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Copyright ©The Author(s) 2021.
Artif Intell Gastroenterol. Apr 28, 2021; 2(2): 42-55
Published online Apr 28, 2021. doi: 10.35712/aig.v2.i2.42
Table 1 Recent developments in artificial intelligence assisted diagnosis
AI category
Data adopted
Advantages
Control
Ref.
ANNPreoperative serum AFP, tumor number, size and volumeThe ANN showed higher AUCs in identifying tumor grade (0.94) and MVI (0.92)LR model (0.85 and 0.85)[20]
CNNEnhanced MRIThe CNN showed comparable accuracy (90%)Traditional multiphase MRI (89%)[24,25]
Open-source framework “caffe” based CNN modelDWICNN trained with three sets of b-values found better grading accuracy (80%)CNN trained with different b-values (65%, 68%, 70%)[26]
CNNNonenhanced MRIThe deeply supervised and pretrained CNN model performed better in characterizing HCC (accuracy 77.00 ± 1.00%)CNN-based method pretrained by ImageNet (65.00 ± 1.58%)[27]
DL-based segmentation modelContrast-enhanced CTThe model with a combination of 2D multiphase strategy showed higher ability of segmenting active part from the tumorsTraditional CT estimation[28-30]
RF based ML modelHE-stained histopathological imagesThe classifying model showed an AUC of 0.988 in the test set and 0.886 in the external validation set-[31]
1D CNNHyperspectral and HE-stained imagesThe models had a higher average AUC of 0.950RF (0.939) and SVM (0.930) models[33]
Shiny and Caret packages-based prediction modelClinical and laboratorial informationThe optimal model had an AUC of 0.943Single factor-based predictors (0.766, 0.644 and 0.683)[34]
Table 2 Artificial intelligence models that can help in predicting therapy responses
AI
Data adopted
Advantages
Control
Ref.
ANNCox-identified risk factorsThe ANN had the highest AUC (0.855)Cox model, TNM 6th, BCLC and HPBA system (0.826, 0.639, 0.612, 0.711)[35]
CART modelClinical and laboratorial parametersThe model successfully identified pre- and postoperative prognosis predictive factors-[36]
Weka-based ANNsCox-identified risk factors (15 factors for DFS and 21 for OS)The ANNs showed higher abilities of predicting DFS and OSLR and decision tree model[37,38]
Radiomics-based DL CEUS model Contrast-enhanced ultrasoundThe model showed an AUC of 0.93 in predicting therapy response to TACERadiomics-based time-intensity curve of CEUS model (0.80) and radiomics-based B-Mode images model (0.81)[40]
Pretrained CNN "ResNet50"Manually segmented CT imagesThe model showed AUCs for predicting CR, PR, SD and PD in training (0.97, 0.96, 0.95, 0.96) and validation (0.98, 0.96, 0.95, 0.94) cohorts-[41]
Automatic predictive CNN modelQuantitative CT and BCLC stageThe model had a better prediction accuracy of 74.2%ML model based on BCLC stage (62.9%)[42]
ANNClinical featuresThe models showed higher AUCs in predicting 1- and 2-yr DFS (0.94, 0.88) after RFAModel built with 8 features for 1-yr DFS (0.80), and model built with 6 features for 2-yr DFS (0.76)[45]
Table 3 Prognosis prediction models built with artificial intelligence algorithms
AI category
Data adopted
Advantages
Control
Ref.
DL algorithms CHOWDER and SCHMOWDERWhole-slide digitized histological slideC-indexes for survival prediction of SCHMOWDER and CHOWDER reached 0.78 and 0.75Baseline factors and composite score[49]
ML classifierPreviously determined relevant parameters and those identified by univariate analysisThe ML algorithm performed a c-statistic of 0.64 for HCC development predictionRegression model (0.61) and the model built on the HALT-C cohort (0.60)[50]
DL survival prediction modelRNA, miRNA and methylation data from TCGAThe DL model showed better potential in classifying HCC patients into two subgroups with different survivalPCA and the model built with manually inputted features[51]
OS prediction model based on SVM-RFE algorithm134 methylation sites identified using Cox regression and SVM-RFE algorithmThis algorithm showed a higher accuracy of classifying HCC patientsTraditionally set classifying methods based on DNA methylation[54-56]
ANNMortality-related variablesThe ANN showed higher AUCs (0.84 and 0.89) in predicting in-hospital and long-term mortalityLR model (0.76 and 0.77)[57,58]