TABLE 2.
References | Published year | Aim of study | Type of AI | Number of subjects | Outcomes |
Maeda et al., 2019 | 2019 | Prediction of persistent histologic inflammation associated with UC | SVM | Training set: 12,900 images from 87 patients. Test set: 9935 images from 100 patients | Sensitivity: 74%, specificity: 97%, accuracy: 91% |
Mahapatra et al., 2016 | 2016 | Segmentation of CD from abdominal MRI | Active learning framework combined with semi-supervised learning | 70 patients (fivefold cross validation) | Dice Metric: 92.4%, Hausdorff distance: 7.0 mm |
Hubenthal et al., 2015 | 2015 | Diagnostics of IBD | SVM | 114 patients | AUROC: 0.75–1.00 |
Mossotto et al., 2017 | 2017 | Classification of Pediatric Inflammatory Bowel Disease | SVM | 239 patients | Accuracy: 82.7% (model utilizing combined endoscopic/histological data achieved the best performance) |
Douglas et al., 2018 | 2018 | Classification of disease state and treatment outcome in pediatric Crohn’s disease | RF | Intestinal biopsies of 20 treatment-naïve CD and 20 control pediatric patients | Accuracy: 84.2% (model utilizing 16S taxonomic datasets achieved the best performance) |
IBD, inflammatory bowel disease; UC, ulcerative colitis; SVM, support vector machine; CD, Crohn’s disease; MRI, magnetic resonance images; AUROC, area under receiver operating characteristic; RF, random forest.