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. 2020 Aug 28;40(12):1921–1939. doi: 10.1007/s00296-020-04691-5

Table 3.

Machine learning-based CVD/stroke risk stratification in non-RA cohorts

C1 C2 C3 C4 C5 C6 C7 C8 C9 C10
SN First Author (Year) N Features types TF Feature Selection Classifier type Gold standard PE Benchmarking
R1 Gastounioti (2015) [116] 56 Kinematics features 1236 FDR, WRS, PCA SVM Follow-up data labels ACC (88%) Against kNN, PNN, DT, DA
R2 Unnikrishnan (2016) [117] 2406 CCVRFs 9 NA SVM Follow-up data labels Se (68.2%), Sp (85.9%), AUC (0.71) Against FRS
R3 Venkatesh (2017) [118] 6814 CCVRFs, image phenotypes, and serum biomarkers 735 MDMST RF, Cox, LASSO-cox, AIC-Cox backward regression Follow-up data labels C-Index (0.81), BS (0.083) Against FRS and PCRS
R4 Banchhor (2017) [119] 22 Texture-based and wall-based features 65 PCA SVM Carotid plaque burden ACC (91.28%) AUC (0.91)
R5 Araki (2017) [47] 204 Image-based texture features 16 Statistical Test SVM LD-based risk labels ACC (NW: 95.08% & FW: 93.47%)
R6 Weng (2017) [56] 378,256 CCVRFs 30 RF, LR, GBM, ANN Follow-up data labels AUC: 0.764 Against PCRS
R7 Kakadiaris (2018) [55] 6459 CCVRFs 9 SVM Follow-up data labels Se (86%), Sp (95%), AUC (0.92) Against PCRS
R8 Jamthikar (2019) [54] 202 CCVRFs and CUS Image-based features 47 PCA polling RF Carotid stenosis surrogate endpoint of CVD

AUC of ML system = 0.80 (95% CI 0.77–0.84)

AUC for CCVRC = 0.68

(95% CI 0.64–0.72)

R9 Jamthikar (2020) [51] 202 CCVRFs and CUS image-based features 19 SVM Surrogate endpoint of CVD AUC of ML system = 0.88 (p < 0.001) Against 13 CCVRC
R10 Jamthikar (2020) [120] 202 CCVRFs and CUS image-based features 38 Logistic regression RF LD as surrogate endpoint of CVD AUC for integrated ML system = 0.99, p < 0.001

SN serial num, N Number of patients, CVD cardiovascular disease, CUS carotid ultrasound, LD lumen diameter, LR logistic regression, FDR fisher discriminant ratio, WRS Wilcoxon Rank-Sum, PCA principal component analysis, DA discriminant analysis, MDMST minimal depth of maximal subtree, SVM support vector machine, GMM Gaussian Mixture Model, RBPNN Radial Basis Probabilistic Neural Network, DT decision tree, kNN K-nearest neighbor, NB Naïve Bays, FC Fuzzy Classifier, QNN Quantum Neural Network, MLP Multilayer Perceptron, RF Random Forest, SOM Self Organization Map, ANN artificial neural network, DWT Discrete Wavelet Transform, HoS higher-order spectra, CCVRFs conventional cardiovascular risk factors, ACC accuracy, Se sensitivity, Sp specificity, AUC area under the curve, BS Brier Score, IGR information gain ranking, DB database, CCVRC conventional cardiovascular risk calculators, PCRS pooled cohort risk score, FRS Framingham risk score