Small Bowel Deep Learning Algorithm Project
Crohn Disease
About this trial
This is an interventional diagnostic trial for Crohn Disease
Eligibility Criteria
Inclusion Criteria for all cases:
- Patient's age >16 years of age, (this age cut off has been used in the recent METRIC trial investigating imaging in Crohn's disease)
- MRI sequences obtained include axial T2 weighted images; coronal T2 weighted images and axial post contrast MRI images.
Inclusion criteria for normal MR Enterography cases:
• Normal MR Enterography studies reviewed in consensus by two Radiologists (UP & PL). Normal is defined as no sites of small or large bowel Crohn's disease.
Inclusion criteria for terminal ileal Crohn's cases:
- MR Enterography studies reviewed in consensus by two Radiologists shows terminal ileal Crohn's disease. Patients with more than one segment of small bowel Crohn's disease including terminal ileum are eligible. Patients with terminal ileal Crohn's disease continuous with large bowel are eligible.
- Diagnosis of Crohn's disease of terminal ileum based on endoscopic, histological and radiological findings. (This criteria has been used in the recent METRIC trial investigating imaging in Crohn's disease).
Exclusion Criteria for all cases:
- Poor quality MRI images as judged by consensus Radiologist opinion.
- No more than 3 MRI scans will come from the same patient.
Exclusion criteria for terminal ileal Crohn's cases:
- MR Enterography shows any bowel abnormality not due to Crohn's.
- Patient has undergone previous small or large bowel resection (this will distort anatomy and is beyond the scope of the present project). Patients' with other previous surgeries are eligible.
- Patients with large bowel Crohn's disease not continuous with the terminal ileum.
Sites / Locations
- St Mark's Hospital
Arms of the Study
Arm 1
Arm 2
Other
Other
Training of machine learning algorithm
Testing of machine learning algorithm
113 MR Enterography images labelled by Radiologists will be used to develop a machine learning algorithm to (1) localise the terminal ileum, (2) classify the terminal ileum as normal or abnormal.
113 MR Enterography images labelled by Radiologists will be used to test the accuracy of the machine learning algorithm to (1) localise the terminal ileum, (2) classify the terminal ileum as normal or abnormal compared to Radiologists opinion. Cross Validation analysis will be used for data analysis.