2023
DOI: 10.20944/preprints202304.0996.v1
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Evaluation of a New Photoplethysmography Dataset for Real-time Respiratory Rate Prediction using a Deep Neural Network

Abstract: Respiratory rate is an important biomarker that indicates changes in the clinical condition of critically ill patients, so a surveillance tool that can accurately monitor the changing respiratory rate in real time is needed. Through investigating various pairs of machine learning models, we proposed new machine learning model for real-time respiratory rate estimation using photoplethysmogram. New photoplethysmogram-driven respiratory rate dataset(StMary) was collected from surgical intensive care unit of a ter… Show more

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