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Feature Selection Algorithm based on Random Forest applied to Sleep Apnea Detection

机译:基于随机森林的特征选择算法在睡眠呼吸暂停检测中的应用

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This paper presents a new feature selection method based on the changes in out-of-bag (OOB) Cohen kappa values of a random forest (RF) classifier, which was tested on the automatic detection of sleep apnea based on the oxygen saturation signal (SpO2). The feature selection method is based on the RF predictor importance defined as the increase in error when features are permuted. This method is improved by changing the classification error into the Cohen kappa value, by adding an extra factor to avoid correlated features and by adapting the OOB sample selection to obtain a patient independent validation. When applying the method for sleep apnea classification, an optimal feature set of 3 parameters was selected out of 286. This was half of the 6 features that were obtained in our previous study. This feature reduction resulted in an improved interpretability of our model, but also a slight decrease in performance, without affecting the clinical screening performance. Feature selection is an important issue in machine learning and especially biomedical informatics. This new feature selection method introduces interesting improvements of RF feature selection methods, which can lead to a reduced feature set and an improved classifier interpretability.
机译:本文提出了一种基于随机森林(RF)分类器的袋装(OOB)Cohen kappa值变化的新特征选择方法,该方法在基于氧饱和度信号的睡眠呼吸暂停自动检测中进行了测试(血氧分压 2 )。特征选择方法基于RF预测变量的重要性,RF预测变量的重要性被定义为置换特征时错误的增加。通过将分类误差更改为Cohen kappa值,通过添加额外的因素来避免相关特征以及通过调整OOB样本选择以获得患者独立的验证,可以改进此方法。当应用该方法进行睡眠呼吸暂停分类时,从286个中选择了3个参数的最佳特征集。这是我们先前研究中获得的6个特征的一半。此功能的减少导致我们模型的可解释性得到改善,但性能略有下降,而不会影响临床筛查性能。特征选择是机器学习尤其是生物医学信息学中的重要问题。这种新的特征选择方法对RF特征选择方法进行了有趣的改进,可以减少特征集并提高分类器的可解释性。

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