AI Article Synopsis

  • Blood Pressure (BP) is essential for cardiovascular health, and the study identifies clinically relevant ECG and PPG features to improve BP estimation using the CatBoost and AdaBoost algorithms.
  • The research achieved high correlation coefficients (0.90 for SBP and 0.83 for DBP) and low mean absolute error values (3.81 mmHg for SBP and 2.22 mmHg for DBP), surpassing medical standards for accuracy.
  • Key features identified include ln(HR × mNPV), HR, BMI index, ageing index, and PPG-K point, indicating a balance between the number of features used and the accuracy of BP estimation.

Article Abstract

Blood Pressure (BP) is often coined as a critical physiological marker for cardiovascular health. Multiple studies have explored either Photoplethysmogram (PPG) or ECG-PPG derived features for continuous BP estimation using machine learning (ML); deep learning (DL) techniques. Majority of those derived features often lack a stringent biological explanation and are not significantly correlated with BP. In this paper, we identified several clinically relevant (bio-inspired) ECG and PPG features; and exploited them to estimate Systolic (SBP), and Diastolic Blood Pressure (DBP) values using CatBoost, and AdaBoost algorithms. The estimation performance was then compared against popular ML algorithms. SBP and DBP achieved a Pearson's correlation coefficient of 0.90 and 0.83 between estimated and target BP values. The estimated mean absolute error (MAE) values are 3.81 and 2.22 mmHg with a Standard Deviation of 6.24 and 3.51 mmHg, respectively, for SBP and DBP using CatBoost. The results surpassed the Advancement of Medical Instrumentation (AAMI) standards. For the British Hypertension Society (BHS) protocol, the results achieved for all the BP categories resided in Grade A. Further investigation reveals that bio-inspired features along with tuned ML models can produce comparable results w.r.t parameter-intensive DL networks. ln(HR × mNPV), HR, BMI index, ageing index, and PPG-K point were identified as the top five key features for estimating BP. The group-based analysis further concludes that a trade-off lies between the number of features and MAE. Increasing the no. of features beyond a certain threshold saturates the reduction in MAE.

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Source
http://dx.doi.org/10.1109/EMBC40787.2023.10340405DOI Listing

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