A Novel Clustering-Based Algorithm for Continuous and Non-invasive Cuff-Less Blood Pressure Estimation
Ali Farki, Reza Baradaran Kazemzadeh, and Elham Akhondzadeh Noughabi

TL;DR
This paper introduces a clustering-based machine learning approach to improve the accuracy of cuffless, continuous blood pressure estimation from physiological signals, achieving significantly better results than previous models.
Contribution
The paper presents a novel clustering step combined with regression models to enhance blood pressure estimation accuracy, addressing limitations of prior methods.
Findings
MAE of 2.56 for SBP and 2.23 for DBP with 5 clusters and GBR
Significant accuracy improvement over non-clustered models
Effective use of the MIMICII dataset for validation
Abstract
Extensive research has been performed on continuous, non-invasive, cuffless blood pressure (BP) measurement using artificial intelligence algorithms. This approach involves extracting certain features from physiological signals like ECG, PPG, ICG, BCG, etc. as independent variables and extracting features from Arterial Blood Pressure (ABP) signals as dependent variables, and then using machine learning algorithms to develop a blood pressure estimation model based on these data. The greatest challenge of this field is the insufficient accuracy of estimation models. This paper proposes a novel blood pressure estimation method with a clustering step for accuracy improvement. The proposed method involves extracting Pulse Transit Time (PTT), PPG Intensity Ratio (PIR), and Heart Rate (HR) features from Electrocardiogram (ECG) and Photoplethysmogram (PPG) signals as the inputs of clustering…
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Taxonomy
TopicsNon-Invasive Vital Sign Monitoring · Heart Rate Variability and Autonomic Control · Cardiovascular Health and Disease Prevention
