Recent developments in modeling, imaging, and monitoring of cardiovascular diseases using machine learning

被引:0
作者
Hamed Moradi
Akram Al-Hourani
Gianmarco Concilia
Farnaz Khoshmanesh
Farhad R. Nezami
Scott Needham
Sara Baratchi
Khashayar Khoshmanesh
机构
[1] Eindhoven University of Technology,Department of Biomedical Engineering
[2] RMIT University,School of Engineering
[3] La Trobe University,School of Allied Health, Human Services & Sport
[4] Harvard Medical School,Division of Thoracic and Cardiac Surgery, Brigham and Women’s Hospital
[5] Leading Technology Group,School of Health and Biomedical Sciences
[6] RMIT University,undefined
来源
Biophysical Reviews | 2023年 / 15卷
关键词
Cardiovascular diseases; Computational fluid dynamics; Flow imaging; Wearable sensors; Machine learning;
D O I
暂无
中图分类号
学科分类号
摘要
Cardiovascular diseases are the leading cause of mortality, morbidity, and hospitalization around the world. Recent technological advances have facilitated analyzing, visualizing, and monitoring cardiovascular diseases using emerging computational fluid dynamics, blood flow imaging, and wearable sensing technologies. Yet, computational cost, limited spatiotemporal resolution, and obstacles for thorough data analysis have hindered the utility of such techniques to curb cardiovascular diseases. We herein discuss how leveraging machine learning techniques, and in particular deep learning methods, could overcome these limitations and offer promise for translation. We discuss the remarkable capacity of recently developed machine learning techniques to accelerate flow modeling, enhance the resolution while reduce the noise and scanning time of current blood flow imaging techniques, and accurate detection of cardiovascular diseases using a plethora of data collected by wearable sensors.
引用
收藏
页码:19 / 33
页数:14
相关论文
共 374 条
[1]  
Al'Aref SJ(2019)Clinical applications of machine learning in cardiovascular disease and its relevance to cardiac imaging Eur Heart J 40 1975-1986
[2]  
Allen BD(2013)Impact of aneurysm repair on thoracic aorta hemodynamics Circulation 128 e341-e343
[3]  
Barker AJ(2009)Doppler echocardiography: a contemporary review J Cardiol 54 347-358
[4]  
Kansal P(2021)Uncovering near-wall blood flow from sparse data with physics-informed neural networks Phys Fluids 33 615-627
[5]  
Collins JD(2022)Machine learning for cardiovascular biomechanics modeling: challenges and beyond Ann Biomed Eng 50 398-407
[6]  
Carr JC(2013)Using methods from the data-mining and machine-learning literature for disease classification and prediction: a case study examining classification of heart failure subtypes J Clin Epidemiol 66 632-648
[7]  
Malaisrie SC(2019)Four-dimensional flow MRI: principles and cardiovascular applications Radiographics 39 1092-1105
[8]  
Markl M(2020)Transcatheter aortic valve implantation represents an anti-inflammatory therapy via reduction of shear stress–induced, Piezo-1–mediated monocyte activation Circulation 142 581-599
[9]  
Anavekar NS(2021)Smart wearable devices in cardiovascular care: where we are and how to move forward Nat Rev Cardiol 18 77-89
[10]  
Oh JK(2009)Computational fluid–structure interaction: methods and application to a total cavopulmonary connection Comput Mech 45 409-417