Recent developments in modeling, imaging, and monitoring of cardiovascular diseases using machine learning.
Hamed MoradiAkram Al-HouraniGianmarco ConciliaFarnaz KhoshmaneshFarhad R NezamiScott NeedhamSara BaratchiKhashayar KhoshmaneshPublished in: Biophysical reviews (2023)
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.
Keyphrases
- blood flow
- cardiovascular disease
- machine learning
- high resolution
- data analysis
- deep learning
- big data
- cardiovascular events
- cardiovascular risk factors
- type diabetes
- heart rate
- single molecule
- mass spectrometry
- metabolic syndrome
- air pollution
- risk factors
- electronic health record
- label free
- fluorescence imaging
- real time pcr
- electron microscopy