首页> 外文会议>International Florida Artificial Intelligence Research Society Conference(FLAIRS 2007); 20070507-09; Key West,FL(US) >Detection and Classification of Cardiac Murmurs using Segmentation Techniques; Artificial Neural Networks
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Detection and Classification of Cardiac Murmurs using Segmentation Techniques; Artificial Neural Networks

机译:使用分割技术检测和分类心脏杂音;人工神经网络

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A diagnostic system based on Artificial Neural Networks (ANN) is implemented as a detector and classifier of heart murmurs. Segmentation and alignment algorithms serve as important pre-processing steps before heart sounds are applied to the ANN structure. The system enables users to create a classifier that can be trained to detect virtually any desired target set of heart sounds. The output of the system is the classification of the sound as either normal or a type of heart murmur. The ultimate goal of this research is to develop a tool that can be used to help physicians in the auscultation of patients and thereby reduce the number of unnecessary echocardiograms-those that are ordered for healthy patients. Testing has been conducted using both simulated and recorded patient heart sounds. Results are described for a system designed to classify heart sounds as normal, aortic stenosis, or aortic regurgitation. The system is able to classify with up to 85 ± 7.4% accuracy and 95 ± 6.8% sensitivity for a group of 72 simulated heart sounds. The accuracy rate of the ANN system for simulated sounds is compared to the accuracy rate of a group of medical students who were asked to classify heart sounds from the same group of sounds classified by the ANN system.
机译:基于人工神经网络(ANN)的诊断系统被实现为心脏杂音的检测器和分类器。在将心音应用于ANN结构之前,分割和对齐算法是重要的预处理步骤。该系统使用户能够创建一个分类器,可以对其进行训练以检测几乎任何所需的心音目标集。系统的输出是将声音分类为正常杂音还是心脏杂音。这项研究的最终目的是开发一种可用于帮助医师听诊的医生,从而减少不必要的超声心动图(为健康患者订购的超声心动图)的数量。已使用模拟和录制的患者心音进行了测试。描述了一个系统的结果,该系统旨在将心音分类为正常,主动脉瓣狭窄或主动脉瓣关闭不全。对于一组72种模拟心音,该系统能够以高达85±7.4%的精度和95±6.8%的灵敏度进行分类。将ANN系统对模拟声音的准确率与一组医学学生的准确率进行比较,这些学生被要求从ANN系统分类的同一组声音中对心音进行分类。

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