A Wearable Multi-modal Sensor Array for Continuous Cuffless Blood Pressure Estimation
Rattray, J.; Nnadi, B.; Rapuri, S.; Harris, C. W.; Tenore, F.; Gamaldo, C.; Stevens, R. D.; Etienne-Cummings, R.
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Blood pressure (BP) measurement is crucial for medical care, yet existing BP methods are either invasive, tethered, or suffer from low temporal resolution. Non-invasive continuous BP estimation thus remains a significant challenge. To address these challenges, this work presents a novel, non-invasive, multi-modal sensor designed for continuous blood pressure estimation using multiple biosignal modalities as feature inputs. From these input data, we extract cardiovascular timing intervals (e.g., pulse arrival time), which serve as key features for BP regression models, enabling continuous, non-invasive BP monitoring. We validate our algorithm with 16 healthy subjects using standard blood pressure cuff readings as ground truth. Our wearable, non-invasive multimodal and multinodal sensor array for integrated computation (MOSAIC) demonstrated promising performance and was able to predict systolic and diastolic BP across all study subjects with a MAE of 5.31 {+/-} 7.32 mmHg and 4.27 {+/-} 2.35 mmHg, respectively.
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