Title
Ecg-Based Monitoring Of Blood Potassium Concentration: Periodic Versus Principal Component As Lead Transformation For Biomarker Robustness
Abstract
Objective: The aim of this study is to compare the performance of two electrocardiogram (ECG) lead-space reduction (LSR) techniques in generating a transformed ECG lead from which T-wave morphology markers can be reliably derived to non-invasively monitor blood potassium concentration ([K+]) in end-stage renal disease (ESRD) patients undergoing hemodialysis (HD). These LSR techniques are: (1) principal component analysis (PCA), learned on the T wave, and (2) periodic component analysis (pi CA), either learned on the whole QRST complex (pi C-B) or on the T wave (pi C-T). We hypothesized pi CA is less sensitive to non-periodic disturbances, like noise and body position changes (BPC), than pi CA, thus leading to more reliable T wave morphology markers.Methods: We compared the ability of T wave morphology markers obtained from pi CA, pi C-B and pi C-T in tracking [K+] in an ESRD-HD dataset, including 29 patients, during and after HD (evaluated by correlation and residual fitting error analysis). We also studied their robustness to BPC using an annotated database, including 20 healthy individuals, as well as to different levels of noise using a simulation set-up (assessed by means of Mann-Whitney U test and relative error, respectively).Results: The performance of both pi C-B and pi C-T-based markers in following [K+]-variations during HD was comparable, and superior to that from pi CA-based markers. Moreover, pi C-T-based markers showed superior robustness against BPC and noise.Conclusion: Both pi C-B and pi C-T outperform pi CA in terms of monitoring [K+] in ESRD-HD patients, as well as of robustness against BPC and low SNR, with pi C-T showing the highest stability for continuous post-HD monitoring.Significance: The usage of pi CA (i) increases the accuracy in monitoring dynamic [K+] variations in ESRD-HD patients and (ii) reduces the sensitivity to BPC and noise in deriving T wave morphology markers.
Year
DOI
Venue
2021
10.1016/j.bspc.2021.102719
BIOMEDICAL SIGNAL PROCESSING AND CONTROL
Keywords
DocType
Volume
Electrocardiogram, Lead space reduction, Principal component analysis, Periodic component analysis, T-wave morphology, Time-warping, Non-invasive potassium monitoring
Journal
68
ISSN
Citations 
PageRank 
1746-8094
1
0.36
References 
Authors
0
9