4.7 Article

A novel framework for the removal of pacing artifacts from bio-electrical recordings

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COMPUTERS IN BIOLOGY AND MEDICINE
卷 155, 期 -, 页码 -

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PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.compbiomed.2023.106673

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Artifacts; Stimulation; Pacing; Hampel-filter; Signal processing; Filtering

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Electroceuticals offer clinical solutions for various disorders and a new signal processing framework has been developed to isolate and suppress stimulation artifacts in bio-electrical recordings. The autoregression method showed superior artifact removal in experimental recordings compared to linear interpolation and weighted mean approaches.
Background: Electroceuticals provide clinical solutions for a range of disorders including Parkinson's disease, cardiac arrythmias and are emerging as a potential treatment option for gastrointestinal disorders. However, preclinical investigations are challenged by the large stimulation artifacts registered in bio-electrical recordings. Method: A generalized framework capable of isolating and suppressing stimulation artifacts with minimal intervention was developed. Stimulation artifacts with different pulse-parameters in synthetic and experimental cardiac and gastrointestinal signals were detected using a Hampel filter and reconstructed using 3 methods: i) autoregression, ii) weighted mean, and iii) linear interpolation. Results: Synthetic stimulation artifacts with amplitudes of 2 mV and 4 mV and pulse-widths of 50 ms, 100 ms, and 200 ms were successfully isolated and the artifact window size remained uninfluenced by the pulse-amplitude, but was influenced by pulse-width (e.g., the autoregression method resulted in an identical Root Mean Square Error (RMSE) of 1.64 mV for artifacts with 200 ms pulse-width and both 2 mV and 4 mV amplitudes). The performance of autoregression (RMSE = 1.45 +/- 0.16 mV) and linear interpolation (RMSE = 1.22 +/- 0.14 mV) methods were comparable and better than weighted mean (RMSE = 5.54 +/- 0.56 mV) for synthetic data. However, for experimental recordings, artifact removal by autoregression was superior to both linear interpolation and weighted mean approaches in gastric, small intestinal and cardiac recordings. Conclusions: A novel signal processing framework enabled efficient analysis of bio-electrical recordings with stimulation artifacts. This will allow the bio-electrical events induced by stimulation protocols to be efficiently and systematically evaluated, resulting in improved stimulation therapies.

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