AiTiALVSD AI-enabled ECG model detected LV systolic dysfunction with an AUROC of 0.930 and 97.9% sensitivity in patients with LBBB.
Observational (n=2,813)
Yes
Does the AiTiALVSD AI-ECG model accurately detect LVSD and predict future clinical outcomes in patients with left bundle branch block?
The AiTiALVSD AI-ECG model accurately detects left ventricular systolic dysfunction and stratifies long-term cardiovascular risk in patients with left bundle branch block, offering a scalable screening tool.
Effect estimate: AUROC 0.930 (95% CI 0.924–0.937)
Abstract Background Left bundle branch block (LBBB) significantly increases the risk of left ventricular systolic dysfunction (LVSD) due to cardiac dyssynchrony. Although artificial intelligence–enabled electrocardiography (AI-ECG) models show promise in detecting LVSD, their performance in LBBB patients remains underexplored. We hypothesized that an AI-ECG model clinically validated for detecting LVSD would accurately detect LVSD and predict future clinical outcomes in LBBB patients. Methods In this retrospective multicenter study, 5,689 expert-validated LBBB ECGs collected from 2,813 patients between 2016 and 2024 were analyzed using a previously developed and validated AI-ECG model. LVSD was defined as an ejection fraction of ≤ 40%. Model performance was assessed using the area under the receiver operating characteristic curve (AUROC), the area under the precision-recall curve (AUPRC), sensitivity, and specificity. Patients were stratified into high- and low-risk groups based on a threshold that achieved 90% sensitivity. A Kaplan–Meier analysis was used to compare clinical outcomes. Results Among the 2,813 LBBB patients (mean age, 70.7 years; male sex, 43.7%), hypertension and a history of heart failure were common. The AiTiALVSD model showed strong diagnostic performance for LVSD (AUROC, 0.930 95% CI, 0.924–0.937; AUPRC, 0.913 95% CI, 0.902–0.923; sensitivity, 0.979; specificity, 0.473). During the mean follow-up of 4.1 years, high-risk patients had significantly higher hazards than low-risk patients for all-cause mortality (adjusted hazard ratio HR, 1.87; 95% CI, 1.53–2.28), implantable cardioverter defibrillator/cardiac resynchronization therapy implantation (adjusted HR, 15.2; 95% CI, 7.51–30.77), and cardiovascular hospitalization (adjusted HR, 1.11; 95% CI, 0.96–1.28). Conclusions AiTiALVSD effectively detects LVSD and stratifies long-term cardiovascular risk in LBBB patients, supporting its clinical utility for early detection and patient management.
Lee et al. (Mon,) conducted a observational in Adult patients (aged ≥18) with left bundle branch block (LBBB) and paired echocardiogram within 14 days (n=2,813). AiTiALVSD AI-enabled ECG model vs. No AI-ECG assessment (standard care) was evaluated on Presence of left ventricular systolic dysfunction (LVSD) defined as echocardiographic LVEF ≤40% (AUROC 0.930, 95% CI 0.924–0.937). AiTiALVSD AI-enabled ECG model detected LV systolic dysfunction with an AUROC of 0.930 and 97.9% sensitivity in patients with LBBB.