Case Western Reserve University College of Engineering, Cleveland, OH, USA.
Mayo Clinic, Jacksonville, FL, USA.
Int Urogynecol J. 2024 May;35(5):1035-1043. doi: 10.1007/s00192-024-05773-9. Epub 2024 Apr 16.
The objective was to develop a prediction model for urinary tract infection (UTI) after pelvic surgery.
We utilized data from three tertiary care centers of women undergoing pelvic surgery. The primary outcome was a UTI within 8 weeks of surgery. Additional variables collected included procedural data, severity of prolapse, use of mesh, anti-incontinence surgery, EBL, diabetes, steroid use, estrogen use, postoperative catheter use, PVR, history of recurrent UTI, operative time, comorbidities, and postoperative morbidity including venous thromboembolism, surgical site infection. Two datasets were used for internal validation, whereas a third dataset was used for external validation. Algorithms that tested included the following: multivariable logistic regression, decision trees (DTs), naive Bayes (NB), random forest (RF), gradient boosting (GB), and multilayer perceptron (MP).
For the training dataset, containing both University of British Columbia and Mayo Clinic Rochester data, there were 1,657 patients, with 172 (10.4%) UTIs; whereas for the University of Calgary external validation data, there were a total of 392 patients with a UTI rate of 16.1% (n = 63). All models performed well; however, the GB, DT, and RF models all had an area under the curve (AUC) > 0.97. With external validation the model retained high discriminatory ability, DT: AUC = 0.88, RF: AUC = 0.88, and GB: AUC = 0.90.
A model with high discriminatory ability can predict UTI within 8 weeks of pelvic surgery. Future studies should focus on prospective validation and application of randomized trial models to test the utility of this model in the prevention of postoperative UTI.
本研究旨在开发一种预测盆腔手术后尿路感染(UTI)的模型。
我们利用了来自三个三级保健中心接受盆腔手术的女性的数据。主要结局是术后 8 周内发生 UTI。收集的其他变量包括手术过程数据、脱垂严重程度、网片使用、抗失禁手术、EBL、糖尿病、类固醇使用、雌激素使用、术后导尿管使用、PVR、复发性 UTI 史、手术时间、合并症以及静脉血栓栓塞、手术部位感染等术后发病率。两个数据集用于内部验证,而第三个数据集用于外部验证。测试的算法包括多变量逻辑回归、决策树(DT)、朴素贝叶斯(NB)、随机森林(RF)、梯度提升(GB)和多层感知机(MP)。
在包含不列颠哥伦比亚大学和罗切斯特梅奥诊所数据的训练数据集中,共有 1657 名患者,其中 172 名(10.4%)发生 UTI;而在卡尔加里大学的外部验证数据中,共有 392 名患者,UTI 发生率为 16.1%(n=63)。所有模型的性能都很好;然而,GB、DT 和 RF 模型的曲线下面积(AUC)均大于 0.97。在外部验证中,该模型仍具有较高的鉴别能力,DT:AUC=0.88,RF:AUC=0.88,GB:AUC=0.90。
具有高鉴别能力的模型可以预测盆腔手术后 8 周内的 UTI。未来的研究应集中在前瞻性验证和随机试验模型的应用上,以检验该模型在预防术后 UTI 中的实用性。