2 年 CSS 方面均具有较好的表现。
我们成功构建了一种能够预测 GCLM 患者 CSS 率的列线图模型。该预测模型有助于患者咨询,并指导临床医生治疗决策。