| Literature DB >> 33268955 |
Quirino Lai1, Gabriele Spoletini2, Gianluca Mennini3, Zoe Larghi Laureiro3, Diamantis I Tsilimigras4, Timothy Michael Pawlik4, Massimo Rossi3.
Abstract
BACKGROUND: Prediction of survival after the treatment of hepatocellular carcinoma (HCC) has been widely investigated, yet remains inadequate. The application of artificial intelligence (AI) is emerging as a valid adjunct to traditional statistics due to the ability to process vast amounts of data and find hidden interconnections between variables. AI and deep learning are increasingly employed in several topics of liver cancer research, including diagnosis, pathology, and prognosis. AIM: To assess the role of AI in the prediction of survival following HCC treatment.Entities:
Keywords: Artificial neuronal network; Deep learning; Hepatocellular cancer; Liver transplantation; Recurrence; Resection
Mesh:
Year: 2020 PMID: 33268955 PMCID: PMC7673961 DOI: 10.3748/wjg.v26.i42.6679
Source DB: PubMed Journal: World J Gastroenterol ISSN: 1007-9327 Impact factor: 5.742
Figure 1Preferred Reporting Items for Systemic Reviews and Meta-Analysis flowchart of the literature search and study selection.
Figure 2Different articles exploring the impact of artificial intelligence as diagnostic or prognostic tool in the setting of hepatocellular carcinoma management. AI: Artificial intelligence; HCC: Hepatocellular carcinoma; LRT: Locoregional therapy.
Figure 3Results of the Risk of Bias In Non-randomized Studies of Interventions tool for the extracted articles.
Articles focused on the role of artificial intelligence in the prediction of survival
| Hamamoto et al[ | Japan | 11 | ANN for the prediction of survival after HCC resection. | ANN was trained with the data of 54 resected patients and then prospectively used. | The outcomes in the prospective cohort were successfully predicted in all the cases (10 successful, 1 died). |
| Ho et al[ | Taiwan | 482 | To validate the use of ANN model for predicting 1-, 3-, and 5-yr disease-free survival after hepatic resection, and to compare it with LR and decision tree model. | Training set: 80% of the cases; validation set: Remaining 20% of the cases. | The ANN model outperformed the other models in terms of prediction accuracy (AUC for 5-yr disease-free survival: 0.864 |
| Shi et al[ | Taiwan | 22926 | ANN model for predicting in-hospital mortality in HCC surgery patients and to compare it with LR models. | This study analyzed administrative claims data obtained from the Taiwan Bureau of National Health Insurance. | Compared to the LR models, the ANN models had a better accuracy rate in 97.28% of cases, and a better ROC curve in 84.67% of cases. |
| Shi et al[ | Taiwan | 22926 | To validate the ANN models for predicting 5-yr mortality in HCC resected patients, and to compare them with LR models. | This study analyzed administrative claims data obtained from the Taiwan Bureau of National Health Insurance. | Compared to the LR models, the ANN models had a better accuracy rate in 96.57% of cases, and a better receiver operating characteristic curves in 88.51% of cases. |
| Chiu et al[ | Taiwan | 434 | To compare significant predictors of mortality for HCC resected patients between ANN and LR models, and to evaluate the predictive accuracy of ANN and LR in different survival year estimation models. | Training set: 80% of the cases; validation set: Remaining 20% of the cases. | The results indicated that ANN had double to triple numbers of significant predictors at 1-, 3-, and 5-yr survival models as compared with LR models. Scores of accuracy, sensitivity, specificity, and AUC using ANN were superior to those of LR. |
| Qiao et al[ | China | 543; 182; 104 | ANN for the prediction of survival in early HCC cases following partial hepatectomy. | Training set: 75% of the cases; internal validation set: Remaining 25% of the cases; external validation set. | In the training cohort, the AUC of the ANN was larger than that of the Cox model (0.855 |
| Liang et al[ | Taiwan | 83 | Use of support vector machine for the development of recurrence predictive models for HCC patients receiving RFA treatment. | Five feature selection methods including genetic algorithm, simulated annealing algorithm, random forests and hybrid methods were utilized. | The developed support vector machine-based predictive models using hybrid methods had averages of the sensitivity, specificity, and AUC as 67%, 86%, and 0.69. |
| R et al[ | India | 152 | To use artificial plant optimization algorithm to select optimal features and parameters of classifiers to improve the effectiveness and efficiency of prediction of HCC recurrence. | Different methods tested. | The sampling based multiple measurement artificial plant optimized random forest classifier with statistical measure showed the best results (balanced accuracy: 0.955). |
| Shan et al[ | China | 156 | Peritumoral radiomics for the prediction of early recurrence after HCC curative resection or ablation. | Training cohort ( | In the validation cohort, the ROC curves, calibration curves and decision curves indicated that the CT-based peritumoral radiomics model had better calibration efficiency and provided greater clinical benefits. |
ANN: Artificial neural network; HCC: Hepatocellular carcinoma; AUC: Area under the curve; LR: Logistic regression; RFA: Radiofrequency ablation; CT: Computed tomography; ROC: Receiver operating characteristic.