Rahul Dhawan, Mohamed Omer, Caitlin Carpenter, Paul A. Friedman, Xiaoke Liu
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引用次数: 0
摘要
背景左束支传导阻滞(LBBB)诱发的心肌病是一种日益被认可的疾病实体。病例报告 一名 70 岁男性,既往有左束支传导阻滞病史,射血分数(EF)保留,无其他已知的心血管疾病,表现为晕厥前兆、高级别房室传导阻滞和 EF 值降低(36%)的心力衰竭。他的冠状动脉造影未发现任何阻塞性疾病。未发现其他已知的心肌病病因。临床表现前 6 年进行的人工智能心电图一直预测出低 EF 的可能性很高(高达 91%)。患者成功接受了左束支区(LBBA)起搏,并纠正了潜在的 LBBB。随后的 AI 心电图显示,LBBA 起搏后,低 EF 的概率立即大幅下降至 47%,术后 2 个月又降至 3%。结论人工智能支持的 ECGS 可帮助识别有患 LBBB 诱导的心肌病风险的患者,并预测对 LBBA 起搏的反应。
Successful prediction of left bundle branch block‐induced cardiomyopathy and treatment effect by artificial intelligence‐enabled electrocardiogram
BackgroundLeft bundle branch block (LBBB) induced cardiomyopathy is an increasingly recognized disease entity. However, no clinical testing has been shown to be able to predict such an occurrence.Case reportA 70‐year‐old male with a prior history of LBBB with preserved ejection fraction (EF) and no other known cardiovascular conditions presented with presyncope, high‐grade AV block, and heart failure with reduced EF (36%). His coronary angiogram was negative for any obstructive disease. No other known etiologies for cardiomyopathy were identified. Artificial intelligence‐enabled ECGs performed 6 years prior to clinical presentation consistently predicted a high probability (up to 91%) of low EF. The patient successfully underwent left bundle branch area (LBBA) pacing with correction of the underlying LBBB. Subsequent AI ECGs showed a large drop in the probability of low EF immediately after LBBA pacing to 47% and then to 3% 2 months post procedure. His heart failure symptoms markedly improved and EF normalized to 54% at the same time.ConclusionsArtificial intelligence‐enabled ECGS may help identify patients who are at risk of developing LBBB‐induced cardiomyopathy and predict the response to LBBA pacing.