Novel Bloodless Potassium Determination Using a Signal‐Processed Single‐Lead ECG

Author:

Attia Zachi I.12,DeSimone Christopher V.1,Dillon John J.3,Sapir Yehu2,Somers Virend K.1,Dugan Jennifer L.1,Bruce Charles J.1,Ackerman Michael J.1,Asirvatham Samuel J.1,Striemer Bryan L.4,Bukartyk Jan1,Scott Christopher G.5,Bennet Kevin E.6,Ladewig Dorothy J.7,Gilles Emily J.7,Sadot Dan2,Geva Amir B.2,Friedman Paul A.1

Affiliation:

1. Division of Cardiovascular Diseases, Mayo Clinic, Rochester, MN

2. Electrical and Computer Engineering, Ben‐Gurion University of the Negev, Beer Sheva, Israel

3. Nephrology and Hypertension, Mayo Clinic, Rochester, MN

4. Center for Advanced Imaging, Mayo Clinic, Rochester, MN

5. Biomedical Statistics and Informatics, Mayo Clinic, Rochester, MN

6. Department of Engineering, Mayo Clinic, Rochester, MN

7. Mayo Clinic Ventures, Mayo Clinic, Rochester, MN

Abstract

Background Hyper‐ and hypokalemia are clinically silent, common in patients with renal or cardiac disease, and are life threatening. A noninvasive, unobtrusive, blood‐free method for tracking potassium would be an important clinical advance. Methods and Results Two groups of hemodialysis patients (development group, n=26; validation group, n=19) underwent high‐resolution digital ECG recordings and had 2 to 3 blood tests during dialysis. Using advanced signal processing, we developed a personalized regression model for each patient to noninvasively calculate potassium values during the second and third dialysis sessions using only the processed single‐channel ECG . In addition, by analyzing the entire development group's first‐visit data, we created a global model for all patients that was validated against subsequent sessions in the development group and in a separate validation group. This global model sought to predict potassium, based on the T wave characteristics, with no blood tests required. For the personalized model, we successfully calculated potassium values with an absolute error of 0.36±0.34 mmol/L (or 10% of the measured blood potassium). For the global model, potassium prediction was also accurate, with an absolute error of 0.44±0.47 mmol/L for the training group (or 11% of the measured blood potassium) and 0.5±0.42 for the validation set (or 12% of the measured blood potassium). Conclusions The signal‐processed ECG derived from a single lead can be used to calculate potassium values with clinically meaningful resolution using a strategy that requires no blood tests. This enables a cost‐effective, noninvasive, unobtrusive strategy for potassium assessment that can be used during remote monitoring.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Cardiology and Cardiovascular Medicine

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