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首页> 外文期刊>Surgical infections >Post-Operative Infection Prediction and Risk Factor Analysis in Colorectal Surgery Using Data Mining Techniques: A Pilot Study
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Post-Operative Infection Prediction and Risk Factor Analysis in Colorectal Surgery Using Data Mining Techniques: A Pilot Study

机译:利用数据挖掘技术的术后感染预测和风险因子分析:试验研究

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Background: Post-operative infections have many negative consequences for patients' health and the healthcare system. Among other things, they increase the recovery time and the risk of re-admission. Also, infection results in penalties for hospitals and decreases the quality performance measures. Surgeons can take preventive actions if they can identify high-risk patients. The purpose of this study was to develop a model to help predict those patients at risk for post-operative infection.Methods: A retrospective analysis was conducted on patients with colorectal post-operative infections. Univariable analysis was used to identify the features associated with post-operative infection. Then, a support vector classification-based method was employed to select the right features and build prediction models. Decision tree, support vector machine (SVM), logistic regression, naive Bayes, neural network, and random forest algorithms were implemented and compared to determine the performance algorithm that best predicted high-risk patients.Results: From 2016 to the first quarter of 2017, 208 patients who underwent colorectal resection were analyzed. The factors with a statistically significant association (p 0.05) with post-operative infections were elective surgery, origin status, steroid or immunosuppressant use, 10% loss of body weight in the prior six months, serum creatinine concentration, length of stay, unplanned return to the operating room, administration of steroids or immunosuppressants for inflammatory bowel disease, use of a mechanical bowel preparation, various Current Procedural Terminology (CPT) codes, and discharge destination. However, accurate prediction models can be developed with seven factors: age, serum sodium concentration, blood urea nitrogen, hematocrit, platelet count, surgical procedure time, and length of stay. Logistic regression and SVM were stable models for predicting infections.Conclusion: The models developed using the pre-operative features along with the full list of features helped us interpret the results and determine the significant factors contributing to infections. These factors present opportunities for proper interventions to mitigate infection risks and their consequences.
机译:背景:患者健康和医疗保健系统的术后感染具有许多负面影响。除此之外,他们增加了恢复时间和重新入场的风险。此外,感染导致医院处罚,并降低了质量绩效措施。外科医生可以识别高风险患者,采取预防措施。本研究的目的是制定一种模型,以帮助预测术后感染的风险患者。方法:对患有结肠直肠后感染的患者进行了回顾性分析。非变性分析用于鉴定与术后感染相关的特征。然后,采用支持向量分类的方法来选择合适的特征和构建预测模型。决策树,支持向量机(SVM),逻辑回归,天真贝叶斯,神经网络和随机森林算法进行了比较,并比较了最佳预测高风险患者的性能算法。结果:从2016年到2017年第一季度,分析了208例接受结直肠切除的患者。具有统计学上显着的关联(P <0.05)的因素,具有术后感染的选修手术,起源状态,类固醇或免疫抑制剂使用,在前六个月内,体重减轻10%,血清肌酐浓度,逗留长度,无计划的返回手术室,用于炎症性肠疾病的类固醇或免疫抑制剂,使用机械肠道制剂,各种流程术语(CPT)代码和排放目的地。然而,精确的预测模型可以用七种因素开发:年龄,血清钠浓度,血尿尿素氮,血细胞比容,血小板计数,手术程序时间和留守长度。 Logistic回归和SVM是预测感染的稳定模型。结论:使用预操作特征开发的模型以及完整的功能列表帮助我们解释结果并确定有助于感染的重要因素。这些因素呈现适当干预措施以减轻感染风险及其后果的机会。

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