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Predicting quality of life for lung transplant recipients: A hybrid genetic algorithms-based methodology

机译:预测肺移植接受者的生活质量:基于混合遗传算法的方法

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Feature selection, a critical pre-processing step for data mining, is aimed at determining representative variables/predictors from a large and feature-rich dataset for development of an effective prediction model. The purpose of this paper is to develop a hybrid methodology for feature selection using genetic algorithms to identify such representative features (input variables) and thereby to ensure the development of the best possible analytic model to predict and explain the target variable, quality of life (QoL), for patients undergoing a lung transplant overseen by the United Network for Organ Sharing (UNOS). The evaluation of three classification models, GA-kNN, GA-SVM, and GA-ANN, demonstrated that performance of the lung transplantation process has significantly improved via the GA-SVM approach, although the other two models have also yielded considerably high prediction accuracies. This study is unique in that it proposes a hybrid GA-based feature selection methodology along with design and development of several highly accurate classification algorithms to identify the most important features in the large and feature rich UNOS transplant dataset for lung transplantation.
机译:特征选择是数据挖掘的关键预处理步骤,旨在从大型且功能丰富的数据集中确定代表性变量/预测变量,以开发有效的预测模型。本文的目的是使用遗传算法开发一种用于特征选择的混合方法,以识别此类代表性特征(输入变量),从而确保开发出最佳的分析模型,以预测和解释目标变量,生活质量( (QoL),适用于接受器官共享联合网络(UNOS)监督的肺移植患者。对三种分类模型GA-kNN,GA-SVM和GA-ANN的评估表明,通过GA-SVM方法,肺移植过程的性能已得到显着改善,尽管其他两种模型也具有相当高的预测准确性。这项研究的独特之处在于,它提出了一种基于遗传算法的混合特征选择方法,并设计和开发了几种高度精确的分类算法,以识别大型且功能丰富的UNOS移植数据集中最重要的特征,以进行肺移植。

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