基于肌少症联合POSSUM评分的胰十二指肠切除术后严重并发症预测模型的构建
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作者单位:

1.内蒙古医科大学内蒙古临床医学院,内蒙古 呼和浩特 010017;2.内蒙古自治区人民医院 肝胆胰外科,内蒙古 呼和浩特 010017

作者简介:

阿茹拉,内蒙古医科大学内蒙古临床医学院/内蒙古自治区人民医院硕士研究生,主要从事肝胆胰肿瘤诊治方面的研究。

基金项目:

内蒙古自治区卫生健康科技计划基金资助项目(202202009)。


Construction of a prediction model for severe postoperative complications after pancreatoduodenectomy based on sarcopenia combined with POSSUM score
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1.Inner Mongolia Clinical Medical College of Inner Mongolia Medical University, Hohhot 010017, China;2.Department of Hepatobiliary and Pancreatic Surgery, Inner Mongolia People's Hospital, Hohhot 010017, China

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    摘要:

    背景与目的 胰十二指肠切除术(PD)作为治疗胆胰-十二指肠结合部恶性肿瘤等疾病的经典手术方法,尽管技术日益成熟,但术后严重并发症的发生率仍居高不下。这些严重并发症不仅影响患者的恢复进程,还可能危及患者的生命。因此,预测PD术后严重并发症的发生风险,对于制定针对性的预防和治疗策略至关重要。近年来,肌少症作为一种与多种术后并发症风险增加相关的疾病状态,引起了广泛关注。同时,POSSUM评分系统作为一种广泛应用于外科手术风险评估的工具,其预测效能已得到初步验证。基于此,本研究旨在确定PD术后发生严重并发症的危险因素,并构建基于肌少症联合POSSUM评分的风险预测模型,以期提高术后严重并发症的预测准确性,为临床决策提供科学依据。方法 回顾性分析内蒙古自治区人民医院肝胆胰外科2016—2023年行PD术的79例患者的临床资料。通过Slice Omatic软件获取患者的第三腰椎骨骼肌指数,并基于该指数进行肌少症的诊断;同时,统计患者的术后并发症情况,并依据Clavien-Dindo分级标准对并发症进行分级,分为严重并发症组(≥Ⅲa)和非严重并发症组(<Ⅲa);采用POSSUM评分系统对患者的手术风险进行评估,绘制受试者工作特征(ROC)曲线,评价POSSUM评分对PD术后严重并发症的预测效能,并通过Youden指数找出最佳截断点;利用单因素和二元多因素Logistic回归分析,筛选出术后严重并发症的独立危险因素。随后,采用R语言构建列线图风险预测模型,并通过ROC曲线、校准曲线、Hosmer-Lemeshow拟合优度检验以及一致性指数内部验证等方法对模型的预测效能进行全面评估。结果 79例患者中,肌少症患者41例,非肌少症患者38例。术后严重并发症的发生率为27.85%,严重并发症组与非严重并发症组患者的年龄、肌少症、POSSUM评分、术中出血量、术前白细胞计数和中性粒细胞计数差异有统计学意义(均P<0.05)。二元多因素Logistic回归分析结果显示,肌少症、POSSUM评分及术中出血量是PD术后严重并发症的独立危险因素(均P<0.05),基于以上危险因素构建的风险预测模型的ROC曲线下面积为0.895 9。预测模型的校准曲线趋近于理想曲线,预测精度良好,Hosmer-Lemeshow拟合优度检验结果也提示预测模型拟合良好,一致性指数内部验证证实列线图模型预测能力较好。结论 肌少症、POSSUM评分和术中出血量为PD术后发生严重并发症的独立危险因素,基于肌少症联合POSSUM评分所构建的PD术后严重并发症风险预测模型具有较高的预测效能,能够为临床医生提供更为准确的风险评估工具,有助于制定个体化的预防和治疗策略,降低PD术后严重并发症的发生率。

    Abstract:

    Background and Aims Pancreatoduodenectomy (PD) is a classic surgical method for treating malignant tumors at the pancreatoduodenal junction and other related diseases. Despite advancements in surgical techniques, the incidence of severe postoperative complications remains high. These complications not only affect the patient's recovery process but also pose life-threatening risks. Therefore, predicting the risk of severe complications after PD is crucial for developing targeted prevention and treatment strategies. Recently, sarcopenia, a condition associated with an increased risk of various postoperative complications, has garnered significant attention. The POSSUM scoring system, widely used for surgical risk assessment, has shown preliminary validation in its predictive efficacy. This study was conducted to identify risk factors for severe complications following PD and to develop a risk prediction model based on sarcopenia combined with POSSUM score to improve the accuracy of predicting severe postoperative complications and provide a scientific basis for clinical decision-making.Methods The clinical data of 79 patients who underwent PD from 2016 to 2023 were retrospectively analyzed. The skeletal muscle index at the third lumbar vertebra was obtained using Slice Omatic software, and sarcopenia was diagnosed based on this index. Postoperative complications were recorded and graded according to the Clavien-Dindo classification, categorizing them into severe complications (≥Ⅲa) and non-severe complications (<Ⅲa). The POSSUM scoring system was used to assess surgical risk, and the receiver operating characteristic (ROC) curve was plotted to evaluate the predictive efficacy of the POSSUM score for severe complications after PD, with the optimal cutoff point determined by the Youden index. Univariate and binary multivariate Logistic regression analyses were conducted to identify independent risk factors for severe postoperative complications. Subsequently, a nomogram risk prediction model was constructed using R language, and its predictive efficacy was comprehensively evaluated using the ROC curve, calibration curve, the Hosmer-Lemeshow goodness-of-fit test, and internal validation of the concordance index.Results Among the 79 patients, 41 had sarcopenia, and 38 did not. The incidence of severe postoperative complications was 27.85%. Significant differences were found between the severe and non-severe complication groups regarding age, sarcopenia, POSSUM score, intraoperative blood loss, preoperative white blood cell count, and preoperative neutrophil count (all P<0.05). Binary Logistic regression analysis showed that sarcopenia, POSSUM score, and intraoperative blood loss were independent risk factors for severe postoperative complications after PD (all P<0.05). The risk prediction model constructed based on these risk factors had an area under the ROC curve (AUC) of 0.895 9. The calibration curve of the prediction model was close to the ideal curve, indicating good predictive accuracy. The Hosmer-Lemeshow goodness-of-fit test also suggested a good fit for the prediction model, and internal validation of the concordance index confirmed the nomogram model's good predictive ability.Conclusion Sarcopenia, POSSUM score, and intraoperative blood loss are independent risk factors for severe postoperative complications after PD. The risk prediction model based on sarcopenia combined with the POSSUM score has high predictive efficacy, providing clinicians with a more accurate risk assessment tool and can help develop individualized prevention and treatment strategies to reduce the incidence of severe postoperative complications following PD.

    表 2 PD术后严重并发症的单因素分析Table 2 Univariate analysis of serious postoperative complications after PD
    表 4 PD术后严重并发症二元多因素Logistic回归分析结果Table 4 Results of binary multivariate Logistic regression analysis of serious postoperative complications after PD
    表 3 PD术后严重并发症的单因素分析(续)Table 3 Univariate analysis of serious postoperative complications after PD (continued)
    表 1 术后严重并发症发生种类及例次[n(%)]Table 1 Types and cases of postoperative severe complications [n(%)]
    图1 Slice Omatic勾画L3平面骨骼肌面积 A:肌少症;B:非肌少症Fig.1 Slice Omatic delineation of skeletal muscle area at the L3 level A: Sarcopenia; B: Non-sarcopenia
    图2 肌少症预测严重并发症的ROC曲线Fig.2 ROC curve of sarcopenia for predicting severe complications
    图3 POSSUM评分预测严重并发症的ROC曲线Fig.3 ROC curve of POSSUM score for predicting severe complications
    图4 术中出血量预测严重并发症的ROC曲线Fig.4 ROC curve of intraoperative bleeding volume for predicting severe complications
    图5 PD术后严重并发症的列线图预测模型Fig.5 Nomogram prediction model for severe postoperative complications after PD
    图6 PD术后严重并发症预测模型的ROC曲线Fig.6 ROC curve of the prediction model for severe postoperative complications after PD
    图7 PD术后严重并发症预测模型的校准曲线Fig.7 Calibration curve of the prediction model for severe postoperative complications after PD
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阿茹拉,芦建慧,夏医君,秦莎娜,贾广鹏,胡志伟.基于肌少症联合POSSUM评分的胰十二指肠切除术后严重并发症预测模型的构建[J].中国普通外科杂志,2024,33(7):1122-1132.
DOI:10.7659/j. issn.1005-6947.2024.07.011

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  • 收稿日期:2024-01-25
  • 最后修改日期:2024-03-25
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  • 在线发布日期: 2024-08-10