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Diagnosis of prosthetic heart valve using locality preserving kernel fisher discriminant analysis and local discriminant bases

机译:使用核心鉴别分析和局部判别基地的核心心脏瓣膜假体心脏瓣膜的诊断

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Auscultation, a method to detect the condition of heart by examining the heart sounds, is widely used by cardiologists. Using artificial intelligence methods in auscultation to detect various heart diseases is increasing in present days. In this paper, we try to classify 5 different categories of mechanical artificial heart valve sounds. Considering that such classification task is highly nonlinear, a new feature extraction algorithm, which is based on locality preserving kernel Fisher discriminant analysis and local discriminant bases (LDB), is proposed to improve the classification accuracy. All the tests are carried on a dataset that consists of 271 heart sounds. When the features extracted by the proposed method are fed into a normal linear discriminant function based (LDF) classifier, the correct classification rates can reach up to 95.6%.
机译:通过检查心脏声音,通过检查心脏声音来检测心脏状况的方法。在听诊中使用人工智能方法来检测各种心脏病在目前正在增加。在本文中,我们尝试分类5种不同类别的机械人工心阀声音。考虑到这种分类任务是高度非线性的,提出了一种基于核心判别分析和局部判别基础(LDB)的局部性的新特征提取算法,以提高分类精度。所有测试都携带在一个由271心声组成的数据集上。当由所提出的方法提取的特征被馈送到正常的线性判别功能(LDF)分类器中时,正确的分类速率最高可达95.6%。

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