Copyright
©The Author(s) 2024.
World J Gastroenterol. Jan 28, 2024; 30(4): 381-417
Published online Jan 28, 2024. doi: 10.3748/wjg.v30.i4.381
Published online Jan 28, 2024. doi: 10.3748/wjg.v30.i4.381
Ref. | ST | CP | Specific outcome | NP (type) | Modalities used for feature extraction | Seg | Software used for feature extraction | Features number (type) | FS | CM | Model applied to a separate dataset? | Most important result | Main findings |
Liu et al[42], 2023 | R | PPF | MVI | 104 (HCC) | T2WI | M, 3D | AK SOFTWARE | 851 (first order, shape, GLCM, GLSZM, GLRLM, NGTDM, and GLDM) | LASSO, LR | LR | Yes | AUC = 0.867 in the TS, 0.820 in the VS | A prediction model using radiomic features from single T2WI can predict MVI in HCC |
Wang et al[43], 2023 | R | PR | LRT | 100 (HCC) | AP, PVP, T2WI | M, 3D | 3D SLICER | 851 (first-order, shape, GLCM, GLDM, GLSZM, GLRLM, NGTDM and wavelet) | t-test/Mann Whitney, LASSO | ROC | Yes | AUC = 0.867 | MRI-based radiomics analysis may serve as a promising and noninvasive tool to predict outcome of locoregional treatment in HCC patients |
Gong et al[44], 2023 | R | MC | PD-1/PD-L1 | 108 (HCC) | T2WI FS, AP, PVP | M, 3D | NS | 352 (GLCM, GLRLM, intensity histogram, and shape) | ICC, t-test/ MANN WHYTNEY, LASSO | LR | Yes | AUC = 0.946 in the TS and 0.815 in the VS | A radiomics model based on multisequence MRI has the potential to predict the preoperative expression of PD-1 and PD-L1 in HCC |
Zhang et al[45], 2023 | R | MC | CK 19+/-HCC | 311 (HCC) | T1WI, T2WI, DWI, AP, VP, and DP | M, 3D | uRP | 2286 (first order, wavelet) | ICC, LASSO | LR | Yes | in the TS (C-index, 0.914), internal (C-index, 0.855), and external VS (C-index, 0.795) | The combined model based on clinic-radiological radiomics features can be used for predicting CK19+ HCC preoperatively |
Zhang et al[46], 2023 | R | PPF | MTM HCC | 232 (HCC) | DCE-MRI | M, 3D | Pyradiomics | 1037 (first order, shape GLRLM, GLSZM, NGTDM, GLCM, GLDM LoG and wavelet) | ICC, GBDT | LR, KNN, Naive-Bayes, Decision Tree, SVM | Yes | AUCs of 0.896 and 0.805 in the TS e VS | The nomogram containing radiomics, age, alpha-fetoprotein, tumour size, and tumour-to-liver ADC ratio revealed excellent predictive ability in preoperatively identifying the MTM-HCC Subtype |
Dong et al[47], 2024 | R | D, PR | VETC | 221 (HCC) | DCE-MRI | M, 3D | Pyradiomics | 1218 (FIRST ORDER) | ICC | LR, decision tree, RF, SVM, KNN, and Bayes | Yes | AUC = 0.844 | The DLR model provides a noninvasive method to discriminate VETC status and prognosis of HCC patients preoperatively |
Tabari et al[48], 2023 | R | PPF | Pre-ablation tumor radiomics | 97 (HCC) | AP, DCE-MRI | M, 3D | NS | 112 first-order, (GLCM, GLDM, GLRLM, GLSZM, NGTDM) | mRMR | RF | Yes | AUC = 0.83 | Pre-ablation MRI radiomics could act as a valuable imaging biomarker for the prediction of tumor pathologic response in patients with HCC |
Cao et al[49], 2023 | R | PR | RFS | 249 (HCC) | T2WI FS, T1WI FS, DCE-MRI | M, 3D | Pyradiomics | NS (first-order, shape, and texture, wavelet, Laplacian) | LASSO | Cox regression | Yes | C-index = 0.893 TS, 0.851 (test set), 0.797 (external) | The combined radiomic model provides superior ability to discern the possibility of recurrence-free survival in HCC over the total radiomic and the clinical–radiological models |
İnce et al[50], 2023 | R | PPF | TARE | 82 (HCC) | DCE-MRI | S, 3D | Pyradiomics | 1128 (first-order, GLCM, GLDM, GLRLM, GLSZM, and NGTDM) | ICC, PCA, SFS | SVM, LR, RM, LightGBM | No | AUC = 0.94 | Machine learning–based clinicoradiomic models demonstrated potential to predict response to TARE |
Chen et al[51], 2023 | R | PR | TACE | 144 (HCC) | T2WI, AP, PVP, DP | M, 3D | Pyradiomics | 110 (NS) | mRMR, LASSO, DNN | SVM, LR | Yes | AUC = 0.974 | DNN model performs better than other classifiers in predicting TACE response. Integrating with clinically significant factors, the CD model may be valuable in pre-treatment counseling of HCC patients who may benefit the most from TACE intervention |
Jiang et al[52], 2023 | R | PPF | MVI | 102 (HCC) | T1_in, T1_A, T2W, DWI | M, 3D | Pyradiomics | 1967 (first-order, shapes, textures, GLCM, GLSZM, GLDM, GLRLM, and filter-transformed) | LASSO | ULR | Yes | AUC = 0.901, 0.923 for TS and VS | The multiparametric MRI-based radiomics nomogram is a promising tool for the preoperative diagnosis of peritumoral MVI in HCCs |
Hu et al[53], 2023 | R | D, MC | CK19+ | 110 (HCC) | AP, VP, HBP | M, 3D | PyRadiomics | 1130 (shape, first order, GLCOM, GLRLM, GLSZ, GLDM) | ICC | RFE | No | AUC = 0.92 | The established radiomics signature based on preoperative gadoxetic acid-enhanced MRI could be an accurate and potential imaging biomarker for HCC CK19 (+) prediction |
Chong et al[54], 2023 | R | MC, PR | Glypican 3-Positive HCC | 259 (HCC) | T2WI, DWI, PRE, AP, PVP, TP and HBP | M, 3D | PyRadiomics | 749 (first order statistics, shape and size) and textural property types (GLSZM, GLCM, GLDM, GLRLM, and NGTDM) | Test-retest procedure, ICC, LASSO, RF, SVM | LR, RF, SVM | Yes | AUC = 0.943 vs 0.931 TS and VS respectively | Preoperative EOB-MRI radiomics-based nomogram satisfactorily distinguished GPC3 status and outcomes of solitary HCC 5 cm |
Hu et al[55], 2023 | R | D, PPF | Functional liver reserve | 403 (HCC) | DCE MRI | M, 3D | Pyradiomics | 851 (shape, first-order GLCM, GLRLM, GLSZ, GLDM, NGTDM, wavelet) | ICC, Spearman’s correlation | LR, SVM | No | AUC = 0.71 | A radiomics model based on gadoxetic acid-enhanced MRI was constructed in this study to discriminate HCC with different histopathologic grades |
Tao Y et al[56], 2023 | R | MC | PD-L2 | 108 (HCC) | T2WI, AP, PV | M, 3D | R | 1130 | ICC, LASSO | ROC | No | AUC = 0.871 | Prediction based on the radiomic characteristics of MRI could noninvasively predict the expression of PD-L2 in HCC |
Yang et al[57], 2022 | R | PR | ER | 181 (HCC) | T1WI, T2WI | M, 3D | LIFEx | 34 (Histogram, Shape) | LASSO | ROC | Yes | AUC = 0.79 | The model for early recurrence of HCC after ablation based on the clinical, imaging, and radiomics features presented good predictive performance |
Liu et al[58], 2023 | R | PPF | MVI | 161 (HCC) | AP, PVP, DP | M, 3D | 3D Slicer, Pyradiomics | 321 (shape, first-order histogram, GLCM, GLDM, GLRLM, GLSZM, NGTDM) | LASSO, ICC | LR | Yes | AUC = 0.87 | The nomogram model can effectively predict MVI in patients with HCC |
Zhang et al[59], 2022 | R | PPF | MVI | 189 (HCC) | HBP | M, 3D | IBEX SOFTWARE | 1768 | LASSO, ICC | nomogram | Yes | AUC = 0.884 | Depending on the clinicoradiological factors and radiological features, nomograms can effectively predict MVI status in HCC patients |
Sim et al[60], 2022 | R | PPF | MVI | 50 (HCC) | T1 AP, T1PVP | M, 2D | MaZda | 290 (area, histogram, gradient, GLCM, GLRLM, autoregressive, and wavelet) | Mutual Information, recursive pruning | SVM | No | Accuracy = 0.878 | Texture analysis of tumours on pre-operative MRI can predict presence of MVI in HCC |
Zhang et al[61], 2022 | R | PR | RFA, ER | 90 (HCC) | T1WI, T2WI, CE-MRI | M, 2D | AK Software | 1316 (first-order histogram, shape, texture, GLCM, GLRLM, GLSZM, NGTDM, GLDM, and local binary pattern, high-order, and wavelet) | ANOVA | RF, LASSO | Yes | AUC of 0.822 in the TS and 0.812 in the VS | The multi-parametric MRI-based radiomics nomogram has a high predictive value for ER of small HCC after RFA |
Zhao et al[62], 2023 | R | PR | HAIC | 112 (HCC) | T2WI | M, 3D | AK software | 396 (histogram, form factor, texture, GLZSM, GLCM, GLRLM, and Haralick) | LASSO | ROC | Yes | Accuracy = 0.81 | The nomogram based on the combined model consisting of MRI radiomics and ALBI score could be used as a biomarker to predict the therapeutic response of unresectable HCC after HAIC |
Lu et al[63], 2022 | R | PPF | MVI | 165 (HCC) | T2WI, DWI (b = 800 s/mm2), T1WI, AP, PP, TP, and HBP | M, 3D | Pyradiomics | 1227 (shape, first-order, texture, GLSZM, GLRLM, GLCM, NGTDM, and GLDM) | LASSO | multivariate LR | Yes | AUC = 0.826 | The combined model based on radiomics features of Gd-EOB-DTPA enhanced MRI, tumour margin, and peritumoural hypointensity was valuable for predicting HCC MVI |
Yang et al[64], 2022 | R | PPF | MVI | 110 (HCC) | DCE-MRI | M, 3D | A.K. Software | 11 (Grey Histogram, GLCM) | NO | ROC | No | AUC = 0.797 | The combination of MR image features and texture analysis may improve the efficiency in prediction of MVI |
Ameli et al[65], 2022 | R | D | Degree of tumor differentiation | 129 (HCC) | ADC, VE MAPS | S, 3D | MATLAB R2017B | 95 (global, histogram, GLCM, GLRLM, GLSZM, NGTDM) | multi-class classification algorithm | RF | Yes | AUC = 0.832 | The addition of radiomics-based texture analysis improved HCC grading over that of ADC or venous enhancement values alone |
Li et al[66], 2022 | R | PR | ER | 302 (HCC) | T2WI, DWI (800 s/mm2), AP, and PVP | M, 3D | Pyradiomics | 853 (shape, first order, texture, and wavelet) | SPSS, LASSO, ICC | ROC | Yes | AUCs of 0.91 and 0.87 in the TS and VS | The proposed predictive model incorporating clinico-radiological factors and the fusion radiomics signature derived from multiparametric MR images may be an effective tool for the individualized prediction of postoperative ER in patients with HCC |
Zeng et al[67], 2022 | R | PPF | BETA-CATENIN MUTATION | 98 (HCC) | AP, PVP, DP, HBP | M, 3D | Pyradiomics | 1674 (first order, GLCOM, GLSZM, GLRLM, GLDM) | T-test, fisher's exact test | LSVC | Yes | AUC = 0.86 | The RHBP radiomics model may be used as an effective model indicative of HCCs with b-catenin mutation preoperatively |
Aujay et al[68], 2022 | R | PR | TARE | 22 (HCC) | AP, PVP | M, 3D | Pyradiomics | 107 (Shape, first- and second- order) | Mann-Whitney U test | LR | No | AUC = 0.92 | Radiomics could aid in the prediction of early treatment response following TARE in patients with HCC |
Chen et al[69], 2022 | R | PPF | MVI | 415 (HCC) | T1WI, T2WI, DWI, AP, PVP, HBP | M, 3D | R | 1409 (First order, shape, two order texture, Laplacian, wavelet, logarithmic, and exponential filters) | LASSO | SVM, XGBoost, RF, LR | Yes | AUC = 0.979 | Machine learning with an LR classifier yielded the best radiomics score for HBP and DWI. The radiomics nomogram developed as a noninvasive preoperative prediction method showed favorable predictive accuracy for evaluating MVI in sHCC |
Wu et al[70], 2023 | R | D | DP-HCC | 179 (DPHCC, non DPHCC) | DCE-MRI | M, 3D | PyRadiomics | 1781 (first-order statistics, shape, and texture) | PCC, RFE | SVM, LR, LR-LASSO | Yes | AUC = 0.908 | MRI radiomics models may be useful for discriminating DPHCC from non-DPHCC before surgery |
Li et al[71], 2022 | R | PPF | MVI | 113 (HCC) | T2WI, T1WI, DCE MRI | M, 2D | MaZda | 101 (histogram, GLCOM, GLRLM) | t-test, Mann-whitney U test | ROC | No | AUC = 0.939 | Noninvasive MRI radiomic model based on MDF values and imaging biomarkers may be useful to make preoperative prediction of MVI in patients with primary HCC |
Wang et al[72], 2022 | R | PR | ER | 190 (HCC) | T2WI, T2WI FS, DCE MRI | M, 3D | PyRadiomics | 1316 (first-order histogram, texture, shape, GLZSM, GLRLM, GLCM, GLDM, and NGTDM, wavelet, local binary pattern, and Laplacian of Gaussian) | ICC, LASSO | LASSO, ICC, LR | Yes | AUC = 0.90 | The predictive model incorporated the clinical–radiological risk factors and radiomics features that could adequately predict the individualized ER risk in patients with solitary HCC ≤ 5 cm |
Zhang et al[73], 2023 | P | PPF | MVI | 602 (HCC) | T1WI, T2WI, AP, VP, HBP and ADC | M, 3D | Radcloud platform | 1409 (First order, second order, shape, texture) | LASSO | LR, RF, SVM | Yes | AUC = 0.824 E 0.821 in the TS and VS | The combination of clinicoradiological factors and fusion radiomics signature of AP and VP images based on Gd-EOB-DTPA-enhanced MRI can effectively predict MVI |
Brancato et al[74], 2022 | R | PPF | IABR | 38 (HCC) | T2WI, DCE-MRI | M, 3D | Pyradiomics | 386 (shape, first-order, and texture) | correlation filter, Wilcoxon-rank sum test, MI | LR | No | AUC = 0.96 | Radiomics MRI based on T2 and DCE-MRI revealed promising results concerning both HCC detection and grading |
Fan et al[75], 2022 | R | PR | VEGF | 202 (HCC) | AP, PV, HBP, BP, DP | M, 3D | PyRadiomics | 1906 (first order, shape) | ICC, ANOVA | LR | Yes | AUC = 0.892 in the TS, 0.800 in the VS | The combined model acquired from Gd-EOB-DTPA enhanced MRI could be considered as a credible prognostic marker for the level of VEGF in HCC |
Gao et al[76], 2022 | R | PPF | MVI | 115 (HCC) | T2WI, T1WI, AP, PVP, DP, and HBP | M, 3D | Pyradiomics | 107 (shape, first-order, and textural) | LR, SVC, RFC, and AdaBoost | LR | Yes | AUCs of 0.866 in the TS and 0.855 in the VS | The fusion model of multi-region radiomics achieves an enhanced prediction of the individualized risk estimation of MVI in HCC patients |
Hu et al[77], 2022 | R | PPF | MVI | 501 (HCC) | T1WI, AP, PVP, HBP | M, 3D | Pyradiomics | 2600 (first order, shape, GLCM, GLRLM, GLSZM, GLDM and NGTDM) | LASSO | ROC | Yes | AUC = 0.962 | The radiomics signatures of the dual regions for tumor and peritumor on AP and PVP images are of significance to predict MVI |
He et al[78], 2022 | R | PR | DFS, OS | 103 (HCC) | DCE MRI | M, 2D | AK software | 1217 (First order, Morphological, GLCM, GLRLM, GLSZM, GLDM, LOG) | ICC, Lasso, cox regression | LASSO | Yes | AUC = 0.884 | Multimodal radiomics models can serve as effective visual tools for predicting prognosis in patients with liver cancer |
Ren et al[79], 2023 | R | PR | HCC grade | 270 (HCC) | T2WI | M, 3D | Pyradiomics | 1197 (first-order and shape, GLCM, GLRLM, GLRM, and spatial gray scale corre-lation matrix) | MIC, Spearman’s correlation, LR | LR | Yes | AUC = 0.864 | The clinical–radiomics model integrating radiomics features and clinical factors can improve recurrence predictions beyond predictions made using clinical factors or radiomics features alone |
Luo et al[80], 2022 | R | PR | TACE | 61 (HCC) | T1WI, T1WI AP, T1WI PP, T2WI, DWI (b = 800), ADC | M, 3D | Pyradiomics | 1782 (shape, GLCM, GLRLM, GLSZM, NGTDM) | RF, single cox regression | ROC | No | AUC = 0.71 | Radiomic signatures derived from pretreatment MRIs could predict response to combined Lenvatinib and TACE therapy. Furthermore, it can increase the accuracy of a combined model for predicting disease progression |
Wang et al[81], 2022 | R | PPF | MVI | 113 (HCC) | AP | M, 3D | MATLAB | 12 (first order) | NO | Mann-Whitney U test, LR | No | AUC = 0.741 | Peritumoral AP enhanced degree on MRI showed an encouraging predictive performance for preoperative prediction of MVI |
Mao et al[82], 2022 | R | PPF | HCC GRADE | 122 (HCC) | T2WI (AP, HBP phases) | M, 3D | Image Analyzer | 121 (histogram, shape, texture, GLRLM and GLCM) | ICC | ANN, LR | Yes | AUC = 0.889 | Prediction models consisting of clinical parameters and Gd-EOB-DTPA-enhanced MRI radiomic features could distinguish between high-grade HCCs and low-grade HCCs |
Anderson et al[83], 2023 | P | PR | IVIM | 17 (HCC) | DWI-MRI | M, 2D | Matlab | 3 (10th, 50th, and 90th percentiles) | NO | Wilcoxon signed-rank test | No | NS | DW-MRI with IVIM and histogram analysis revealed significant reductions of D* early after treatment as well as an association between D at baseline and smaller tumor growth at three months |
Li et al[84], 2022 | R | PPF | SEV, MVI | 43 (HCC) | DWI, DCE-MRI | M, 2D | Matlab, SPSS, Medcalc | 8 (Histogram) | NO | ROC | No | AUC = 0.863 | Histogram parameters DDC and ADC, but not the α value, are useful predictors of MVI. The fifth percentile of DDC was the most useful value to predict MVI of HCC |
Li et al[85], 2022 | R | PPF | MVI | 301 (HCC) | T1WI, T2WI | M, 3D | MITK SOFTWARE | 328 (first-order, GLCM, GLRLM, form factor) | LASSO, ANOVA, MANN-WHITNEY TEST | LASSO | Yes | AUC = 0.914 | The preoperative MRI-based radiomic-clinical model predicted the MVI of HCC effectively and was more efficient compared with the radiomic model or clinical model alone |
Wang et al[86], 2022 | R | D | DD (cCC-HCC, HCC, CC) | 196 (33 cHCC-CC, 88 HCC and 75 CC) | DCE (ART, PVP, DP) | M; 3D | Pyradiomics | 1316 (shape, first-order, texture -GLCM, GLSZM, GLRLM, GLDM, NGTDM- from original, LoG and wavelet filtered images) | MI, F-test, Chi2-test, LASSO | SVM | No | AUC = 0.91 | The classification ability of cHCC-CC, HCC and CC can be further improved by extracting MRI high- order features and using a two-level feature selection method |
Yang et al[87], 2021 | R | PPF | MVI | 201 (HCC) | DCE (Pre-T1WI, AP, PVP, DP and HBP) | S; 3D | AK software | 851 (shape, first-order, texture-GLCM, GLSZM, GLRLM, GLDM, NGTDM-, wavelet-transformed) | mRMR, LASSO | ROC; LR | Yes | Radiomics: AUC = 0.896 (TS), 0.788 (VS); Radiomics + clinical: AUC = 0.932 (TS), 0.917 (VS) | The preoperative nomogram integrating clinicoradiological risk factors and the MR radiomics signature showed favourable predictive efficiency for predicting MVI |
Lv et al[88], 2021 | R | PR | AIR of RFA-treated HCC | 58 (HCC) | DCE | S; 3D | AK software | 396 (histogram, GLCM, GRLM, GLSZM, formfactor) | LASSO | LASSO, ROC | Yes | AUC = 0.941 and 0.818 in the TS and VS | The predictive nomogram integrated with clinical factors and CE-T1WI -based radiomics signature could accurately predict the occurrence of AIR after RFA |
Yu et al[89], 2022 | R | PPF, PR | VECT, PFS in VETC + and VETC-patients | 182 (HCC) | HBP | M; 3D | Pyradiomics | 1316 (shape, first-order, texture-GLCM, GLRLM, GLSZM, GLDM, NGTDM-) | LASSO | Multivariate LR; forest, SVM; DT | Yes | AUC = 0.972 (peritumoral radiomics model), AUC = 0.91 (intratumoral model) | The intratumoral or peritumoral radiomics model may be useful in predicting VETC and patient prognosis preoperatively. The peritumoral radiomics model may yield an incremental value over intratumoral model |
Fang et al[90], 2021 | R | PR | PFS of TACE + RFA treated HCC | 113 (HCC) | DCE (HAP, PVP, SPP, and DP) | S; 3D | AK software | 396 (histogram, GLCM, GLSZM GRLM) | LASSO | Cox regression; ROC | Yes | C-index radiomics: 0.646 and 0.669 in TS and VS; C-index combined model: 0.772 and 0.821 in TS and VS | A nomogram combining radiomics and clinical factors predicted the PFS of intermediate and advanced HCC treated with TACE plus RFA |
Yang et al[91], 2021 | R | MC | CK19+ HCC | 257 (HCC) | T2WI; DWI | M; 3D | MATLAB | 968 (shape, first-order, texture-GLCM, GLRLM, GLSZM, NGTDM-, wavelet) | Univariate analysis, mRMR | Multiple LR; SVM; RF; ANN | Yes | ANN-model: AUROCs = 0.857, 0.726, and 0.790 in the TS and VS A and B | The combined model based on mpMRI-radiomics accurately classify CK19+ HCC |
Chen et al[92], 2021 | R | MC | CK19+ HCC | 141 (HCC) | HBP | S; 3D | Python (U-Net) | 1024 (Deep semantic) | grid search | GBDT | Yes | AUC = 0.820 and 0.781 in TS and VS | DCE-MRI-based radiomics DLR model can preoperatively predict CK19-positive HCCs |
Horvat et al[93], 2021 | R | PR | Sustained complete response in RFA-treated HCC | 34 (HCC) | DCE (AP and EP) | M; 3D | Pyradiomics | 107 (shape, first-order, texture-GLDM, NGTDM, GLSZM, GLCM-) | NO | ROC | No | AUC > 0.7 | Second-order features extracted from equilibrium phase obtained highest discriminatory performance |
Alksas et al[94], 2021 | R | D | DD (types and grades of liver tumors) | 95 (38 benign tumors, 19 intermediate tumors, 38 HCC) | DCE (Pre-T1WI, LAP, PVP, and DP) | M; 3D | NS | 249 (morphological, functional, first-order, texture-GLCM, GLRLM-) | Wrapper approach, and Gini impurity-based selection | RF; SVM; NB, KNN; LDA | No | Accuracy = 0.88 | The identified imaging markers and CAD system can early and accurately detect and grade liver cancer |
Chong et al[95], 2021 | R | PR | 2 yr RFS after hepatectomy | 23 (HCC) | DCE (AP, PVP, TP, HBP) | M; 3D | Pyradiomics | 2950 (shape, first-order, texture-GLCM, GLRLM, GLSZM, GLDM, NGTDM- from original and filtered images -Wavelets, Gaussian, Laplacian Sharpening-) | Inter-correlation, LASSO | LR, RF, SVM | Yes | AUC = 0.93 and 0.84 in TS and VS | DCE-MRI-based peritumoral dilation radiomics is a potential preoperative biomarker for early recurrence of HCC patients without MVI |
Ding et al[96], 2021 | R | D | DD (HCC vs FNH) | 224 (149 HCC, 75 FNH) | AP and PVP | M; 3D | Pyradiomics | 2260 (shape, first-order, texture -GLDM, GLCM, GLRLM, GLSZM, NGTDM-, from original LoG and wavelet filtered images) | mRMR, RF, correlation, LASSO | LR | Yes | AUC combined model = 0.984 and 0.972 in TS and VS | The combined model can differentiate HCC from FNH in non-cirrhotic liver with higher accuracy than the clinical model |
Fan et al[97], 2021 | R | MC | Ki67+ HCC | 51 (HCC) | DCE (AP, PVP, HPB); T2WI | M; 3D | Pyradiomics | 1300 (shape, first-order, texture -GLCM, GLSZM, GLRLM, GLDM, NGTDM- from original, LoG and wavelet filtered images) | LASSO | LR | Yes | Combined model: AUC = 0.922 (TS) and 0.863 (VS) | Combined AP-Rad-score-serum AFP model can preoperatively predict Ki-67 expression in HCC and outperforms AP-based radiomics model |
Gao et al[98], 2021 | R | PPF | MVI | 225 (HCC) | T2WI | M; 3D | Matlab, SE-DenseNet | 180 low level (intensity, shape, GLCM, GLRLM) + high-level semantic with CNN | LASSO | LR, KNN, RF, SVM, CNNs | Yes | AUC = 0.826 | The proposed ensemble learning algorithm is proved to be an effective method for MVI prediction |
Li et al[99], 2022 | R | MC | GOLM1, SETD7, and RND1 expression levels | 92 (HCC) | T2WI | M; 2D | MATLAB | 307 (first-order statistics, GLCM, GLRLM, GLSZM, NGTDM), with five, LBP, fractal analysis, shape metrics, FOS, variance, power) | Correlation, RELIEFF | SVM | Yes | r = 0.67 | MRI radiomics features could help quantify GOLM1, SETD7, and RND1 expression levels and predict the recurrence risk for early-stage HCC patients |
Shi et al[100], 2022 | R | PR | Functional liver reserve | 60 (HCC) | HBP | M; 3D | QTIELAB | 165 (shape, histogram, texture-GLCM, GLRLM, GLZSM-) | Boruta algorithm | RF | No | AUC = 0.90, 0.95, 0.99 for ICG R15 < 10%, < 15%, and < 20% | Radiomics analysis of Gd-EOB-DTPA enhanced hepatic MRI can be used for assessment of functional liver reserve in HCC patients |
Dai et al[101], 2021 | R | PPF | MVI | 69 (HCC) | DCE (Pre-T1WI, AP, PVP or HBP) | M; 3D | Matlab | 106 (texture -GLCM, GLRLM, GLSZM, SGLDM, NGTDM, and NGLDS-) | LASSO, SVM-RFE, mRMR, LASSO-RFE | GBDT; SVM; LR; RF | No | AUC = 0.792 for HBP model | The radiomics model based on the HBP had better predictive performance than those based on the AP, PVP, and pre-enhanced T1W |
Fan et al[102], 2021 | R | PPF | VECT+ HCC | 81 (HCC) | DCE (AP and HBP) | M; 3D | Pyradiomics | 1316 (first-order, texture -GLCM, GLSZM, GLRLM, GLDM, NGTDM- from original, wavelet and LoG filtered images) | ICC, LASSO | ROC; LR | No | AUC = 0.84 | Texture analysis based on Gd-EOB-DTPA-enhanced MRI can help identify VETC-positive HCC |
Yang et al[103], 2021 | R | PPF | Poorly differentiated HCC | 188 (HCC) | T1WI, T2WI, DCE (AP, PP and DP) | M; 3D | LIFEx | 200 (shape, histogram, texture -GLCM, NGLDM, GLRLM, GLZLM-) | LASSO | LASSO | Yes | Model1: AUC = 0.623 and 0.576 in TS and VS, while it is 0.576 in the validation cohort. Model2: AUC = 0.721, and 0.681 in TS and VS | The MRI-based radiomics signature and clinical model can distinguish HCC patients that belong in a low differentiation group fromother patients |
Chen et al[104], 2021 | R | PPF | MVI | 269 (HCC) | T2WI; DWI, DCE (AP, PVP, and HBP) | M; 3D | Pyradiomics | 1395 (first-order, GLRLM, GLCM from original, Laplacian, logarithmic, exponential, and wavelet filtered images) | Variance threshold, LASSO | KNN SVM, XGBoost, RF, LR, DT | Yes | For HBP model: AUC = 0.942 (SVM), 0.938 (XGBoost), and 0.936 (LR) | Radiomics signatures with machine learning can further improve the ability to predict MVI and are best modeled during HBP |
Kong et al[16], 2021 | R | PR | Response to TACE | 99 (HCC) | T2WI | M; 3D | AK software | 396 (histogram, texture-GLSZM, GLCM, GLRLM-) | LASSO, correlation | ROC | Yes | AUC = 0.861 and 0.884 in TS and VS | The radiomics and clinical-based nomogram can well predict TR in intermediate-advanced HCC |
Zhao et al[105], 2021 | R | MC | GPC3 | 143 (HCC) | DCE-MRI, DWI | M; 3D | MedCalc, R | 6 (Histogram) | NO | Mann-Whitney U test | No | C-INDEX = 0.804 | Elevated serum AFP levels and lower 75th percentile ADC values were helpful in differentiating GPC3-positive and GPC3-negative HCCs. The combined nomogram achieved satisfactory preoperative risk prediction of GPC3 expression in HCC patients |
Song et al[106], 2021 | R | PPF | MVI | 601 (HCC) | T2WI FS; DWI; ADC; DCE (AP, PVP, and DP) | M; 3D | PyRadiomics | 110 (shape, first-order, texture) | PCA, ANOVA | SVM, AE, LDA, RF, LR, LASSO, AdaBoost, DT, Gaussian process, NB, DL | Yes | DLC model: AUC = 0.931 for MVI prediction; AUC = 0.793 for MVI-grade stratification | DLC model predicts and grades MVI better than DL model |
Zhong et al[107], 2021 | R | D | DD (small HCC 3 cm vs benign nodules) | 150 (112 HCC, 44 benign nodules) | in phase sequence; T2WI FS; ADC | M; 2D | MaZda | 837 (histogram, GLCM, RLM, wavelet, absolute gradient, autoregressive model) | ICC, Mann-Whitney, LASSO | LR; ROC | No | AUC = 0.917 | MRI-based radiomics analysis showed additive value to the LI-RADS v 2018 algorithm for differentiating small HCCs from benign nodules in the cirrhotic liver |
Zhao et al[105], 2021 | R | MC | GPC3 expression | 143 (HCC) | ADC | M;3D | MR Multiparametric Analysis software | 6 (histogram) | Univariate analysis (t-test, Mann-Whitney, Pearson, χ2, Fisher) | LR | No | C-index = 0.804 | The combined nomogram achieved satisfactory preoperative risk pre-diction of GPC3 expression in HCC patients |
Chen et al[108], 2021 | R | PR | Post hepatectomy liver failure | 144 (HCC) | HBP | M; 2D | AK software | 1,044 (shape, first-order, texture-GLSZM, GLCM, GLRLM-) | Correlation, RFE | LR; ROC; liver failure model | Yes | AUC = 0.956 and 0.844 in TS and VS | The LF model is able to predict PHLF in HCC patients |
Liang et al[109], 2021 | R | PPF | MVD | 30 (HCC) | DCE | M; 2D | AK software | 376 (histogram, texture-GLSZM, GLCM, GLRLM-) | Mann-Whitney | LR | No | AUC = 0.83 and 0.94 | DITET model provides a better indication of the microcirculation of HCC than SITET |
Zhang et al[110], 2021 | R | PR | RFS of HCC patients treated with surgical resection | 153 (HCC) | T2WI FS; DCE (AP, PVP, and HBP) | M; 3D | Pyradiomics | 107 (shape, first-order, texture -GLCM, GLSZM, GLRLM, GLDM, NGTDM-) | LASSO | LASSO Cox regression | Yes | C-index 0.725 | The prediction model combining MRI radiomics signatures with clinical factors predicts the prognosis of surgically resected HCC patients |
Zhang et al[111], 2021 | R | PR | RFS after curative ablation | 132 (HCC) | T2WI FS; T1WI FS; DCE (AP, PVP, and HBP) | M; 3D | Pyradiomics | 1316 (shape, first-order, texture -GLCM, GLSZM, GLRLM, GLDM, NGTDM-, LoG, wavelet) | RandomForestSRC | Cox regression; random survival forest; ROC | Yes | C-index = 0.706 | The radiomics model combining DCE-MRI with clinical characteristics could predict HCC recurrence after curative ablation |
Zhang et al[112], 2021 | R | PPF | MVI | 195 (HCC) | T2WI FS; DWI; ADC; DCE (AP, PP, DP) | M; 3D | AK software | 396 (histogram, GLCM, GLSZM, RLM, formfactor, haralick) | ANOVA, Mann-Whitney U-test, correlation, LASSO | Multivariate LR | Yes | AUC = 0.901 and 0.840 in the TS and VS | The combined radiomics-clinical model can preoperatively and noninvasively predict MVI in HCC |
Zhao et al[113], 2021 | R | PR | Response to TACE | 122 (HCC) | DCE (AP, PVP, and DP) | M; 3D | AK software | 789 (histogram,GLCM, GLRLM, GLZSM, Haralick,Gaussian transform) | ICC, Spearman's correlation, univariate LR, LASSO | LR; ROC | Yes | AUC = 0.838 and 0.833 in TS and VS | The combined model (radiomics score + clinical-radiological risk factors) showed better performance than the clinical-radiological model in predicting TACE efficacy in HCC patients |
Kuang et al[114], 2021 | R | PR | Predict short-term response after TACE in HCC | 153 (HCC) | T2WI; DCE (AP) | A; 3D | AK software | 396 (shape, histogram, GLSZM, GLCM, RLM) | mRMR, LASSO | LR | Yes | AUC = 0.83 and 0.81 in TS and VS | MRI-based nomogram has greater predictive efficacy to predict the response after TACE than radiomics and clinics models alone |
Meng et al[115], 2021 | R | PPF | MVI | 402 (HCC) | T1WI, T2WI, DWI, CE-CT | M, 3D | Pyradiomics | 1288 | ICC, MANN-WHITNEY, LASSO | LR | Yes | AUC = 0.804 | CT and MRI had a comparable predictive performance for MVI in solitary HCC. The RS of MRI only hadsignificant added value for predicting MVI in HCC of 2–5 cm |
Zhu et al[116], 2021 | R | D | DD (MTM-HCC vs HCC) | 88 (32 MTM-HCCs, 56 Non-MTM-HCC) | T2WI FS; in-phase and out-of-phase sequences; DCE (AP, PVP, and DP) | M; 2D | MaZda | 101 (histogram, the absolute gradient, GLRLM, GLCM, autoregressive model and wavelet transform) | Fisher, MI, POE + ACC, LASSO | LR; ROC | No | AUC = 0.785 | A DCE-MRI-based radiomics nomogram can predict MTM-HCC |
Liu et al[117], 2021 | R | PR | TACE, MWA | 102 (HCC) | T1WI, T2WI, PVP | M, 2D | MaZda | 20 (First order, GLCM) | NS | ROC | No | AUC = 0.876 | MR imaging texture features may be used to predict the prognosis of HCC treated with TACE combined with MWA |
Chong et al[118], 2021 | R | PR | MVI, RFS after curative surgery (HCC≤ 5 cm) | 356 (HCC) | DWI, DCE (Pre-T1WI, AP, PVP, TP, HBP) | M; 3D | Pyradiomics | 854 (shape, first-order, texture -GLCM, GLDM, GLRLM, NGTDM, GLSZLM- from original and wavelet filtered images) | LASSO | RF; LR | Yes | AUC = 0.920 with RF, 0.879 with LR in validation cohort | Preoperative radiomics-based nomogram using random forest is a potential biomarker of MVI and RFS prediction for solitary HCC ≤ 5 cm |
Gu et al[119], 2020 | R | MC | GPC3+ HCC | 293 (HCC) | DCE (DP) | M; 3D | Pyradiomics | 853 (shape, histogram, texture -GLCM, GLSZM, GLRLM, GLDM, NGTDM-, wavelet) | ICC, Mann-Whitney, Fisher | LR; SVM | Yes | AUC = 0.926 and 0.914 in TS and VS | The combined AFP + radiomics nomogram may provide an effective tool for noninvasive and individualized prediction of GPC3-positive in HCC patients |
Zhao et al[120], 2021 | R | PR | ER after partial hepatectomy | 113 (HCC) | T2WI; in-phase and out-of-phase sequences; DWI; DCE (AP, PVP, and DP) | M; 3D | AK software | 1146 (shape, histogram, texture -GLCM, GLRLM, GLSZM-) | Spearman's correlation, LASSO, stepwise LR | Multivariate LR | Yes | Radiomics: AUC = 0.771 in the VS. Combined nomogram: AUC = 0.873 | A combined nomogram incorporating the mpMRI radiomics score and clinicopathologic-radiologic characteristics can predict ER (≤ 2 yr) in HCC |
Ai et al[121], 2020 | R | D | DD (HCC, HH, HC) | 89 (33 HH, 22 HC, 34 HCC) | IVIM | M; 3D | MITK-DI | 13 (histogram) | Kruskal-Wallis | ROC | No | AUC = 0.883 | A multiparametric histogram from IVIM is an effective means of identifying HH, HC, and HCC |
Shaghaghi et al[122], 2021 | R | PR | Post-TACE OS and TFS | 104 (HCC) | ADC | S; 3D | NS | 3 (mean, skewness, and kurtosis) | NO | NO | No | Significant results for changes in ADC mean and Kurtosis | Changes in mean ADC and ADC kurtosis can be used to predict post-TACE OS and TFS in well-circumscribed HCC |
Li et al[123], 2020 | R | D | DD (HCC vs HMRC) | 75 (41 HCC, 34 HMRC) | DCE | M; 2D | OmniKinetic | 67 (First order, histogram, GLCM, Haralick, RLM) | t-test, ROC | FDA | No | AUC = 0.86 (radiomics + pharmacokinetic) and 0.89 (DA based on radiomics) | A model based on DCEMRI radiomics and pharmacokinetic parameters was useful for differentiating HCC from HMRC |
Geng et al[124], 2021 | R | PPF, MC | MVI; GRADE; CK-7, CK-19, GPC3 expression status | 53 (HCC) | SWI | M;3D | PyRadiomics | 107 (first-order, shape, GLCM, GLRLM, GLSZM, NGTDM) | ICC | LR | No | AUC = 0.905 (CK-19+), 0.837 (CK-7+), 0.800 (high histopathologic grade) and 0.760 (GPC-3+) | Extracting the radiomics features from SWI images was feasible to evaluate multiple histo-pathologic indexes of HCC |
Zhang et al[125], 2020 | R | PR | OS after surgical resection | 136 (44 MCC, 59 HCC, 33 CHCC) | DCE (EP); DWI | M; 3D | AK software | 384 (histogram, GLCM, GLSZM, RLM, formfactor, haralick) | mRMR method and the elastic network algorithm | Multivariable cox regression | No | Parameters independently associated with OS (P < 0.05) | Clinicopathological and radiomics features are independently associated with the OS of patients with primary liver cancer |
Zhang et al[126], 2020 | P | PR | OS after surgical resection | 120 (HCC) | T2WI FS; DCE (AP, PVP, TP, and HBP) | S; 2D | AK software | 350 (histogram, form factor, GLCM, GLRLM) | ICC, LASSO | LASSO Cox regression | Yes | C-index = 0.92 | Radiomics + clinic-radiological predictors can efficiently aid in preoperative HCC prognosis prediction after surgical resection with respect to clinic-radiological model |
Hectors et al[127], 2020 | P | PR | 6- and 12- week response to 90 yr | 24 (HCC) | DCE-MRI, IVIM-DWI | M; 3D | Matlab | 40 DCE MRI histogram parameters and 20 IVIM DWI histo-gram parameters | Stepwise feature selection | LR | No | AUC = 0.92 | Diffusion and perfusion MRI can be combied to evaluate the response of HCC to radioembolization |
Shi et al[128], 2020 | P | PPF, MC | HCC GRADE, KI67+ HCC, CAPSULE FORMATION+ | 52 (HCC) | IVIM | M; 3D | ImageJ, Mazda | 15 (histogram) | t-test | LR | No | AUC = 0.92 (grading), 0.86 (Ki67+) and 0.84 (capsule formation) | Multiple prognostic factors can be accurately predicted with assistance of histogram metrics sourced from a single IVIM scan |
Feng et al[129], 2020 | R | D, MC | DD | 104 (HCC) | Gd-EOB-DTPA-enhanced MRI and T2WI | M, 3D | Mazda | 262 (Histogram, GLCOM, GLRLM, WAVELET TRANSFORM) | PCA, LDA, NDA, RDA | ROC | No | AUC = 0.879 | Texture analysis of Gd-EOB-DTPA-enhanced MRI and T2WI was valuable and might be a promising method in identifying the HCC grade |
Nebbia et al[130], 2020 | R | PPF | MVI | 99 (HCC) | T2WI; DCE (AP and PP); DWI | M; 3D | Pyradiomics | 100 (shape, first-order, texture -GLCM, GLDM, GLSZM-) | LASSO | SVM; DT; KNN, NB | No | AUC = 0.867 | Information from mpMRI sequences is complementary in identifying MVI |
Schobert et al[131], 2020 | R | PR | Response to DEB-TACE, PFS | 46 (HCC) | DCE (HAP, PVP, and DP) | M; 3D | Pyradiomics | 14 (shape, first-order) | Univariate analysis, stepwise forward selection | LinearRegression; Cox regression; Kaplan–Meier analysis | No | High NLR and PLR correlated with non-spherical tumor growth (P = 0.001 and P < 0.001) | This study establishes the prognostic value of quantitative inflammatory biomarkers associated with aggressive nonspherical tumor growth and predictive of poorer tumor response and shorter PFS after DEB-TACE |
Sun et al[132], 2020 | R | PR | Early progression of unresectable HCC after TACE | 84 (HCC) | T2WI; DWI; ADC | M; 3D | Pyradiomics | 1597 (first-order, shape, texture -GLCM, GLRLM, GLSZM, NGTDM, GLDM-) | Variance threshold, Pearson's correlation, LASSO | LR | Yes | AUC = 0.800 | mpMRI-based radiomic model predicts the outcome of TACE therapy for unresectable HCC outperforms monomodality radiomic models |
Wilson et al[133], 2020 | R | PPF, PR | MVI, OS, DFS after surgery | 38 (HCC) | T2WI; in-phase and out-of-phase sequences; DCE (HAP, and PVP) | M; 2D | TexRAD | 7 (histogram) | NO | LR | No | AUC = 0.83 | Tumor entropy and mean are both associated with MVI. Texture analysis on preoperative imaging correlates with microscopic features of HCC |
Hectors et al[134], 2020 | R | MC, PR | Immuno-oncological markers (CD3, CD68, CD31), recurrence at 12 m | 48 (HCC) | DCE (Pre-T1WI, AP, PVP, LVP, and HBP); ADC | M; 2D | MATLAB | 36 (Haralick, qualitative and quantitative) | NO | LR | No | AUC = 0.76–0.80 | MRI radiomics features may serve as noninvasive predictors of HCC immuno-oncological characteristics and tumour recurrence |
Wang et al[135], 2020 | R | MC | CK19+ HCC | 227 (HCC) | DWI; ADC; T2WI; DCE (Pre-T1WI, AP, PVP, DP, and HBP) | M; 3D | Pyradiomics | 647 (shape, histogram, texture, wavelet) | ICC, LASSO | Logistic model; ROC | Yes | AUC = 0.95 | The combined model based on a fusion radiomics signature derived from AP and HBP can be a reliable biomarker for CK19 status of HCC |
Wang et al[136], 2020 | R | PR | 5 yr survival after curative hepatectomy | 201 (HCC) | T1WI; T2WI; DWI; ADC; DCE (AP, PVP, and EP) | S; 3D | Precision Medicine Open Platform | 3144 (histogram, texture, wavelet, statistical) | Gini index | Random Forest | Yes | AUC = 0.9804 and 0.7578 in the TS and VS | This radiomics model is a valid method to predict 5-year survival in HCC patients |
Song et al[137], 2020 | R | PR | RFS after c-TACE | 184 (HCC) | DCE (AP, and PVP) | S; 3D | AK software | 396 (histogram, GLCM, GRLM, GLSZM) | ICC, LASSO | LASSO Cox regression | Yes | C-index = 0.802 | The combined model is more valuable than the clinical-radiological model or radiomics model alone for evaluating the RFS of HCC patients after c-TACE |
Zhang et al[138], 2019 | R | PR | ER (1 yr after hepatectomy) | 100 (HCC) | DCE (AP, PVP, and DP) | S; 3D | Omni Kinetic | 6 (skewness, kurtosis, uniformity, energy, entropy, and correlation) | NO | LR | No | AUC = 0.867 | Texture analysis based on preoperative MRI are potential quantitative predictors of ER in HCC patients after hepatectomy |
Huang al[139], 2019 | R | D, PR | DD (HCC vs DPHCC), DFS, OS after surgery | 100 (HCC) | DCE (AP, PVP, DP, and HBP) | M; 3D | Huiying Medical Technology | 1029 (First-order, shape, texture -GLCM, GLRLM, GLSZM-) | LASSO | Multi-layer perceptron; SVM; LR; K-nearestneighbor; ROC | No | Accuracy of LR in PVP (0.77), DP (0.798), HBP (0.756) and of multi-layer perceptron in PVP (0.798) | The radiomics features extracted from DCE-MRI can be used to diagnose preoperative DPHCC |
Ye et al[140], 2019 | P | MC | Ki67 expression | 89 (HCC) | T2WI FS; DCE (Pre-T1WI, AP, PVP, TP, and HBP) | M; 3D | AK software | 396 (histogram, texture, GLCM, GLRLM) | LASSO | LR | No | C-index = 0.936 | The combination of DCE-MRI texture signature and clinical factors demonstrated the potential to preoperatively predict Ki-67 status of HCC after curative resection |
Zhang et al[141] 2019 | R | PPF | MVI | 267 (HCC) | T2WI FS; in-phase and out-of-phase sequences; T1WI; DWI; DCE (AP, PVP, and EP) | M; 3D | MATLAB | 484 (intensity, texture, wavelet) | mRMR | LR | Yes | AUC = 0.784 and 0.820 in TS and VS | The radiomics nomogram can serve as a visual predictive tool for MVI in HCC and outperformed clinico-radiological model |
Chen et al[142], 2020 | R | MC | CK19+, EpCAM | 115 (HCC) | T2WI, pre-T1WI, DCE (AP, PVP, HBP), ADC | M; 3D | AK software | 23 (histogram) | Univariate analysis | LR | No | Accuracy = 0.86, C-index = 0.94 | Noninvasive prediction of HCCs with progenitor phenotype can be achieved with high accuracy by integrated interpretation of biochemical and radiological information |
Xu et al[143], 2019 | R | PPF | HCC GRADE | 51 (HCC) | ADC | M; 3D | SPSS | 27 (histogram) | NO | NO | No | ρ = −0.397 for ADC 25th percentile; AUC = 0.76 for ADC min | The 25th percentile ADC showed a stronger correlation with the histological grade of HCC than other ADC parameters, and the minimum ADC value might be an optimal metric for determining poor and fair diferentiations of HCC in DWI |
Li et al[144], 2019 | R | MC | Ki67 expression | 83 (HCC) | DCE (HAP, PVP, EP, and HBP); T2WI FS | M; 3D | MaZda | 30 (histogram, GLCM, GLRLM, absolute gradient, the autoregressive model, wavelet transform) | Fisher coefficient, MI, POE + ACC, correlation | ROC (accuracy) | No | Lowest misclassification rates: PCA-PVP = 40.96%; LDA-PVP = 9.64%; NDA-AP = 6.02%. | Texture analysis of HBP, arterial phase, and portal venous phase are helpful for predicting Ki67 expression |
Oyama et al[145], 2019 | R | D | DD (HCC, MT, HH) | 93 (50 HCCs, 50 MTs, 50 HHs) | T1WI | M; 3D | MATLAB | 43 (GLCM, GLRLM, GLSZM, NGTDM) | correlation | LDA | No | Accuracy = 92% (texture analysis) and 85% (persistence imges analyses) | Texture analysis or topological data analysis support the classifcation of HCC, MT, and HH with considerable accuracy, solely based on non-contrast-enhanced T1WI 3D |
Wang et al[146], 2019 | R | MC | CK19+ HCC | 48 (HCC) | T2WI FS; in-phase and out-of-phase sequences; DCE (AP, PVP, DP); DWI (b values 0 and 500 s/mm²); ADC | M; 2D | In-house software | 2415 (intensity, gradient, Gabor wavelet, local binary pattern histogram Fourier, GLCM, GLGCM) | LDA (AUC) | LR | No | AUC = 0.765 | The StdSeparation 3D texture character may be a reliable imaging biomarker which can improve the diagnostic performance. |
Zhu et al[147], 2019 | R | PPF | MVI | 142 (HCC) | DCE (AP, PVP) | M; 3D | Omni-kinetics software | 58 (histogram, GLCM, Haralick, GRLM) | Kruskal-Wallis, univariate LR, Pearson's correlation | LR | Yes | AUC = 0.81 | The combined model of arterial phase radiomic features with clinical-radiological features could improve MVI prediction ability |
Zhang et al[148], 2019 | P | PR | ER (1 yr after surgical resection) | 155 (HCC) | T2WI FS, DCE (AP, PVP, TP, and HBP) | M; 3D | AK software | 385 (histogram, texture, GLCM, GLRLM) | LASSO | LR; ROC | Yes | AUC = 0.844 | The radiomics nomogram integrating the radiomics score with clinical-radiological risk factors showed better discriminative performance than the clinical-radiological nomogram |
Gordic et al[149], 2019 | R | PR | CR, PR, SD | 22 (HCC) | volumetric ADC | M; 3D | MATLAB | 7 (histogram) | Wald test | LR | No | AUC = 0.91 | Diffusion histogram parameters obtained at 6w and early changes in ADC from baseline are predictive of subsequent response of HCCs treated with RE |
Jansen et al[150], 2019 | R | D | DD (adenomas, cysts, hemangiomas, HCC, metastases) | 211 (40 adenomas, 29 cysts, 56 hemangiomas, 30 HCC, 56 metastases) | DCE-MRI, T2WI | M; 2D | NS | 164 (contrast curve, histogram, and GLCM texture) | ANOVA F-SCORE | Randomized tree classifier | No | Accuracy = 0.77 | The proposed classification system using features derived from clinical DCE-MR and T2WI, with additional risk factors is able to differentiate five common types of lesions and is a step forward to a clinically useful aid for focal liver lesion diagnosis |
Ma et al[151], 2019 | R | PR | Post RFA progression | 64 (HCC) | ADC | M; 3D | Volume View | 8 (histogram) | NO | Cox-regression | No | C-index = 0.62 | Pre-RFA ADC histogram analysis might serve as a useful biomarker for predicting tumor progression and survival in patients with HCC treated with RFA |
Wu et al[152], 2019 | R | D | DD (HCC, HH) | 369 (222 HCCs, 224 HHs) | In-phase and out-of-phase sequences; T2WI; DWI | M; 3D | PyRadiomics | 1029 (shape, first-order, texture -GLCM, GLRLM, GLSZM-, exponential, square, square root, logarithm, and wavelet) | Variance threshold, select k best, LASSO | Decision tree; random forest; K nearest neighbours; LR; ROC | Yes | AUC = 0.86 and 0.89 in TS and VS | mpMRI radiomics signature is an adjunct tool to distinguish HCC and HH, outperformed a less experienced radiologist, and is nearly equal to an experienced radiologist |
Kim et al[153], 2019 | R | PR | ER (< = 2 yr), LR (> 2 yr) after curative resection | 167 (HCC) | DCE (AP, PP, HBP, AP-PP, AP-HBP, PP-HBP, and AP-PP-HBP) | S; 3D | PyRadiomics | 1301 (first-order, shape, texture -GLCM, GLRLM, GLSZM, NGTDM, GLDM-, LoG, wavelet) | RF minimal depth algorithm | random survival forest | Yes | C-index = 0.716 | The clinicopathologic-radiomic model showed best performances, suggesting the importance of including clinicopathologic information in the radiomic analysis of HCC |
Lewis et al[154], 2019 | R | D | DD (HCC, ICC, HCC-ICC) | 63 (36 HCC; 17 ICC; 12 HCC-ICC) | ADC | M; 3D | MATLAB | 11 (histogram) | Wald criteria | Binary LR and AUROC | No | AUC = 0.9 | The combination of quantitative ADC histogram parameters and LI-RADS categorization yielded the best prediction accuracy for distinction of HCC vs ICC and combined HCC-ICC |
Chen et al[155], 2019 | R | MC | Immunoscore (CD3+ and CD8+) | 207 (HCC) | HBP | M; 3D | AK software | 1044 (histogram, texture, factor parameters, GLCM, GLRLM, GLSZM) | Recursive elimination | LR | Yes | AUC = 0.92 | The combined MRI-radiomics-based clinical nomogram is effective in predicting immunoscore in HCC |
Feng et al[156], 2019 | R | PPF | MVI | 160 (HCC) | HBP | M; 3D | AK software | 1044 (histogram, texture, wavelet transformed, filter transformed texture) | LASSO | LR | Yes | AUC = 0.85 and 0.83 in TS and VS | A combined intratumoural and peritumoural radiomics model based on DCE-MRI is able to pre-operatively predict MVI in primary HCC patients |
Wu et al[157], 2019 | R | PPF | HCC grade | 170 (HCC) | T1WI; T2WI FS | M; 3D | MATLAB | 656 (histogram, shape, GLCM, wavelet) | LASSO | LR | Yes | AUC = 0.8 | The combination of the radiomics signatures with clinical factors may be helpful for the preoperative prediction of HCC grade |
Yang et al[158], 2019 | R | PPF | MVI | 208 (HCC) | T2WI FS; DWI; DCE (AP, PVP, DP, and HBP) | M; 3D | MATLAB | 647 (shape, intensity, textur-GLCM, GLRLM, GLZLM, NGLDS-) | LASSO, AIC | LR | Yes | AUC = 0.94 and 0.86 | The nomogram incorporating clinicoradiological risk factors and radiomic features derived from HBP images achieved satisfactory preoperative prediction of the individualized risk of MVI in HCC patients |
Stocker et al[159], 2018 | R | D | DD (HCC vs FNH vs HA) | 108 (55 HCC, 24 HA, 29 FNH) | T1WI FS; T2WI; DCE (AP, PVP, and HBP) | M; 2D | MATLAB | 19 (histogram, GLCM, GLRLM) | LR | LR; ROC | No | AUC = 0.92 | 2D-TA of MR images may help to distinguish HCC from benign hepatocellular tumors in the non-cirrhotic liver, with most promising results were found in TA features in the AP images |
Ahn et al[160], 2019 | R | PR | ER (1y after surgical resection) | 179 (HCC) | HBP | M; 3D | In-house software program | 13 (histogram, GLCM) | Univariate analysis | LR | No | AUC = 0.83 | When added texture variables to MRI findings, the diagnostic performance for predicting early recurrence is improved |
Hui et al[161], 2018 | R | PR | ER (1yr), LNR (late or no recurrence) after surgery | 50 (HCC) | T2WI; DCE (AP, PVP and EP) | M; 2D | MaZda | 290 (histogram, texture, autoregressive model, GRLM, GLCM, wavelet) | PRTools | ROC | No | Accuracy 78%-84% | Texture analysis of preoperative MRI has the potential to predict ER of HCC with up to 84% accuracy using an appropriate, single texture analysis parameter |
Zou et al[162], 2019 | R | D | DD (IMCC and HCC) | 33 IMCC, 98 HCC | volumetric ADC, DCE-MRI | M; 3D | SPSS | 9 (histogram) | NO | ROC | No | AUC = 0.79 | Volumetric ADC histogram analysis provides additional value to dynamic enhanced MRI in differentiating IMCC from HCC |
Li et al[163], 2018 | P | PPF | MVI | 41 (HCC) | IVIM-DWI | M; 3D | MATLAB | 10 (histogram) | Univariate analysis | ROC | No | AUC = 0.87 | Histogram analysis of IVIM based on whole tumor volume can be useful for predicting MVI. The 5th percentile of D was most useful value to predict MVI of HCC |
Wu et al[164], 2019 | P | PR | TTP after TACE | 55 (HCC) | IVIM-DWI | S; 3D | MR OncoTreat | 8 histogram parameters | NO | Cox-regression | No | AUC = 0.82 | Pre-TACE kurtosis of ADCtotal is the best independent predictor for TTP |
Li et al[165], 2017 | R | D | DD (HH vs HM vs HCC) | 162 (55 HH, 67 HM, 40 HCC) | SPAIR T2WI | M; 2D | MATLAB | 233 (histogram, GLCM, GLGCM, GLRLM, GWTF, ISZM) | CCC, DR, R2 | ROC, KNN, BP-ANN, SVM, LR | Yes | Misclassification rates: 11.7% (HH vs HM), 9.6% (HM vs HCC) and 9.7% (HH vs HCC) | Texture features of T2WI SPAIR can classify HH, HM and HCC |
Moriya et al[166], 2017 | R | D | HCC grade | 53 (HCC) | DWI, ADC | A; 3D | SPSS | 11 (First Level) | ANOVA | ROC | No | sensitivity: 100%, specificity: 54% | Minimum ADC was most useful to differentiate poorly differentiated HCC in 3D analysis of ADC histograms |
- Citation: Brancato V, Cerrone M, Garbino N, Salvatore M, Cavaliere C. Current status of magnetic resonance imaging radiomics in hepatocellular carcinoma: A quantitative review with Radiomics Quality Score. World J Gastroenterol 2024; 30(4): 381-417
- URL: https://www.wjgnet.com/1007-9327/full/v30/i4/381.htm
- DOI: https://dx.doi.org/10.3748/wjg.v30.i4.381