陈晖, 张莉, 陆晨, 蔡新娣. 脑出血术后多重耐药感染风险的诺模图预测模型的构建与验证[J]. 实用临床医药杂志, 2024, 28(8): 45-49, 54. DOI: 10.7619/jcmp.20234252
引用本文: 陈晖, 张莉, 陆晨, 蔡新娣. 脑出血术后多重耐药感染风险的诺模图预测模型的构建与验证[J]. 实用临床医药杂志, 2024, 28(8): 45-49, 54. DOI: 10.7619/jcmp.20234252
CHEN Hui, ZHANG Li, LU Chen, CAI Xindi. Establishment and validation of a Nomogram predictionmodel for risk of multi-drug resistant infection after operation of cerebral hemorrhage[J]. Journal of Clinical Medicine in Practice, 2024, 28(8): 45-49, 54. DOI: 10.7619/jcmp.20234252
Citation: CHEN Hui, ZHANG Li, LU Chen, CAI Xindi. Establishment and validation of a Nomogram predictionmodel for risk of multi-drug resistant infection after operation of cerebral hemorrhage[J]. Journal of Clinical Medicine in Practice, 2024, 28(8): 45-49, 54. DOI: 10.7619/jcmp.20234252

脑出血术后多重耐药感染风险的诺模图预测模型的构建与验证

Establishment and validation of a Nomogram predictionmodel for risk of multi-drug resistant infection after operation of cerebral hemorrhage

  • 摘要:
    目的 探讨脑出血术后多重耐药感染的风险因素并构建诺模图预测模型。
    方法 收集2020年7月—2023年7月本院收治的241例脑出血手术患者的临床资料,并分为感染组和非感染组。采用Logistic回归模型分析脑出血患者术后发生多重耐药感染的独立影响因素,并构建诺模图预测模型。采用一致性指数(C-index)、受试者工作特征(ROC)曲线及校准曲线评价诺模图的预测效能。
    结果 本研究共纳入241例脑出血患者,术后发生多重耐药感染56例(23.24%)。感染组术前格拉斯哥昏迷量表(GCS)评分、术前呕吐、术前抗菌药物治疗、留置胃管、气管切开、气管插管比率高于非感染组,差异有统计学意义(P<0.05)。Logistic回归分析显示,术前GCS评分≤8分、术前呕吐、术前抗菌药物治疗、留置胃管、气管切开、气管插管均是脑出血患者术后发生多重耐药感染的独立危险因素(OR>1, P<0.05); 术前GCS评分、术前呕吐、术前抗菌药物治疗、气管切开、气管插管的曲线下面积(AUC)值均>0.700,说明上述指标对于脑出血患者术后发生多重耐药感染具有较好的预测价值。基于以上影响因素建立诺模图风险模型,校准曲线的C-index值为0.798, 说明诺模图模型具备较好的区分度; ROC曲线中建模组和验证组的AUC值分别为0.798和0.722, 说明诺模图模型具有良好的预测能效。
    结论 基于脑出血患者术后发生多重耐药感染的独立危险因素构建的诺模图预测模型能较好地预测脑出血患者术后发生多重耐药感染的概率。

     

    Abstract:
    Objective To investigate the risk factors for postoperative multi-drug resistant infection in patients with cerebral hemorrhage and establish a Nomogram prediction model.
    Methods Clinical materials of 241 patients with surgery for cerebral hemorrhage in the hospital from July 2020 to July 2023 were collected, and they were divided into infection group and non-infection group. Logistic regression models were used to analyze independent influencing factors for the occurrence of postoperative multi-drug resistant infection in patients with cerebral hemorrhage, and a Nomogram prediction model was constructed accordingly. The predictive performance of the Nomogram was evaluated by the consistency index (C-index), the receiver operating characteristic (ROC) curve, and the calibration curve.
    Results A total of 241 patients with cerebral hemorrhage were included in this study, among which 56 cases (24.24%) had postoperative multi-drug resistant infection. In the infection group, the preoperative Glasgow Coma Scale (GCS) score, ratio of preoperative vomiting, ratio of preoperative antibiotic treatment, ratio of gastric tube indwelling, ratio of tracheotomy, and ratio of intubation were significantly higher than those in the non-infection group (P < 0.05). Logistic regression analysis revealed that preoperative GCS score ≤8, preoperative vomiting, preoperative antibiotic treatment, gastric tube indwelling, tracheotomy and intubation were the independent risk factors for postoperative multi-drug resistant infection in patients with cerebral hemorrhage (OR > 1, P < 0.05). Values of area under thecurve (AUC) for preoperative GCS score, preoperative vomiting, preoperative antibiotic treatment, tracheotomy and intubation were all above 0.700, indicating these indicators have good predictive value for the occurrence of postoperative multi-drug resistant infection in such patients. Based on these influencing factors, a Nomogram risk model was established. The C-index value of the calibration curve was 0.798, suggesting the Nomogram model has good discriminatory power. The AUC values for the modeling group and validation group in the ROC curve were 0.798 and 0.722 respectively, indicating that the Nomogram model possesses satisfactory predictive efficacy.
    Conclusion Nomogram prediction model constructed based on independent risk factors for postoperative multi-drug resistant infection in patients with cerebral hemorrhage can effectively predict the probability of such infections occurring in these patients after surgery.

     

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