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Predicting Postoperative Length of Stay for Isolated Coronary Artery Bypass Graft Patients Using Machine Learning

机译:使用机器学习预测孤立冠状动脉旁路移植患者的术后术后长度

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Purpose: Predictive analytics (PA) is a new trending approach in the field of healthcare that uses machine learning to build a prediction model using supervised learning algorithms. Isolated coronary artery bypass grafting (iCABG), an open-heart surgery, is commonly performed in the treatment of coronary heart disease. Aim: The aim of this study was to develop and evaluate a model to predict postoperative length of stay (PLoS) for iCABG patients using supervised machine learning techniques, and to identify the features with the highest contribution to the model. Methods: This is a retrospective study that uses historic data of adult patients who underwent isolated CABG (iCABG). After initial data pre-processing, data imputation using the kNN method was applied. The study used five prediction models using Na?ve Bayes, Decision Tree, Random Forest, Logistic Regression and k Nearest Neighbor algorithms. Data imbalance was managed using the following widely used methods: oversampling, undersampling, “Both”, and random over-sampling examples (ROSE). The features selection process was conducted using the Boruta method. Two techniques were applied to examine the performance of the models, (70%, 30%) split and cross-validation, respectively. Models were evaluated by comparing their performance using AUC and other metrics. Results: In the final dataset, six distinct features and 621 instances were used to develop the models. A total of 20 models were developed using R statistical software. The model generated using Random Forest with “Both” resampling method and cross-validation technique was deemed the best fit (AUC=0.81; F1 score=0.82; and recall=0.82). Attributes found to be highly predictive of PLoS were pulmonary artery systolic, age, height, EuroScore II, intra-aortic balloon pump used, and complications during operation. Conclusion: This study demonstrates the significance and effectiveness of building a model that predicts PLoS for iCABG patients using patient specifications and pre-/intra-operative measures.
机译:目的:预测分析(PA)是一种新的趋势方法,在医疗保健领域,使用机器学习使用监督学习算法构建预测模型。孤立的冠状动脉旁路移植(ICABG),露天手术,常见于冠心病的治疗。目的:本研究的目的是开发和评估使用受监督机器学习技术的ICABG患者的术后留下(PLOS)的模型,并识别模型贡献最高的特征。方法:这是一种回顾性研究,它使用接受孤立的CABG(ICABG)的成年患者的历史数据。在初始数据预处理之后,应用了使用KNN方法的数据载荷。该研究使用了使用Na ve贝父,决策树,随机林,逻辑回归和k最近邻算法的五个预测模型。使用以下广泛使用的方法进行管理数据不平衡:过采样,欠采样,“两者”和随机过度采样示例(Rose)。使用Boruta方法进行特征选择过程。应用了两种技术以检查模型的性能,分别分别分配和交叉验证。通过使用AUC和其他指标进行比较它们的性能来评估模型。结果:在最终数据集中,使用六个不同的功能和621个实例来开发模型。使用R统计软件共开发了共有20种型号。使用随机森林与生成的模型“两者”重采样方法和交叉验证技术被认为是最合适的(AUC = 0.81; F1得分= 0.82;和召回= 0.82)。发现普遍预测的属性是肺动脉的收缩,年龄,高度,Euroscore II,使用的主动脉气囊泵,以及在操作过程中的并发症。结论:本研究表明,建立一种模型的重要性和有效性,其使用患者规格和术语/内际措施预测ICABG患者PLO。

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