The Utility of Artificial Intelligence and Machine Learning in the Diagnosis of Takotsubo Cardiomyopathy: A Systematic Review

IF 1 Q4 CARDIAC & CARDIOVASCULAR SYSTEMS Heart and Mind Pub Date : 2024-07-01 DOI:10.4103/hm.hm-d-23-00061
Helen Huang, Francesco Perone, K. Leung, Irfan Ullah, Quinncy Lee, Nicholas Chew, Tong Liu, G. Tse
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Abstract

Takotsubo cardiomyopathy (TTC) is a cardiovascular disease caused by physical/psychological stressors with significant morbidity if left untreated. Because TTC often mimics acute myocardial infarction in the absence of obstructive coronary disease, the condition is often underdiagnosed in the population. Our aim was to discuss the role of artificial intelligence (AI) and machine learning (ML) in diagnosing TTC. We systematically searched electronic databases from inception until April 8, 2023, for studies on the utility of AI- or ML-based algorithms in diagnosing TTC compared with other cardiovascular diseases or healthy controls. We summarized major findings in a narrative fashion and tabulated relevant numerical parameters. Five studies with a total of 920 patients were included. Four hundred and forty-seven were diagnosed with TTC via International Classification of Diseases codes or the Mayo Clinic diagnostic criteria, while there were 473 patients in the comparator group (29 of healthy controls, 429 of myocardial infarction, and 14 of acute myocarditis). Hypertension and smoking were the most common comorbidities in both cohorts, but there were no statistical differences between TTC and comparators. Two studies utilized deep-learning algorithms on transthoracic echocardiographic images, while the rest incorporated supervised ML on cardiac magnetic resonance imaging, 12-lead electrocardiographs, and brain magnetic resonance imaging. All studies found that AI-based algorithms can increase the diagnostic rate of TTC when compared to healthy controls or myocardial infarction patients. In three of these studies, AI-based algorithms had higher sensitivity and specificity compared to human readers. AI and ML algorithms can improve the diagnostic capacity of TTC and additionally reduce erroneous human error in differentiating from MI and healthy individuals.
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人工智能和机器学习在诊断 Takotsubo 心肌病中的应用:系统性综述
塔克氏心肌病(TTC)是一种由生理/心理压力引起的心血管疾病,如不及时治疗,发病率很高。由于 TTC 常常在没有阻塞性冠状动脉疾病的情况下模仿急性心肌梗死,因此该疾病在人群中往往诊断不足。我们的目的是讨论人工智能(AI)和机器学习(ML)在诊断 TTC 中的作用。 我们系统地检索了从开始到 2023 年 4 月 8 日的电子数据库,以了解与其他心血管疾病或健康对照相比,基于人工智能或 ML 的算法在诊断 TTC 中的效用。我们以叙述的方式总结了主要研究结果,并将相关数字参数列表。 五项研究共纳入了 920 名患者。通过国际疾病分类代码或梅奥诊所诊断标准确诊的 TTC 患者有 447 人,而对比组患者有 473 人(健康对照组 29 人、心肌梗死组 429 人、急性心肌炎组 14 人)。高血压和吸烟是两组患者中最常见的合并症,但 TTC 与对比组之间没有统计学差异。两项研究在经胸超声心动图图像上使用了深度学习算法,其余研究则在心脏磁共振成像、12导联心电图和脑磁共振成像上使用了有监督的ML。所有研究都发现,与健康对照组或心肌梗塞患者相比,基于人工智能的算法可以提高 TTC 的诊断率。在其中三项研究中,与人类读者相比,基于人工智能的算法具有更高的灵敏度和特异性。 人工智能和 ML 算法可以提高 TTC 的诊断能力,还能在区分心肌梗死和健康人时减少人为错误。
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来源期刊
CiteScore
1.10
自引率
0.00%
发文量
10
审稿时长
19 weeks
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