Artificial intelligence-enhanced electrocardiogram left ventricular diastolic function assessment for prognostic assessment in mitral annulus calcification

European Heart Journal - Cardiovascular Imaging

29 January 2025
Organised by: Logo
ESC Journals

Abstract

AbstractBackground

Moderate-severe mitral annulus calcification (MAC) and left ventricular (LV) diastolic dysfunction are both linked to increased risks of heart failure and mortality. Assessing LV diastolic function (LVDF) in moderate-severe-MAC by echocardiography is frequently challenging and unreliable. We recently validated an AI-ECG model for LVDF. We aimed to determine if this tool can predict long-term mortality in patients with moderate-severe-MAC and whether it can help establish MAC-specific echocardiographic LVDF parameter cutoffs.

Methods

This retrospective study included all patients from the AI-ECG LVDF study test cohort who underwent comprehensive transthoracic echocardiography confirming moderate-severe-MAC and ECG within fourteen days of each other at Mayo Clinic between 09/2001 and 06/2022. AI-ECG LVDF was determined based on the index ECG. Patients were categorized based on AI-ECG into groups representing normal/grade-1 LVDF, grade-2 LVDF, or grade-3 LVDG (DF-1, DF-2, and DF-3, respectively).

Results

Of 2,506 patients with moderate-severe-MAC [mean age 77, 64.1% females], 709 (28.3%), 1,510 (60.3%), and 287 (11.5%) were classified as DF-1, DF-2, and DF-3, respectively. Worse LVDF grade was associated with older age, male sex, lower LV ejection fraction, and higher rates of noncardiovascular and cardiovascular comorbidities. Over a median follow-up of 2.8 years, 1,059 (42.3%) patients died. In multivariable survival analysis, DF-2 [adjusted hazard ratio (aHR) 1.43, 95% confidence interval (95%CI) 1.21-1.68] and DF-3 (aHR 1.54, 95%CI 1.22-1.93) were independently associated with a higher risk of death (figure). Findings were also consistent after adjusting to mitral inflow gradients. When comparing LVDF echocardiographic parameters in controls without MAC matched by age, sex, left ventricular ejection fraction, and AI-ECG DF grade, significant differences were observed. Patients with moderate to severe MAC generally exhibited lower e' velocities, higher TR velocities, elevated E/e' ratios, and increased LAVi. Interestingly, the E/A ratio between MAC patients and their matched controls across AI-ECG LVDF grades remained consistent.

Conclusion

AI-ECG LVDF predicts mortality risk in patients with moderate-severe-MAC, regardless of mitral inflow gradients. Utilizing AI-ECG LVDF might aid in the risk stratification of patients with significant MAC.

Contributors

G Tsaban
G Tsaban

Author

Mayo Clinic Rochester , United States of America

E Lee
E Lee

Author

Mayo Clinic Hospital-Rochester Rochester , United States of America

Y W Wong
Y W Wong

Author

G C Kane
G C Kane

Author

Mayo Clinic Rochester , United States of America

F Lopez-Jimenez
F Lopez-Jimenez

Author

Mayo Clinic Rochester , United States of America

M Eleid
M Eleid

Author

V T Nkomo
V T Nkomo

Author

Mayo Clinic Rochester , United States of America

A J Deshmukh
A J Deshmukh

Author

Mayo Clinic Hospital - St. Mary's Campus Rochester , United States of America

P A Noseworthy
P A Noseworthy

Author

Mayo Clinic Rochester , United States of America

P A Friedman
P A Friedman

Author

Mayo Clinic Rochester , United States of America

I Attia
I Attia

Author

Mayo Clinic Hospital - St. Mary's Campus Rochester , United States of America

J K Oh
J K Oh

Author

Mayo Clinic Rochester , United States of America