Oh Ah Ran, Park Jungchan, Shin Seo Jeong, Choi Byungjin, Lee Jong-Hwan, Yang Kwangmo, Kim Ha Yeon, Sung Ji Dong, Lee Seung-Hwa
Samsung Medical Center, Department of Anesthesiology and Pain Medicine, School of Medicine, Sungkyunkwan University, Seoul, Republic of Korea.
Department of Anesthesiology and Pain Medicine, Kangwon National University Hospital, Chuncheon, Republic of Korea.
Front Med (Lausanne). 2023 Jan 10;9:983330. doi: 10.3389/fmed.2022.983330. eCollection 2022.
Some patients with postoperative atrial fibrillation (POAF) after non-cardiac surgery need treatment, and a predictive model for these patients is clinically useful. Here, we developed a predictive model for POAF in non-cardiac surgery based on machine learning techniques. In a total of 201,864 patients who underwent non-cardiac surgery between January 2011 and June 2019 at our institution, 5,725 (2.8%) were treated for POAF. We used machine learning with an extreme gradient boosting algorithm to evaluate the effects of variables on POAF. Using the top five variables from this algorithm, we generated a predictive model for POAF and conducted an external validation. The top five variables selected for the POAF model were age, lung operation, operation duration, history of coronary artery disease, and hypertension. The optimal threshold of probability in this model was estimated to be 0.1, and the area under the receiver operating characteristic (AUROC) curve was 0.80 with a 95% confidence interval of 0.78-0.81. Accuracy of the model using the estimated threshold was 0.95, with sensitivity and specificity values of 0.28 and 0.97, respectively. In an external validation, the AUROC was 0.80 (0.78-0.81). The working predictive model for POAF requiring treatment in non-cardiac surgery based on machine learning techniques is provided online (https://sjshin.shinyapps.io/afib_predictor_0913/). The model needs further verification among other populations.
一些非心脏手术后发生术后房颤(POAF)的患者需要治疗,针对这些患者的预测模型具有临床实用性。在此,我们基于机器学习技术开发了一种非心脏手术中POAF的预测模型。在2011年1月至2019年6月期间于我院接受非心脏手术的总共201,864例患者中,有5,725例(2.8%)因POAF接受了治疗。我们使用极端梯度提升算法的机器学习来评估变量对POAF的影响。利用该算法中排名前五的变量,我们生成了一个POAF预测模型并进行了外部验证。为POAF模型选择的排名前五的变量是年龄、肺部手术、手术持续时间、冠状动脉疾病史和高血压。该模型的最佳概率阈值估计为0.1,受试者工作特征(AUROC)曲线下面积为0.80,95%置信区间为0.78 - 0.81。使用估计阈值的模型准确率为0.95,敏感性和特异性值分别为0.28和0.97。在外部验证中,AUROC为0.80(0.78 - 0.81)。基于机器学习技术的非心脏手术中需要治疗的POAF工作预测模型可在线获取(https://sjshin.shinyapps.io/afib_predictor_0913/)。该模型需要在其他人群中进一步验证。