结直肠癌根治术后早期感染重症化预测模型的构建与验证

Construction and validation of prediction model for aggravation of early infection after radical resection of colorectal cancer

  • 摘要:
    探讨结直肠癌根治术后早期感染重症化的影响因素,构建并验证其预测模型。
    采用回顾性队列研究方法。收集2020年1月至2025年5月新乡市中心医院收治的226例结直肠癌根治术后早期感染患者的临床资料;男136例,女90例;年龄为(65±13)岁。观察指标:(1)结直肠癌根治术后早期感染重症化的影响因素分析。(2)结直肠癌根治术后早期感染重症化预测模型的构建及验证。单因素和多因素分析采用Logistic回归模型。单因素分析中P<0.05的变量或临床有术后感染预测价值且P<0.10的变量纳入多因素分析,采用稀有事件Logistic回归模型验证多因素分析结果稳健性。采用受试者工作特征曲线下面积、Hosmer‑Lemeshow检验、校准曲线和决策曲线评价预测模型的效能。
    (1)结直肠癌根治术后早期感染重症化的影响因素分析。226例结直肠癌术后早期感染患者中,20例确诊后72 h内进展为重症感染。多因素分析结果显示:吻合口类型、术后72 h腹腔引流液浑浊、降钙素原、心率、术后第1天序贯器官功能衰竭评估(SOFA)评分均是结直肠癌患者根治术后早期感染重症化的独立影响因素(比值比=2.34、2.59、2.05、2.18、2.41,95%可信区间为1.35~4.05、1.44~4.66、1.23~3.42、1.29~3.70、1.37~4.26,P<0.05)。(2)结直肠癌根治术后早期感染重症化预测模型的构建及验证。根据多因素分析结果构建结直肠癌根治术后早期感染重症化的列线图预测模型。受试者工作特征曲线显示:预测模型的曲线下面积为0.76(95%可信区间为0.66~0.86),灵敏度为0.68,特异度为0.63。Hosmer‑Lemeshow检验结果显示模型拟合良好(P=0.535)。预测模型校准曲线显示:预测概率与实际发生概率拟合较好。决策曲线显示:预测模型在0~0.90的阈值概率范围内具有净获益。
    吻合口类型、术后72 h腹腔引流液浑浊、降钙素原、心率、术后第1天SOFA评分均是结直肠癌患者根治术后早期感染重症化的独立影响因素。基于此构建的列线图预测模型具备良好的预测性能。

     

    Abstract:
    Objective To investigate the influencing factors for aggravation of early infec-tion after radical resection of colorectal cancer, and construct and validate its prediction model.
    Methods The retrospective cohort study was conducted. The clinical data of 226 patients with early infection after radical resection of colorectal cancer at Xinxiang Central Hospital between January 2020 and May 2025 were collecetd. There were 136 males and 90 females, aged (65±13)years. Observation indicators: (1) analysis of influencing factors for aggravation of early infection after radical resection of colorectal cancer; (2) construction and validation of prediction model for aggra-vation of early infection after radical resection of colorectal cancer. Logistic regression model was used for univariate and multivariate analyses.Variables with P<0.05 in univariate analysis, or variables with clinical predictive value for postoperative infection and P<0.10, were included for multivariate analysis. Rare‑event Logistic regression was applied to verify the robustness of multivariate analysis results.The performance of prediction model was evaluated using the area under the receiver opera-ting characteristic curve, Hosmer‑Lemeshow test, calibration curve, and decision curve analysis.
    Results (1) Analysis of influencing factors for aggravation of early infection after radical resection of colorectal cancer. Among 226 patients with early infection after radical resection of colorectal cancer,20 cases progressed to severe infection within 72 h after diagnosis. Results of multivariate analysis showed that anastomosis type, turbid abdominal drainage at 72 h postoperatively, procalci-tonin, heart rate, and sequential organ failure assessment (SOFA) score on the first day after surgery were independent influencing factors for aggravation of early infection after radical resection of colo-rectal cancer patients (odds ratio=2.34, 2.59, 2.05, 2.18, 2.41, 95% confidence interval as 1.35-4.05, 1.44-4.66, 1.23-3.42, 1.29-3.70, 1.37-4.26, P<0.05).(2) Construction and validation of prediction model for aggravation of early infection after radical resection of colorectal cancer. Based on the results of multivariate analysis, a prediction model for aggravation of early infection after radical resection of colorectal cancer was constructed. Receiver operating characteristic curve showed the area under the curve of prediction model as 0.76 (95% confidence interval as 0.66-0.86), with sensitivity as 0.68 and specificity as 0.63. The Hosmer‑Lemeshow test showed a P‑value of 0.535, indicating that the prediction model had a good fit. The calibration curve of the prediction model exhibited high consistency with the actual curve. Decision curve analysis showed a net clinical benefit for threshold probabilities between 0 and 0.90.
    Conclusions Anastomosis type, turbid abdominal drainage at 72 h postoperatively, procalcitonin, heart rate, and SOFA score on the first day after surgery are independent influencing factors for aggravation of early infection after radical resection of colorectal cancer patients. A nomogram prediction model based on these variables demonstrate good predictive performance.

     

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