Department of Surgery, University of North Carolina, 100 Manning Drive, Burnett Womack Building, Suite 4038, Chapel Hill, NC, 27599, USA.
Joint Department of Biomedical Engineering, University of North Carolina, 10202C Mary Ellen Jones Building, Chapel Hill, NC, 27599, USA.
J Gastrointest Surg. 2022 Nov;26(11):2342-2350. doi: 10.1007/s11605-022-05443-5. Epub 2022 Sep 7.
Readmission after colorectal surgery is common and often implies complications for patients and costs for hospitals. Previous works have created predictive models using logistic regression for this outcome but have shown limited accuracy. Machine learning has shown promise in improving predictions by identifying non-linear patterns in data. We sought to create a more accurate predictive model for readmission after colorectal surgery using machine learning.
Patients who underwent colorectal surgery were identified in the National Quality Improvement Program (NSQIP) database including years 2012-2019 and split into training, validation, and test sets. The primary outcome was readmission within 30 days of surgery. Three types of machine learning models were created, including random forest (RF), gradient boosting (XGB), and neural network (NN). A logistic regression (LR) model was also created for comparison. Model performance was evaluated using area under the receiver operating characteristic curve (AUROC).
The dataset included 213,827 patients after application of exclusion criteria. A total of 23,083 (10.8%) of patients experienced readmission. NN obtained an AUROC of 0.751 (95% CI 0.743-0.759), compared with 0.684 (95% CI 0.676-0.693) for LR. RF and XGB performed similarly with AUROCs of 0.749 (95% CI 0.741-0.757) and 0.745 (95% CI 0.737-0.753) respectively. Ileus, index admission length of stay, organ-space surgical site infection present at time of surgery, and ostomy placement were identified as the most contributory variables.
Machine learning approaches outperformed traditional statistical methods in the prediction of readmission after colorectal surgery. After external validation, this improved prediction model could be used to target interventions to reduce readmission rate.
结直肠手术后再入院是常见的,这通常意味着患者出现并发症和医院成本增加。以前的工作使用逻辑回归为这一结果创建了预测模型,但准确性有限。机器学习通过识别数据中的非线性模式,在提高预测方面显示出了希望。我们试图使用机器学习为结直肠手术后的再入院创建一个更准确的预测模型。
在国家质量改进计划(NSQIP)数据库中确定了接受结直肠手术的患者,包括 2012-2019 年,并将其分为训练集、验证集和测试集。主要结局是术后 30 天内再入院。创建了三种机器学习模型,包括随机森林(RF)、梯度提升(XGB)和神经网络(NN)。还创建了一个逻辑回归(LR)模型进行比较。使用受试者工作特征曲线下的面积(AUROC)评估模型性能。
应用排除标准后,数据集包括 213827 名患者。共有 23083 名(10.8%)患者再入院。NN 的 AUROC 为 0.751(95% CI 0.743-0.759),而 LR 为 0.684(95% CI 0.676-0.693)。RF 和 XGB 的 AUROC 相似,分别为 0.749(95% CI 0.741-0.757)和 0.745(95% CI 0.737-0.753)。术后肠梗阻、入院时的住院时间指数、手术时存在的器官间隙手术部位感染和造口术放置被确定为最具贡献的变量。
机器学习方法在预测结直肠手术后再入院方面优于传统统计学方法。经过外部验证,这种改进的预测模型可以用于针对降低再入院率的干预措施。