Mining Biomedical Signals
نویسندگان
چکیده
Previous work in biomedical signal processing area, especially in the area of cardiology indicates that most of the disorders in heart can be completely captured in an Electrocardiogram (ECG) signal and then can be classified using a classifying tool. A pulse signal (Nadi, in Ayurvedic terms) can also extract similar disorders along with the arterial blockages in the body. Similar methodology, as already used in elecrocardiology area, can be applied to the pulse waveforms to give a complete computer-aided system. In This report, we give a brief introduction to ECG signal and previously used classifiers for them, support vector machines, C4.5 method and also some description of pulse signal.
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