| Literature DB >> 35829916 |
Karthik Seetharam1,2, Sudarshan Balla3, Christopher Bianco3, Jim Cheung4, Roman Pachulski5, Deepak Asti6, Nikil Nalluri6, Astha Tejpal6, Parvez Mir6, Jilan Shah6, Premila Bhat6, Tanveer Mir6, Yasmin Hamirani6.
Abstract
In this digital era, artificial intelligence (AI) is establishing a strong foothold in commercial industry and the field of technology. These effects are trickling into the healthcare industry, especially in the clinical arena of cardiology. Machine learning (ML) algorithms are making substantial progress in various subspecialties of cardiology. This will have a positive impact on patient care and move the field towards precision medicine. In this review article, we explore the progress of ML in cardiovascular imaging, electrophysiology, heart failure, and interventional cardiology.Entities:
Keywords: Artificial intelligence; Cardiovascular Imaging; Electrophysiology; Heart failure; Interventional cardiology; Machine learning
Year: 2022 PMID: 35829916 PMCID: PMC9381660 DOI: 10.1007/s40119-022-00273-7
Source DB: PubMed Journal: Cardiol Ther ISSN: 2193-6544
Fig. 1ML improves diagnosis and prognosis
Machine learning in echocardiography
| Study | Number of patients | ML approach | Description |
|---|---|---|---|
| Samad et al. [ | 171,510 | Supervised learning | Survival prediction utilizing echo and clinical data and compared with other risk scores and logistic regression models |
| Pandey et al. [ | 1242 | DL | Deep learning model stratified patients into high- and low-risk phenotypes. These models were assessed with clinical outcomes in TOPCAT clinical trial data |
| Sengupta et al. [ | 1964 | Supervised learning | Supervised learning was used to classify patients into high- risk and low-risk groups based on echocardiographic parameters and to optimize the timing of aortic valve replacement |
DL deep learning, ML machine learning
Machine learning in computed tomography
| Study | Number of patients | ML approach | Description |
|---|---|---|---|
| Hwang et al. [ | 1264 | Unsupervised learning | Various groups were created on the basis of plaque properties and assessed with outcome. Group B had higher incidence of CAD while groups B and C had a higher rate of revascularization |
| Kay et al. [ | 1982 | ML algorithm | LVH information was used to identify phenotypic information by utilizing radiomics |
| Al'Aref et al. [ | 35,281 | Multiple ML algorithms | ML with CAC had a higher prediction of CAD than ML alone or other pretest risk scores |
CAC coronary calcium score, CAD coronary artery disease, DL deep learning, LVH left ventricular hypertrophy, ML machine learning
Machine learning in nuclear cardiology
| Study | Number of patients | ML approach | Description |
|---|---|---|---|
| Otaki et al. [ | 3578 | DL | Deep learning prediction of CAD was superior to TPD or expert reader diagnosis |
| Betancur et al. [ | 2619 | Unsupervised learning | ML model integrating patient information had better MACE prediction than ML alone, expert reader, and TPD |
| Hu et al. [ | 1980 | ML algorithm | ML model was superior to TPD or expert diagnosis for early vessel revascularization |
CAD coronary artery disease, DL deep learning, MACE major adverse cardiovascular events, ML machine learning, TPD total perfusion deficit
Machine learning in cardiac magnetic resonance imaging
| Study | Number of patients | ML approach | Description |
|---|---|---|---|
| Mancio et al. [ | 1099 | Supervised learning | ML algorithm integrating radiomics was able to successfully detect HCM without gadolinium administration |
| Ruijsink et al. [ | 100 | DL | Deep learning enables automated ventricular function assessment, findings closely correlated with manual analysis |
DL deep learning, HCM hypertrophic cardiomyopathy, ML machine learning
Machine learning in electrophysiology
| Study | Number of patients | ML approach | Description |
|---|---|---|---|
| Mjahad et al. [ | – | Multiple ML algorithms | Deep learning algorithm had superior VF and VT detection on ECG when compared to other ML algorithms |
| Attia et al. [ | 52,870 | DL | Deep learning algorithm was capable of detecting asymptomatic left ventricular dysfunction in large patient population |
| Attia et al. [ | 36,280 | DL | Deep learning model enables identification of atrial fibrillation in patients with normal sinus rhythm |
| Kalscheur et al. [ | 595 | Multiple ML algorithms | Supervised ML model can effectively predict outcomes following CRT |
| Feeny et al. [ | 455 | Multiple ML algorithms | ML model afforded better prediction response than guidelines and event-free survival |
| Shakibfar et al. [ | 19,935 | Supervised learning | Supervised learning models were better than logistic regression models for predicting electrical storms |
CRT cardiac resynchronization therapy, DL deep learning, ECG electrocardiogram, HCM hypertrophic cardiomyopathy, ML machine learning, VF ventricular fibrillation, VT ventricular tachycardia
Machine learning in heart failure
| Study | Number of patients | ML approach | Description |
|---|---|---|---|
| Angraal et al. [ | 1767 | Supervised learning | Supervised (random forest) ML model had the best performance for predicting mortality and HF hospitalization |
| Wang et al. [ | 47,498 | Multiple ML models | Deep learning outperformed other ML models for heart failure readmission |
| Lancaster et al. [ | 866 | Unsupervised learning | Clustering ML algorithm was used to identify high-risk phenotypes in patients with heart failure |
| Sanchez-Martinez et al. [ | 156 | Unsupervised learning | Unsupervised ML was utilized to examine differences between HFpEF and healthy patients |
HF heart failure, HFpEF heart failure with preserved ejection fraction, ML machine learning
Machine learning in interventional cardiology
| Study | Number of patients | ML approach | Description |
|---|---|---|---|
| Cook et al. [ | 1008 | Supervised learning | ML algorithm was compared with expert team for iFR interpretation |
| Azzalini et al. [ | 2648 | ML algorithm | Predicting contrast-induced AKI following PCI |
| Abdul Ghffar et al. [ | 344 | Unsupervised learning | A semi-supervised ML approach was utilized in patients with patients TAVR to produce 5 phenotype groups and outcomes were assessed |
| Hernandez-Suarez et al. [ | 10,833 | Multiple ML algorithms | Multiple ML models were assessed to predict in-hospital mortality |
AKI acute kidney injury, iFR instantaneous flow ratio, ML machine learning, PCI percutaneous coronary intervention, TAVR transcatheter aortic valve replacement
| Machine learning is a branch of artificial intelligence which can achieve several tasks through supervised learning, unsupervised learning, semi-supervised learning. Deep Learning has tremendous potential and is gaining prominence in the field of cardiology. |
| Machine learning facilitates automation, risk stratification, prediction, quantification, and precision phenotyping. It can be integrated with radiomics. |
| There is a strong potential for false discovery and biases. Primary investigator and medical team must play an active role during the algorithm training and development. |