Department of General, Visceral and Transplantation Surgery, University Hospital of Tuebingen, Hoppe-Seyler-Straße 3, 72076, Tuebingen, Germany.
Department of Epidemiology and Biostatistics, University Hospital of Tuebingen, Tuebingen, Germany.
Int J Colorectal Dis. 2023 Aug 19;38(1):218. doi: 10.1007/s00384-023-04501-x.
Appendicitis is among the most common acute conditions treated by general surgery. While uncomplicated appendicitis (UA) can be treated delayed or even non-operatively, complicated appendicitis (CA) is a serious condition with possible long-term morbidity that should be managed with urgent appendectomy. Distinguishing both conditions is usually done with computed tomography. The goal of this study was to develop a model to reliably predict CA with widespread available clinical and laboratory parameters and without the use of sectional imaging.
Data from 1132 consecutive patients treated for appendicitis between 2014 and 2021 at a tertiary care hospital were used for analyses. Based on year of treatment, the data was divided into training (n = 696) and validation (n = 436) samples. Using the development sample, candidate predictors for CA-patient age, gender, body mass index (BMI), American Society of Anesthesiologist (ASA) score, duration of symptoms, white blood count (WBC), total bilirubin and C-reactive protein (CRP) on admission and free fluid on ultrasound-were first investigated using univariate logistic regression models and then included in a multivariate model. The final development model was tested on the validation sample.
In the univariate analysis age, BMI, ASA score, symptom duration, WBC, bilirubin, CRP, and free fluid each were statistically significant predictors of CA (each p < 0.001) while gender was not (p = 0.199). In the multivariate analysis BMI and bilirubin were not predictive and therefore not included in the final development model which was built from 696 patients. The final development model was significant (x = 304.075, p < 0.001) with a sensitivity of 61.7% and a specificity of 92.1%. The positive predictive value (PPV) was 80.4% with a negative predictive value (NPV) of 82.0%. The receiver operator characteristic of the final model had an area under the curve of 0.861 (95% confidence interval 0.830-0.891, p < 0.001. We simplified this model to create the NoCtApp score. Patients with a point value of ≤ 2 had a NPV 95.8% for correctly ruling out CA.
Correctly identifying CA is helpful for optimizing patient treatment when they are diagnosed with appendicitis. Our logistic regression model can aid in correctly distinguishing UA and CA even without utilizing computed tomography.
阑尾炎是普外科最常见的急性疾病之一。虽然简单性阑尾炎(UA)可以延迟治疗,甚至可以非手术治疗,但复杂性阑尾炎(CA)是一种可能导致长期发病的严重疾病,应通过紧急阑尾切除术进行治疗。通常通过计算机断层扫描来区分这两种情况。本研究的目的是建立一个能够可靠预测 CA 的模型,该模型可利用广泛的临床和实验室参数,而无需使用影像学检查。
分析了 2014 年至 2021 年期间在一家三级护理医院接受阑尾炎治疗的 1132 例连续患者的数据。根据治疗年份,将数据分为训练集(n=696)和验证集(n=436)。使用开发样本,对 CA-患者年龄、性别、体重指数(BMI)、美国麻醉医师协会(ASA)评分、症状持续时间、白细胞计数(WBC)、总胆红素和 C 反应蛋白(CRP)入院时和超声检查中的游离液体等候选预测因素进行了单变量逻辑回归模型的研究,然后将其纳入多变量模型。在验证样本中对最终的开发模型进行了测试。
在单变量分析中,年龄、BMI、ASA 评分、症状持续时间、WBC、胆红素、CRP 和游离液体均为 CA 的统计学显著预测因素(p 均<0.001),而性别则不是(p=0.199)。在多变量分析中,BMI 和胆红素不是预测因素,因此未纳入最终开发模型,该模型由 696 例患者组成。最终的开发模型具有统计学意义(x=304.075,p<0.001),敏感性为 61.7%,特异性为 92.1%。阳性预测值(PPV)为 80.4%,阴性预测值(NPV)为 82.0%。最终模型的受试者工作特征曲线下面积为 0.861(95%置信区间为 0.830-0.891,p<0.001)。我们简化了该模型,创建了 NoCtApp 评分。得分值≤2 的患者的 NPV 为 95.8%,可正确排除 CA。
当患者被诊断为阑尾炎时,正确识别 CA 有助于优化患者的治疗。即使不使用计算机断层扫描,我们的逻辑回归模型也可以帮助正确区分 UA 和 CA。