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      An innovative dicrotic notch detection algorithm which combines rule-based logic with digital signal processing techniques.

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          Abstract

          Automated, real-time localization of the dicrotic notch, a component of the arterial pressure waveform, represents a deceptively complex problem in computerized biomedical signal processing. The high-frequency nature of the notch can make it difficult to distinguish from artifactual noise or from other high-frequency physiological components of the waveform. In addition, the contour of the notch varies with vascular status and with propagation through arterial beds, requiring any detection algorithm to recognize various possible notch conformations. Finally, location of the notch along the waveform may vary widely depending on other hemodynamic variables, further complicating detection algorithms. We have reviewed various published algorithms and have implemented a number of them to determine the strengths and shortcomings of each. We then developed a reliable and accurate hybrid algorithm which utilizes the strengths of the various algorithmic approaches reviewed; after analyzing the waveform, the algorithm selects the most appropriate method for accurate notch localization based on a series of waveform features. The application of rule-based logic represents a relatively unique approach to digital signal processing.

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          Author and article information

          Journal
          Comput. Biomed. Res.
          Computers and biomedical research, an international journal
          0010-4809
          0010-4809
          Apr 1995
          : 28
          : 2
          Affiliations
          [1 ] Center for Medical Informatics, Yale University, New Haven, Connecticut 06510, USA.
          Article
          S0010480985710117
          10.1006/cbmr.1995.1011
          7656551
          bbebf460-3d3c-49db-bc66-976381374cc3
          History

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