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Evaluation of Random Forest and Ensemble Methods at Predicting Complications Following Cardiac Surgery

机译:评价随机森林和集合方法预测心脏手术后的并发症

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Cardiac patients undergoing surgery face increased risk of postoperative complications, due to a combination of factors, including higher risk surgery, their age at time of surgery and the presence of co-morbid conditions. They will therefore require high levels of care and clinical resources throughout their perioperative journey (i.e. before, during and after surgery). Although surgical mortality rates in the UK have remained low, postoperative complications on the other hand are common and can have a significant impact on patients' quality of life, increase hospital length of stay and healthcare costs. In this study we used and compared several machine learning methods - random forest, AdaBoost, gradient boosting model and stacking - to predict severe postoperative complications after cardiac surgery based on preoperative variables obtained from a surgical database of a large acute care hospital in Scotland. Our results show that AdaBoost has the best overall performance (AUC = 0.731), and also outperforms EuroSCORE and EuroSCORE Ⅱ in other studies predicting postoperative complications. Random forest (Sensitivity = 0.852, negative predictive value = 0.923), however, and gradient boosting model (Sensitivity = 0.875 and negative predictive value = 0.920) have the best performance at predicting severe postoperative complications based on sensitivity and negative predictive value.
机译:由于多种因素的综合考虑,进行心脏手术的心脏病患者术后并发症的风险增加,包括较高风险的手术,他们在手术时的年龄以及存在合并症。因此,他们在整个围手术期间(即手术前,手术中和手术后)将需要高水平的护理和临床资源。尽管英国的手术死亡率仍然很低,但另一方面,术后并发症很普遍,并且可能对患者的生活质量产生重大影响,延长了医院的住院时间和医疗费用。在这项研究中,我们使用并比较了几种机器学习方法-随机森林,AdaBoost,梯度增强模型和叠加-根据从苏格兰一家大型急诊医院的手术数据库获得的术前变量,预测心脏手术后的严重术后并发症。我们的结果表明,在预测术后并发症的其他研究中,AdaBoost的总体表现最佳(AUC = 0.731),并且也优于EuroSCORE和EuroSCOREⅡ。随机森林(敏感性= 0.852,阴性预测值= 0.923),而梯度增强模型(敏感性= 0.875,阴性预测值= 0.920)在基于敏感性和阴性预测值的严重术后并发症预测中表现最佳。

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