医学
互操作性
心脏淀粉样变性
医学诊断
可用性
鉴定(生物学)
人工智能
叙述性评论
价值(数学)
淀粉样变性
机器学习
内科学
重症监护医学
计算机科学
病理
操作系统
人机交互
生物
植物
作者
Martha Grogan,Francisco López-Jiménez,Spencer Guthrie,Nisith Kumar,R.Eugene Langevin,Isabelle Lousada,Ronald Witteles,Ajay K. Royyuru,Michael Rosenzweig,Sarah Cairns‐Smith,David Ouyang
标识
DOI:10.1161/jaha.124.036533
摘要
Nonspecific symptoms and other diagnostic challenges lead to underdiagnosis of cardiac amyloidosis (CA). Artificial intelligence (AI) could help address these challenges, but a summary of the performance of these tools is lacking. This narrative review of published literature describes the performance of AI tools that use data from ECGs and echocardiography to improve identification of CA and challenges that hinder adoption of these tools. Thirteen studies met inclusion criteria with sample sizes ranging from 50 to 2451 patients. Four studies used ECG data, 8 used echocardiography data, and 1 used both. The CA gold standard was typically defined as a CA diagnosis in an institutional or other database but the requirements for these diagnoses were heterogenous across studies, and many did not distinguish among CA subtypes. AI model development varied considerably, and only 4 studies included external validation. The ability of models to predict CA ranged from 0.71 to 1.00, sensitivity ranged from 16% to 100%, and specificity from 75% to 100%. Only 1 study reported model performance across strata of sex, age, race, and CA type. Persistent challenges to AI adoption include usability, cost, value added, electronic health record/information technology interoperability, patient‐related factors, regulation, and privacy and liability. Published studies on AI for improved identification of CA show favorable performance measures but numerous methodologic and other challenges must be addressed before these tools are more widely adopted.
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