Deep learning for cardiac imaging: focus on myocardial diseases, a narrative review.

IF 2.7 3区 医学 Q2 CARDIAC & CARDIOVASCULAR SYSTEMS Hellenic Journal of Cardiology Pub Date : 2024-12-09 DOI:10.1016/j.hjc.2024.12.002
Theodoros Tsampras, Theodora Karamanidou, Giorgos Papanastasiou, Thanos G Stavropoulos
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Abstract

The integration of computational technologies into cardiology has significantly advanced the diagnosis and management of cardiovascular diseases. Computational cardiology, particularly, through cardiovascular imaging and informatics, enables a precise diagnosis of myocardial diseases utilizing techniques such as echocardiography, cardiac magnetic resonance imaging, and computed tomography. Early-stage disease classification, especially in asymptomatic patients, benefits from these advancements, potentially altering disease progression and improving patient outcomes. Automatic segmentation of myocardial tissue using deep learning (DL) algorithms improves efficiency and consistency in analyzing large patient populations. Radiomic analysis can reveal subtle disease characteristics from medical images and can enhance disease detection, enable patient stratification, and facilitate monitoring of disease progression and treatment response. Radiomic biomarkers have already demonstrated high diagnostic accuracy in distinguishing myocardial pathologies and promise treatment individualization in cardiology, earlier disease detection, and disease monitoring. In this context, this narrative review explores the current state of the art in DL applications in medical imaging (CT, CMR, echocardiography, and SPECT), focusing on automatic segmentation, radiomic feature phenotyping, and prediction of myocardial diseases, while also discussing challenges in integration of DL models in clinical practice.

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心脏成像的深度学习:专注于心肌疾病:叙述综述。
计算技术与心脏病学的结合极大地促进了心血管疾病的诊断和管理。计算心脏病学,特别是通过心血管成像和信息学,利用超声心动图、心脏磁共振成像和计算机断层扫描等技术,能够精确诊断心肌疾病。早期疾病分类,特别是无症状患者,受益于这些进展,可能改变疾病进展并改善患者预后。使用深度学习(DL)算法的心肌组织自动分割提高了分析大患者群体的效率和一致性。放射组学分析可以从医学图像中揭示细微的疾病特征,可以增强疾病检测,使患者分层,并便于监测疾病进展和治疗反应。放射组学生物标志物在区分心肌病理方面已经显示出很高的诊断准确性,并有望在心脏病学、早期疾病检测和疾病监测方面实现个体化治疗。在此背景下,本文探讨了DL在医学成像(CT、CMR、超声心动图和SPECT)中的应用现状,重点是自动分割、放射特征表型和心肌疾病预测,同时也讨论了在临床实践中整合DL模型所面临的挑战。
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来源期刊
Hellenic Journal of Cardiology
Hellenic Journal of Cardiology CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
4.90
自引率
7.30%
发文量
86
审稿时长
56 days
期刊介绍: The Hellenic Journal of Cardiology (International Edition, ISSN 1109-9666) is the official journal of the Hellenic Society of Cardiology and aims to publish high-quality articles on all aspects of cardiovascular medicine. A primary goal is to publish in each issue a number of original articles related to clinical and basic research. Many of these will be accompanied by invited editorial comments. Hot topics, such as molecular cardiology, and innovative cardiac imaging and electrophysiological mapping techniques, will appear frequently in the journal in the form of invited expert articles or special reports. The Editorial Committee also attaches great importance to subjects related to continuing medical education, the implementation of guidelines and cost effectiveness in cardiology.
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