Department of Surgery, University of Virginia Health System, Charlottesville, Virginia, USA.
Dis Colon Rectum. 2013 May;56(5):627-37. doi: 10.1097/DCR.0b013e318279a93e.
Surgical site infection is one of the most common and significant morbidities following colon and rectal surgery, representing a marker of institutional quality. Various measures have been implemented to lower its incidence. However, the level of incidence remains unacceptable in many reports.
This study addresses whether surgical site infections can be accurately predicted in an outpatient clinical setting among patients undergoing elective colon and rectal surgery.
This investigation was designed as a retrospective cohort study with the use of logistic regression modeling.
Data for this study were extracted from the American College of Surgeons National Surgical Quality Improvement Program Participant user data file.
Patients undergoing elective intraabdominal colorectal surgery during 2009 were included.
The primary outcome measured was the probability of 30-day surgical site infection (superficial and deep incisional).
A total of 18,403 records for patients with colorectal surgery were identified. Superficial incisional surgical site infections were identified in 1447 records (7.86%). Deep incisional surgical site infections were identified in 278 records (1.51%). Body mass index, preoperative hematocrit, open approach, ASA classification level, smoking, alcohol use, functional status before surgery, and age more than 75 years were identified as likely independent predictors of deep and superficial surgical site infections. Multivariable logistic regression analysis was used to develop a series of predictive models. Reduced versions of the models were then developed that included only highly statistically significant predictors of infection in the corresponding full models (age, alcohol abuse, ASA classification, stoma closure, open approach, BMI, and hematocrit). Nomograms representing the final reduced model equations are presented.
This study was limited by the use of an administrative database and its retrospective design.
Surgical site infection is common morbidity following colon and rectal surgery. Nomograms using key patient characteristics can be used to accurately calculate a patients' risk of surgical site infection. This tool could be applied in the clinical setting to prospectively identify patients at highest risk of surgical site infection.
手术部位感染是结肠和直肠手术后最常见和最严重的并发症之一,是机构质量的标志。已经实施了各种措施来降低其发病率。然而,在许多报告中,发病率仍然高得不可接受。
本研究旨在探讨在择期结肠直肠手术患者的门诊临床环境中,手术部位感染是否可以准确预测。
本研究设计为回顾性队列研究,使用逻辑回归建模。
本研究的数据来自美国外科医师学院国家外科质量改进计划参与者用户数据文件。
纳入 2009 年接受择期腹腔内结直肠手术的患者。
主要观察指标是 30 天手术部位感染(浅表和深部切口)的概率。
共确定了 18403 例结直肠手术患者的记录。在 1447 例(7.86%)记录中发现了浅表切口手术部位感染。在 278 例(1.51%)记录中发现了深部切口手术部位感染。体重指数、术前血细胞比容、开放性手术、ASA 分级、吸烟、饮酒、术前功能状态和年龄大于 75 岁被确定为深部和浅表手术部位感染的可能独立预测因素。多变量逻辑回归分析用于建立一系列预测模型。然后开发了简化版本的模型,仅包含感染全模型中具有统计学意义的高预测因子(年龄、酒精滥用、ASA 分类、造口关闭、开放性手术、BMI 和血细胞比容)。最后还展示了代表最终简化模型方程的列线图。
本研究受到使用行政数据库和回顾性设计的限制。
手术部位感染是结肠和直肠手术后常见的并发症。使用关键患者特征的列线图可以准确计算患者手术部位感染的风险。该工具可在临床环境中用于前瞻性识别手术部位感染风险最高的患者。