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Towards a heart disease diagnosing system based on force sensitive chair's measurement, biorthogonal wavelets and neural networks

机译:基于力敏感椅的测量,双正交小波和神经网络的心脏病诊断系统

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The heart disease diagnosing (HDD) system consists of a sensitive movement EMFi™-film sensor installed under the upholstery of a chair. Whilst a man rests on the chair, this sensor which is sensitive to force gives us a single electrical signal containing components reflective of cardiac-ballistocardiogram (BCG), respiratory, and body movements related motion. Among different measurements of body activities, BCG has the interesting property that no electrodes are needed to be attached to the body during recording, suitable to evaluate man heart condition in any place such as home, car, or his office. This paper describes briefly our developed HDD system and especially a combined intelligent signal processing method to detect, extract features and finally cluster BCG cycles for assisting medical doctors to diagnose heart diseases of person under test. Indeed, it is a fully automatic system which is not very sensitive to the BCG latency as well as non-linear disturbance. It uses high resolution Biorthogonal wavelet transforms to extract essential BCG features and to cluster those using artificial neural networks (ANNs). Some evaluations using recordings from normal young, normal old and abnormal old volunteers indicated that our combined method is reliable and has high performance.
机译:心脏病诊断(HDD)系统由安装在椅子软垫下的灵敏运动EMFi™薄膜传感器组成。当一个人坐在椅子上时,这个对力敏感的传感器会向我们提供一个单一的电信号,该信号包含可反映出心脏-心动描记图(BCG),呼吸和与身体运动有关的运动的分量。在不同的身体活动测量方法中,BCG具有有趣的特性,即在记录过程中无需将电极连接到身体,适合评估居家,汽车或办公室等任何地方的人的心脏状况。本文简要介绍了我们开发的HDD系统,尤其是一种组合的智能信号处理方法,用于检测,提取特征并最终对BCG周期进行聚类,以帮助医生诊断被测者的心脏病。实际上,这是一个全自动系统,对BCG延迟和非线性干扰不是很敏感。它使用高分辨率双正交小波变换来提取基本的BCG特征,并使用人工神经网络(ANN)对这些特征进行聚类。使用来自正常的年轻,正常的老年人和异常的老年志愿者的录音进行的一些评估表明,我们的组合方法可靠且具有较高的性能。

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