Fernandez-Moure Joseph S, Wes Ari, Kaplan Lewis J, Fischer John P
Department of Surgery, Division of Trauma, Acute and Critical Care Surgery, Duke University School of Medicine, Duke University, Durham, North Carolina, USA.
Division of Plastic Surgery, Surgical Critical Care and Emergency Surgery, Department of Surgery, Perelman School of Medicine, University of Pennsylvania, Philadelphia, Pennsylvania, USA.
Surg Infect (Larchmt). 2021 Mar;22(2):168-173. doi: 10.1089/sur.2019.282. Epub 2020 May 12.
Surgical site infections (SSIs) increase mortality and the economic burden associated with emergency surgery (ES). A reliable and sensitive scoring system to predict SSIs can help guide clinician assessment and patient counseling of post-operative SSI risk. We hypothesized that after quantifying the ES post-operative SSI incidence, readily abstractable parameters can be used to develop an actionable risk stratification scheme. We reviewed retrospectively all patients who underwent ES operations at an urban academic hospital system (2005-2013). Comorbidities and operative characteristics were abstracted from the electronic health record (EHR) with a primary outcome of post-operative SSIs. Risk of SSI was calculated using logistic regression modeling and validated using bootstrapping techniques. Beta-coefficients were calculated to correlate risk. A simplified clinical risk assessment tool was derived by assigning point values to the rounded β-coefficients. A total of 4,783 patients with a 13.2% incidence of post-operative SSIs were identified. The strongest risk factors associated with SSIs included acute intestinal ischemia, weight loss, intestinal perforation, trauma-related laparotomy, radiation exposure, previous gastrointestinal surgery, and peritonitis. The assessment tool defined three patient groups based on SSI risk. Post-operative SSI incidence in high-risk patients (34%; score = 6-10) exceeded that of medium- (11.1%; score = 3-5) and low-risk patients (1.5%; score = 1-2) (C statistic = 0.802). Patients with a risk score ≥10 points evidenced the highest post-operative SSI risk (71.9%). Pre-operative identification of ES patient risk for post-operative SSI may inform pre-operative patient counseling and operative planning if the proposed procedure includes medical device implantation. A clinically relevant seven-factor risk stratification model such as this empirically derived one may be suitable to incorporate into the EHR as a decision-support tool.
手术部位感染(SSIs)会增加死亡率以及与急诊手术(ES)相关的经济负担。一种可靠且敏感的用于预测手术部位感染的评分系统有助于指导临床医生评估以及对患者进行术后手术部位感染风险的咨询。我们假设在量化急诊手术后手术部位感染的发生率后,易于提取的参数可用于制定可行的风险分层方案。我们回顾性分析了在一家城市学术医院系统接受急诊手术的所有患者(2005 - 2013年)。从电子健康记录(EHR)中提取合并症和手术特征,主要结局为术后手术部位感染。使用逻辑回归模型计算手术部位感染风险,并使用自助法技术进行验证。计算β系数以关联风险。通过为四舍五入后的β系数赋予分值,得出一种简化的临床风险评估工具。共识别出4783例患者,术后手术部位感染发生率为13.2%。与手术部位感染相关的最强风险因素包括急性肠缺血、体重减轻、肠穿孔、创伤相关剖腹手术、辐射暴露、既往胃肠道手术和腹膜炎。该评估工具根据手术部位感染风险将患者分为三组。高危患者(34%;评分 = 6 - 10)的术后手术部位感染发生率超过中危患者(11.1%;评分 = 3 - 5)和低危患者(1.5%;评分 = 1 - 2)(C统计量 = 0.802)。风险评分≥10分的患者术后手术部位感染风险最高(71.9%)。如果拟行手术包括医疗器械植入,术前识别急诊手术患者的术后手术部位感染风险可能有助于术前患者咨询和手术规划。这样一个基于经验得出的具有临床相关性的七因素风险分层模型可能适合纳入电子健康记录作为决策支持工具。