Department of Radiology, Fourth Affiliated Hospital of Harbin Medical University, Harbin, China.
Department of Gastrointestinal Medical Oncology, Harbin Medical University Cancer Hospital, Harbin, China.
J Gastrointest Surg. 2024 Apr;28(4):458-466. doi: 10.1016/j.gassur.2024.02.005. Epub 2024 Feb 9.
Computed tomography (CT) imaging has the potential to assist in predicting the prognosis and treatment strategies for pancreatic cancer (PC). This study aimed to develop and validate a radio-clinical model based on preoperative multiphase CT assessments to predict the overall survival (OS) of PC and identify differentially expressed genes associated with OS.
Patients with PC who had undergone radical pancreatectomy (R0 resection) were divided into development and external validation sets. Independent predictors of OS were identified using Cox regression analyses and included in the nomogram, which was externally validated. The area under the curve was used to measure the model's accuracy in estimating OS probability. RNA sequencing data from The Cancer Genome Atlas were used for gene expression analysis.
In the development and external validation sets, survival was estimated respectively for 132 and 27 patients. Multivariate Cox regression analysis identified 5 independent OS predictors: age (P = .049), sex (P = .001), bilirubin level (P = .005), tumor size (P = .020), and venous invasion (P = .041). These variables were incorporated into the nomogram. Patients were divided into high- and low-risk groups for OS and survival curves showed that all patients in the low-risk group had better OS than that of those in the high-risk group (P < .001). Differentially expressed genes in patients with a poor prognosis were involved in neuroactive ligand-receptor interaction.
The radio-clinical model may be clinically useful for successfully predicting PC prognosis.
计算机断层扫描(CT)成像有可能辅助预测胰腺癌(PC)的预后和治疗策略。本研究旨在开发和验证一种基于术前多期 CT 评估的放射临床模型,以预测 PC 的总生存期(OS)并确定与 OS 相关的差异表达基因。
接受根治性胰腺切除术(R0 切除)的 PC 患者被分为开发和外部验证组。使用 Cox 回归分析确定 OS 的独立预测因子,并将其包含在列线图中,然后对该列线图进行外部验证。使用曲线下面积来衡量模型估计 OS 概率的准确性。使用癌症基因组图谱中的 RNA 测序数据进行基因表达分析。
在开发和外部验证组中,分别对 132 名和 27 名患者进行了生存估计。多变量 Cox 回归分析确定了 5 个独立的 OS 预测因子:年龄(P =.049)、性别(P =.001)、胆红素水平(P =.005)、肿瘤大小(P =.020)和静脉侵犯(P =.041)。这些变量被纳入列线图。患者被分为高风险和低风险 OS 组,生存曲线表明低风险组的所有患者的 OS 均优于高风险组(P <.001)。预后不良患者的差异表达基因涉及神经活性配体-受体相互作用。
放射临床模型可能对成功预测 PC 预后具有临床应用价值。