An artificial intelligence deep learning model for identification of small bowel obstruction on plain abdominal radiographs

Author:

Kim DH1,Wit H2,Thurston M1,Long M12,Maskell GF1,Strugnell MJ1,Shetty D1,Smith IM3,Hollings NP1

Affiliation:

1. The Department of Clinical Imaging, The Royal Cornwall Hospitals NHS Trust, Truro, UK

2. The Medical Imaging Department, University Hospitals Plymouth NHS Trust, Plymouth, UK

3. The Department of General Surgery, The Royal Cornwall Hospitals NHS Trust, Truro, UK

Abstract

Objectives: Small bowel obstruction is a common surgical emergency which can lead to bowel necrosis, perforation and death. Plain abdominal X-rays are frequently used as a first-line test but the availability of immediate expert radiological review is variable. The aim was to investigate the feasibility of using a deep learning model for automated identification of small bowel obstruction. Methods: A total of 990 plain abdominal radiographs were collected, 445 with normal findings and 445 demonstrating small bowel obstruction. The images were labelled using the radiology reports, subsequent CT scans, surgical operation notes and enhanced radiological review. The data were used to develop a predictive model comprising an ensemble of five convolutional neural networks trained using transfer learning. Results: The performance of the model was excellent with an area under the receiver operator curve (AUC) of 0.961, corresponding to sensitivity and specificity of 91 and 93% respectively. Conclusion: Deep learning can be used to identify small bowel obstruction on plain radiographs with a high degree of accuracy. A system such as this could be used to alert clinicians to the presence of urgent findings with the potential for expedited clinical review and improved patient outcomes. Advances in knowledge: This paper describes a novel labelling method using composite clinical follow-up and demonstrates that ensemble models can be used effectively in medical imaging tasks. It also provides evidence that deep learning methods can be used to identify small bowel obstruction with high accuracy.

Publisher

British Institute of Radiology

Subject

Radiology Nuclear Medicine and imaging,General Medicine

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1. Applications of Artificial Intelligence in Acute Abdominal Imaging;Canadian Association of Radiologists Journal;2024-05-07

2. Towards an EKG for SBO: A Neural Network for Detection and Characterization of Bowel Obstruction on CT;Journal of Imaging Informatics in Medicine;2024-02-22

3. Unveiling new patterns: A surgical deep learning model for intestinal obstruction management;The International Journal of Medical Robotics and Computer Assisted Surgery;2024-01-06

4. Visual Image Annotation for Bowel Obstruction: Repeatability and Agreement with Manual Annotation and Neural Networks;Journal of Digital Imaging;2023-06-06

5. Role of artificial intelligence in oncologic emergencies: a narrative review;Exploration of Targeted Anti-tumor Therapy;2023-04-28

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