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首页> 外文期刊>Journal of Medical Systems >SVM Feature Selection Based Rotation Forest Ensemble Classifiers to Improve Computer-Aided Diagnosis of Parkinson Disease
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SVM Feature Selection Based Rotation Forest Ensemble Classifiers to Improve Computer-Aided Diagnosis of Parkinson Disease

机译:基于支持向量机特征选择的旋转森林集成分类器以改善帕金森病的计算机辅助诊断

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摘要

Parkinson disease (PD) is an age-related deterioration of certain nerve systems, which affects movement, balance, and muscle control of clients. PD is one of the common diseases which affect 1% of people older than 60 years. A new classification scheme based on support vector machine (SVM) selected features to train rotation forest (RF) ensemble classifiers is presented for improving diagnosis of PD. The dataset contains records of voice measurements from 31 people, 23 with PD and each record in the dataset is defined with 22 features. The diagnosis model first makes use of a linear SVM to select ten most relevant features from 22. As a second step of the classification model, six different classifiers are trained with the subset of features. Subsequently, at the third step, the accuracies of classifiers are improved by the utilization of RF ensemble classification strategy. The results of the experiments are evaluated using three metrics; classification accuracy (ACC), Kappa Error (KE) and Area under the Receiver Operating Characteristic (ROC) Curve (AUC). Performance measures of two base classifiers, i.e. KStar and IBk, demonstrated an apparent increase in PD diagnosis accuracy compared to similar studies in literature. After all, application of RF ensemble classification scheme improved PD diagnosis in 5 of 6 classifiers significantly. We, numerically, obtained about 97% accuracy in RF ensemble of IBk (a K-Nearest Neighbor variant) algorithm, which is a quite high performance for Parkinson disease diagnosis.
机译:帕金森病(PD)是某些神经系统与年龄相关的退化,会影响客户的运动,平衡和肌肉控制。帕金森氏病是一种常见的疾病,会影响60%以上的1%的人。提出了一种新的基于支持向量机(SVM)特征选择的分类算法来训练旋转林(RF)集成分类器,以提高PD的诊断能力。数据集包含来自31个人的语音测量记录,其中23人具有PD,并且数据集中的每个记录都具有22个特征。诊断模型首先利用线性SVM从22中选择十个最相关的特征。作为分类模型的第二步,使用特征子集训练六个不同的分类器。随后,在第三步中,通过利用RF集成分类策略来提高分类器的准确性。实验的结果使用三个指标进行评估:分类准确度(ACC),卡伯误差(KE)和接收器工作特征(ROC)曲线下的面积(AUC)。与文献中的类似研究相比,两个基本分类器(即KStar和IBk)的性能指标证明了PD诊断准确性的明显提高。毕竟,RF集成分类方案的应用显着改善了6个分类器中的5个的PD诊断。从数值上讲,我们在IBk(K最近邻变体)算法的RF集成中获得了约97%的准确度,这对于帕金森氏病的诊断是相当高的性能。

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