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ECG monitoring, classification and early warning by sensitive neural nets

机译:通过敏感神经网络进行心电图监测,分类和预警

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Medical engineering support systems that are controlled by neural networks are being applied with increasing frequency in medical practice. However, a solution still needs to be found for the problem of constructing medical support systems that can be set up by the physicians themselves without the need of a knowledge of the mathematical theories of neural networks and signal processing. We describe a medical support system which can be set up by novices in the field of neural networks and which can be controlled and the results correctly interpreted by nurses and other medical staff. On the basis of typical pathological types of ECG signals, simulated by a common simulator which is used in Europe for heart beat monitoring, we show the basic structure of normal and pathological heart beat signatures and how they can be presented in a new and readily interpretable display. Furthermore, we explain how this support system can be used to create networks which are typical for most patients, are small, and can be quickly set up to monitor the patient's condition during therapy, or to provide a measure of the depth of anaesthesia of the patient.
机译:由神经网络控制的医疗工程支持系统正在应用于医疗实践中的增加频率。然而,需要一个解决方案来构建医生本人可以自行建立的医疗支持系统的问题,而无需了解神经网络的数学理论和信号处理。我们描述了一个医疗支持系统,可以通过神经网络领域的新手建立,可以控制,并通过护士和其他医务人员正确解释结果。在典型的病理类型的ECG信号的基础上,通过在欧洲用于心跳监测的常见模拟器的模拟,我们展示了正常和病理心脏击败签名的基本结构以及它们如何以新的和易于解释的方式呈现展示。此外,我们解释了该支持系统如何用于创建大多数患者典型的网络,很小,并且可以快速设置以在治疗过程中监测患者的病症,或提供一种衡量患有麻醉深度的尺寸病人。

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