Affiliation:
1. Department of Cardiovascular Diseases Mayo Clinic Rochester Minnesota USA
2. Division of Hematology, Department of Medicine Mayo Clinic Rochester Minnesota USA
3. Department of Quantitative Health Sciences Mayo Clinic Rochester Minnesota USA
4. Department of Artificial Intelligence and Informatics Mayo Clinic Rochester Minnesota USA
5. Department of Laboratory Medicine and Pathology Mayo Clinic Rochester Minnesota USA
Abstract
AbstractAimsWe aim to determine if our previously validated, diagnostic artificial intelligence (AI) electrocardiogram (ECG) model is prognostic for survival among patients with cardiac amyloidosis (CA).MethodsA total of 2533 patients with CA (1834 with light chain amyloidosis (AL), 530 with wild‐type transthyretin amyloid protein (ATTRwt) and 169 with hereditary transthyretin amyloid (ATTRv)] were included. An amyloid AI ECG (A2E) score was calculated for each patient reflecting the likelihood of CA. CA stage was calculated using the European modification of the Mayo 2004 criteria for AL and Mayo stage for transthyretin amyloid (ATTR). Risk of death was modelled using Cox proportional hazards, and Kaplan–Meier was used to estimate survival.ResultsMedian age of the cohort was 67 [inter‐quartile ratio (IQR) 59, 74], and 71.6% were male. The median overall survival for the cohort was 35.6 months [95% confidence interval (CI) 32.3, 39.5]. For AL, ATTRwt and ATTRv, respectively, median survival was 22.9 (95% CI 19.2, 28.2), 47.2 (95% CI 43.4, 52.3) and 61.4 (95% CI 48.7, 75.9) months. On univariate analysis, an increasing A2E score was associated with more than a two‐fold risk of all‐cause death. On multivariable analysis, the A2E score retained its importance with a risk ratio of 2.0 (95% CI 1.58, 2.55) in the AL group and 2.7 (95% CI 1.81, 4.24) in the ATTR group.ConclusionsAmong patients with AL and ATTR amyloidosis, the A2E model helps to stratify risk of CA and adds another dimension of prognostication.
Funder
National Cancer Institute
Henry J. Predolin Foundation for Research in Leukemia
Jabbs Foundation