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[外周血细胞计数综合评分作为结直肠癌患者的预后因素]

[Peripheral blood cell count composite score as a prognostic factor in patients with colorectal cancer].

作者信息

Guo P Y, Hu X H, Li B K, Lu T, Liu J M, Wang C Y, Niu W B, Wang G Y, Yu B

机构信息

The Second Department of General Surgery, the Fourth Hospital of Hebei Medical University, Shijiazhuang 050001, China.

The Second Department of General Surgery, the Fourth Hospital of Hebei Medical University, Shijiazhuang 050001, China Department of General Surgery, the Second Hospital of Hebei Medical University, Shijiazhuang 050000, China Hebei Key Laboratory of Etiology Tracing and Individualized Diagnosis and Treatment for Digestive system carcinoma, Shijiazhuang 050000, China.

出版信息

Zhonghua Wei Chang Wai Ke Za Zhi. 2024 Sep 25;27(9):953-965. doi: 10.3760/cma.j.cn441530-20231029-00151.

Abstract

To develop a prognostic prediction model for patients with colorectal cancer based on a peripheral blood cell composite score (PBCS) system. This retrospective observational study included patients who had primary colorectal cancer without distant metastasis, who did not undergo radiotherapy or chemotherapy before surgery, who did not receive leukocyte or platelet-raising therapy within 1 month before surgery, and whose postoperative pathology confirmed colorectal adenocarcinoma with complete tumor resection. Patients with severe anemia, infection, or hematologic diseases before surgery, as well as those with severe heart, lung, or other important organ diseases or concurrent malignant tumors, were excluded. In total, 1021 patients with colorectal cancer who underwent surgical treatment in the Department of Gastrointestinal Surgery of the Fourth Hospital of Hebei Medical University from April 2018 to April 2020 were retrospectively included as the training set (766 patients) and the internal validation set (255 patients). Additionally, using the same criteria, 215 patients with colorectal cancer who underwent surgical treatment in another treatment group from March 2015 to December 2020 were selected as the external validation set. The "surv_cutpoint" function in R software was used to analyze the optimal cut-off values of neutrophils, lymphocytes, and platelets, and a PBCS system was established based on the optimal cut-off values. The scoring rules of the PBCS system were as follows: Neutrophils and platelets below the optimal cut-off value = 1 point, otherwise 0 points; Lymphocytes above the optimal cut-off value = 1 point, otherwise 0 points. The scores of the three cell types were added together to obtain the PBCS. Univariate and multivariate Cox regression analyses were performed to explore the correlation between patients' clinicopathological features and prognosis, and a nomogram was constructed based on the Cox regression analysis to predict patients' prognosis. The accuracy of the nomogram prediction model was validated using the C-index, calibration curve, and decision curve analysis. The optimal cut-off values for neutrophils, lymphocytes, and platelets were 4.40×10/L, 1.41×10/L, and 355×10/L, respectively. The patients were divided into high and low groups according to the optimal cut-off values of these cells. Survival curve analysis showed that a high lymphocyte count (training set: =0.042, internal validation: =0.010, external validation: =0.029), low neutrophil count (training set: =0.035, internal validation: =0.001, external validation: =0.024), and low platelet count (training set: =0.041, internal validation: =0.030, external validation: =0.024) were associated with prolonged overall survival (OS), with statistically significant differences in all cases. Survival analysis of different PBCS groups showed that patients with a high PBCS had longer OS than those with a low PBCS (<0.05). Univariate and multivariate Cox regression analysis results showed that aspirin use history, vascular thrombus, neural invasion, CA19-9, N stage, operation time, M stage, and PBCS were independent factors affecting OS (all <0.05). The PBCS was also an independent factor affecting disease-specific survival (<0.05), but not progression-free survival (>0.05). The above independent risk or protective factors were included in R software to construct a nomogram for predicting OS. The C-index (0.873), calibration curve, and decision curve analysis (threshold probability: 0.0%-75.2%) all indicated that the nomogram prediction model had good predictive performance for OS. This study demonstrates that the PBCS constructed based on preoperative peripheral blood levels of neutrophils, lymphocytes, and platelets is an independent factor associated with the prognosis of patients with colorectal cancer. The nomogram model constructed based on this score system exhibits good predictive efficacy for the prognosis of these patients.

摘要

基于外周血细胞综合评分(PBCS)系统开发一种用于结直肠癌患者的预后预测模型。这项回顾性观察性研究纳入了患有原发性结直肠癌且无远处转移、术前未接受放疗或化疗、术前1个月内未接受升白细胞或升血小板治疗且术后病理证实为结直肠癌腺癌且肿瘤完整切除的患者。排除术前有严重贫血、感染或血液系统疾病的患者,以及患有严重心、肺或其他重要器官疾病或并发恶性肿瘤的患者。总共回顾性纳入了2018年4月至2020年4月在河北医科大学第四医院胃肠外科接受手术治疗的1021例结直肠癌患者作为训练集(766例患者)和内部验证集(255例患者)。此外,使用相同标准,选取2015年3月至2020年12月在另一个治疗组接受手术治疗的215例结直肠癌患者作为外部验证集。使用R软件中的“surv_cutpoint”函数分析中性粒细胞、淋巴细胞和血小板的最佳截断值,并基于最佳截断值建立PBCS系统。PBCS系统的评分规则如下:中性粒细胞和血小板低于最佳截断值=1分,否则为0分;淋巴细胞高于最佳截断值=1分,否则为0分。将三种细胞类型的分数相加得到PBCS。进行单因素和多因素Cox回归分析以探讨患者临床病理特征与预后之间的相关性,并基于Cox回归分析构建列线图以预测患者的预后。使用C指数、校准曲线和决策曲线分析验证列线图预测模型的准确性。中性粒细胞、淋巴细胞和血小板的最佳截断值分别为4.40×10⁹/L、1.41×10⁹/L和355×10⁹/L。根据这些细胞的最佳截断值将患者分为高分组和低分组。生存曲线分析表明,淋巴细胞计数高(训练集:P=0.042,内部验证:P=0.010,外部验证:P=0.029)、中性粒细胞计数低(训练集:P=0.035,内部验证:P=0.001,外部验证:P=0.024)和血小板计数低(训练集:P=0.041,内部验证:P=0.030,外部验证:P=0.024)与总生存期(OS)延长相关,所有情况均有统计学显著差异。不同PBCS组的生存分析表明,PBCS高的患者OS长于PBCS低的患者(P<0.05)。单因素和多因素Cox回归分析结果表明,阿司匹林使用史血管血栓、神经侵犯、CA19-9、N分期手术时间、M分期和PBCS是影响OS的独立因素(均P<0.05)。PBCS也是影响疾病特异性生存的独立因素(P<0.05),但不是无进展生存的独立因素(P>0.05)。将上述独立风险或保护因素纳入R软件以构建预测OS的列线图。C指数(0.873)、校准曲线和决策曲线分析(阈值概率:0.0%-75.2%)均表明列线图预测模型对OS具有良好的预测性能。本研究表明,基于术前外周血中性粒细胞、淋巴细胞和血小板水平构建的PBCS是与结直肠癌患者预后相关的独立因素。基于该评分系统构建的列线图模型对这些患者的预后具有良好的预测效能。

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