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Intelligent approaches for prognosticating post-operative life expectancy in the lung cancer patients

机译:预后肺癌患者术后预期寿命的智能方法

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The aim of this research is to evaluate the performance of two feature selection methods on seven different machine learning methods applied over thoracic surgery data. Feature selection is a crucial pre-processing step in determining factors responsible for post-operative life expectancy in the patients suffering with lung cancer. Postoperative life expectancy complications are the most common fatality following major types of thoracic surgery. In particular, we want to examine the underlying health factors of patients that could potentially be a powerful predictor for deaths which are surgically related. Seven machine learning methods namely Na?ve Bayes, Linear SVM, MLP, RBF Network, SMO, KNN and CART are employed for analyzing the performance of feature selection methods. Maximum accuracy of 85.11% was obtained with correlation-based feature selection in comparison with consistency-based feature selection which was 84.89 %.
机译:该研究的目的是评估两个特征选择方法对施加在胸外科数据的七种不同机器学习方法的性能。特征选择是确定患有肺癌患者患者的术后寿命的因素的重要预处理步骤。术后预期寿命并发症是主要类型的胸外科术后最常见的死亡。特别是,我们希望检查患者的潜在健康因素,这些患者可能是一种潜在的患者,用于患有外科手术的死亡。七种机器学习方法即Na ve贝叶斯,线性SVM,MLP,RBF网络,SMO,KNN和推车用于分析特征选择方法的性能。与基于一致性的特征选择相比,基于相关性的特征选择获得了85.11 %的最大精度,这是84.89 %。

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