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. 2020 Sep 29;10:16057. doi: 10.1038/s41598-020-72685-1

Table 2.

Characteristics of the included studies.

First author Analytic model Sample Indication Imaging Comparison Database
Cardiac arrhythmias
Alickovic et al. (2016) RF 47 Arrhythmia detection ECG Five ECG signal patterns from MIT-BIH (normal (N), Premature Ventricular Complex (PVC), Atrial Premature Contraction (APC), Right Bundle Branch Block (RBBB) and Left Bundle Branch Block (RBBB)) and four ECG patterns from St. -Petersburg Institute of Cardiological Technics 12lead Arrhythmia Database (N, APC, PVC and RBBB) St. Petersburg and MIT-BIH database
Au-Yeung et al. (2018) 5sRF, 10sRF, SVM 788 Ventricular arrhythmia ICD Data SCD-HeFT study
Hill et al. (2018) Logistic-linear regression, SVM, RF 2,994,837 Development of AF/flutter in gen pop Clinical data ML compared with conventional linear statistical methods UK Clinical Practice Research Datalink (CPRD) between 01–01-2006 and 31–12-2016 was undertaken
Kotu et al. (2015) k-NN, SVM, RF 54 arrhythmic risk stratification of post MI patients Cardiac MRI Low LVEF and Scar versus textural features of scar Single center
Ming-Zher Poh et al. (2018) CNN 149,048 AF ECG Several publicly accessible PPG repositories, including the MIMIC-III critical care database,11 the Vortal data set from healthy volunteers12 and the IEEE-TBME PPG Respiratory Rate Benchmark data set.1
Xiaoyan Xu et al. (2018) CNN 25 AF ECG MIT-BIH Atrial Fibrillation database MIT-BIH Atrial Fibrillation Database
Coronary artery disease
Araki et al. (2016) SVM classifier with five different kernels sets 15 Plaque rupture prediction IVUS 40 MHz catheter utilizing iMap (Boston Scientific, Marlborough, MA, USA) with 2,865 frames per patient (42,975 frames) and (b) linear probe B-mode carotid ultrasound (Toshiba scCNNer, Japan) Single center
Araki et al. (2016) SVM combined with PCA 19 Coronary risk assessment IVUS Single center
Arsanjani et al. (2013) boosting algorithm 1,181 Perfusion SPECT in CAD Perfusion SPECT 2 experts, combined supine/prone TPD Single center
BaumCNN et al. (2017) Custom-built algorithm 258 ctFFR in detecting relevant lesions Invasive FFR determination of relevant lesions the MACHINE Registry
Coenen (2018) Custom-built algorithm 351 Invasive FFR / Computational flow dynamics based (CFD-FFR) CT angiography Invasive FFR / Computational flow dynamics based (CFD-FFR) 5 centers in Europe, Asia, and the United States
Dey et al. (2015) boosting algorithm 37 Coronary CTA in ischemic heart disease patients to predict impaired myocardial flow reserve CCTA Clinical stenosis grading Single center
Eisenberg et al. (2018) boosting algorithm 1925 MPI in CAD SPECT Human visual analysis The ReFiNE registry
Freiman et al. (2017) Custom-built algorithm 115 CCTA in coronary artery stenosis CCTA Cardiac image analysis The MICCAI 2012 challenge
Guner et al. (2010) CNN 243 Stable CAD Myocardial perfusion SPECT (MPS)

SPECT evaluation and human–computer interaction

One expert reader who has 10 years of experience and six nuclear medicine residents who have two to four years of experience in nuclear cardiology took part in the study

Single center
Hae et al. (2018) Logistic-linear regression, SVM, RF, boosting algorithm 1,132 Prediction FFR in stable and unstable angina patients FFR, CCTA Single center
Han et al. (2017) Logistic-linear regression 252 Physiologically significant CAD CCTA and invasive fractional flow reserve (FFR The DeFACTO study
Hu (Xiuhua) et al. (2018) Custom-built algorithm 105 Intermediate coronary artery lesions CCTA CCTA-FFR vs Invasive angiography FFR Single center
Hu et al. (2018) Boosting algorithm 1861 MPI in CAD SPECT True early reperfusion Multicenter REFINE SPECT registry
Wei et al. (2014) Custom-built algorithm 83 Noncalcified plaques (NCPs) detection on CCTA CCTA Single center
Kranthi et al. (2017) Boosting algorithm 85,945 CCTA in CAD CCTA 66 available parameters (34 clinical parameters, 32 laboratory parameters) Single center
Madan et al. (2013) SVM 407 Urinary proteome in CAD global proteomic profile analysis of urinary proteome Indian Atherosclerosis Research Study
Zellweger et al. (2018) Custom-built algorithm 987 CAD evaluation N/A Framingham scores The Ludwigshafen Risk and Cardiovascular Health Study (LURIC)
Moshrik Abd alamir et al. (2018) Custom-built algorithm 923 ED patients with chest pain -CTA analysis CT Angiography Single center
Nakajima et al. (2017) CNN 1,001 Previous myocardial infarction and coronary revascularization SPECT Expert consensus interpretations Japanese multicenter study
Song et al. (2014) SVM 208 Risk prediction in ACS N/A Single center
VanHouten et al. (2014) Logistic-linear regression, RF 20,078 Risk prediction in ACS N/A Single center
Xiao et al. (2018) CNN 15 Ischemic ST change in ambulatory ECG ECG Long-Term ST Database (LTST database) from PhysioNet
Yoneyama et al. (2017) CNN 59 Detecting culprit coronary arteries CCTA and myocardial perfusion SPECT Single center
Stroke
Abouzari et al. (2009) CNN 300 SDH post-surgery outcome prediction CT head Single center
Alexander Roederer et al.(2014) Logistic-linear regression 81 SAH-Vasospasm prediction Passively obtained clinical data Single center
Arslan et al. (2016) Logistic-linear regression, SVM, boosting algorithm 80 Ischemic stroke EMR Single center
Atanassova et al. (2008) CNN 54 Major stroke Diastolic BP 2 CNNs compared Single center
Barriera et al. (2018) CNN 284 Stroke (ICH and ischemic stroke) CT head Stroke neurologists reading CT Single center
Beecy et al. (2017) CNN 114 Stroke CT head Expert consensus interpretations Single center
Dharmasaroja et al. (2013) CNN 194 Stroke/intracranial hemorrhage CT head Thrombolysis after ischemic stroke Single center
Fodeh et al. (2018) SVM 1834 Atraumatic ICH EHR review Single center
Gottrup et al. (2005) kNN, Custom-built algorithm 14 Acute ischemic stroke MRI Applicability of highly flexible instance-based methods Single center
Ho et al. (2016) SVM, RF, and GBRT models 105 Acute ischemic stroke MRI Classification models for the problem of unknown time-since-stroke Single center
Knight-Greenfield et al. (2018) CNN 114 Stroke CT head Expert consensus interpretations Single center
Ramos et al. (2018) SVM, RF, Logistic-linear regression, CNN 317 SAH CT Head Delayed cerebral ischemia in SAH detection Single center
SÜt et al. (2012) MLP neural networks 584 Stroke mortality EMR data Selected variables using univariate statistical analyses N/A
Paula De Toledo et al. (2009) Logistic-linear regression 441 SAH CT Head Algorithms used were C4.5, fast decision tree learner, partial decision trees, repeated incremental pruning to produce error reduction, nearest neighbor with generalization, and ripple down rule learner Multicenter Register
Thorpe et al. (2018) decision tree 66 Stroke Transcranial Doppler Velocity Curvature Index (VCI) vs Velocity Asymmetry Index (VAI) Single center
Williamson et al. (2019) BOOSTING algorithm, RF 483 Risk stratification in SAH True poor outcomes Single center
Xie et al. (2019) Boosting algorithm 512 Predict Patient Outcome in Acute Ischemic Stroke CT Head and clinical parameters Feature selections were performed using a greedy algorithm Single center
Heart failure
Andjelkovic et al. (2014) CNN 193 HF in congenital heart disease Echocardiography Single center
Blecker et al. (2018) Logistic-linear regression 37,229 ADHF Early ID of patients at risk of readmission for ADHF 4 algorithms tested Single center
Gleeson et al. (2016) Custom-built algorithm 534 HF Echocardiography and ECG Data mining was applied to discover novel ECG and echocardiographic markers of risk Single center
Golas et al. (2018) Logistic-linear regression, boosting algorithm, CNN 11,510 HF EHR Heat failure patients to predict 30 day readmissions Several hospitals in the Partners Healthcare System
Mortazavi et al. (2016) Random forests, boosting, combined algorithms or logistic regression 1653 HF Surveys to hospital examinations Tele-HF trial
Frizzell et al Random forest and gradient-boosted algorithms 56,477 HF EHR Traditional statistical methods GWTG-HF registry
Kasper Rossing et al. (2016) SVM 33 HFpEF Urinary proteomic analysis Heart failure clinic (Single center)
Kiljanek et al. (2009) RF 1587 HF Clinical diagnosis Development of congestive heart failure after NSTEMI CRUSADE registry
Liu et al. (2016) Boosting algorithm, Logistic-linear regression 526 HF Medical data, blood test, and echocardiographic imaging Predicting mortality in HF Single center

SVM support vector machine, RF random forest, CNN convolutional neural network, kNN k-nearest neighbors, PCA principal component analysis, GBRT gradient boosted regression trees, MLP multilayer perceptron, HER electronic health record, HF heart failure, HFpEF heart failure with preserved ejection fraction, ADHF acute decompensated heart failure, SAH subarachnoid hemorrhage, SDH subdural hematoma, ICH intracerebral hemorrhage, CAD coronary artery disease, ACS acute coronary syndrome, CCTA coronary computed tomography angiography, FFR fractional flow reserve, IVUS intravascular ultrasound, ICD implantable cardioverter-defibrillator, AF atrial fibrillation, ECG electrocardiogram.