Shyam-Sundar Vijay, Harding Daniel, Khan Abbas, Abdulkareem Musa, Slabaugh Greg, Mohiddin Saidi A, Petersen Steffen E, Aung Nay
William Harvey Research Institute, Queen Mary University of London, London, United Kingdom.
Barts Heart Centre, St Bartholomew's Hospital, London, United Kingdom.
Front Cardiovasc Med. 2024 Aug 29;11:1408574. doi: 10.3389/fcvm.2024.1408574. eCollection 2024.
Myocarditis is a cardiovascular disease characterised by inflammation of the heart muscle which can lead to heart failure. There is heterogeneity in the mode of presentation, underlying aetiologies, and clinical outcome with impact on a wide range of age groups which lead to diagnostic challenges. Cardiovascular magnetic resonance (CMR) is the preferred imaging modality in the diagnostic work-up of those with acute myocarditis. There is a need for systematic analytical approaches to improve diagnosis. Artificial intelligence (AI) and machine learning (ML) are increasingly used in CMR and has been shown to match human diagnostic performance in multiple disease categories. In this review article, we will describe the role of CMR in the diagnosis of acute myocarditis followed by a literature review on the applications of AI and ML to diagnose acute myocarditis. Only a few papers were identified with limitations in cases and control size and a lack of detail regarding cohort characteristics in addition to the absence of relevant cardiovascular disease controls. Furthermore, often CMR datasets did not include contemporary tissue characterisation parameters such as T1 and T2 mapping techniques, which are central to the diagnosis of acute myocarditis. Future work may include the use of explainability tools to enhance our confidence and understanding of the machine learning models with large, better characterised cohorts and clinical context improving the diagnosis of acute myocarditis.
心肌炎是一种心血管疾病,其特征是心肌发炎,可导致心力衰竭。其临床表现方式、潜在病因和临床结果存在异质性,影响广泛的年龄组,这导致了诊断上的挑战。心血管磁共振成像(CMR)是急性心肌炎患者诊断检查中首选的成像方式。需要系统的分析方法来改善诊断。人工智能(AI)和机器学习(ML)在CMR中的应用越来越广泛,并且已被证明在多种疾病类别中与人类诊断性能相当。在这篇综述文章中,我们将描述CMR在急性心肌炎诊断中的作用,随后对AI和ML在诊断急性心肌炎中的应用进行文献综述。仅发现了少数几篇论文,这些论文存在病例和对照规模有限、缺乏队列特征细节以及缺乏相关心血管疾病对照的问题。此外,CMR数据集通常不包括当代组织特征参数,如T1和T2映射技术,而这些技术是急性心肌炎诊断的核心。未来的工作可能包括使用可解释性工具,通过更大、特征更明确的队列和临床背景来增强我们对机器学习模型的信心和理解,从而改善急性心肌炎的诊断。