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Published in: Insights into Imaging 1/2022

Open Access 01-12-2022 | Computed Tomography | Original Article

Adhesion-related small bowel obstruction: deep learning for automatic transition-zone detection by CT

Authors: Quentin Vanderbecq, Roberto Ardon, Antoine De Reviers, Camille Ruppli, Axel Dallongeville, Isabelle Boulay-Coletta, Gaspard D’Assignies, Marc Zins

Published in: Insights into Imaging | Issue 1/2022

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Abstract

Background

To train a machine-learning model to locate the transition zone (TZ) of adhesion-related small bowel obstruction (SBO) on CT scans.

Materials and methods

We used 562 CTs performed in 2005–2018 in 404 patients with adhesion-related SBO. Annotation of the TZs was performed by experienced radiologists and trained residents using bounding boxes. Preprocessing involved using a pretrained model to extract the abdominopelvic region. We modeled TZ localization as a binary classification problem by splitting the abdominopelvic region into 125 patches. We then trained a neural network model to classify each patch as containing or not containing a TZ. We coupled this with a trained probabilistic estimation of presence of a TZ in each patch. The models were first evaluated by computing the area under the receiver operating characteristics curve (AUROC). Then, to assess the clinical benefit, we measured the proportion of total abdominopelvic volume classified as containing a TZ for several different false-negative rates.

Results

The probability of containing a TZ was highest for the hypogastric region (56.9%). The coupled classification network and probability mapping produced an AUROC of 0.93. For a 15% proportion of volume classified as containing TZs, the probability of highlighted patches containing a TZ was 92%.

Conclusion

Modeling TZ localization by coupling convolutional neural network classification and probabilistic localization estimation shows the way to a possible automatic TZ detection, a complex radiological task with a major clinical impact.
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Literature
14.
go back to reference Hou L, Samaras D, Kurc TM, Gao Y, Davis JE, Saltz JH (2016) Patch-based convolutional neural network for whole slide tissue image classification. In: 2016 IEEE conference on computer vision and pattern recognition (CVPR). IEEE, Las Vegas, NV, USA, pp 2424–2433 Hou L, Samaras D, Kurc TM, Gao Y, Davis JE, Saltz JH (2016) Patch-based convolutional neural network for whole slide tissue image classification. In: 2016 IEEE conference on computer vision and pattern recognition (CVPR). IEEE, Las Vegas, NV, USA, pp 2424–2433
17.
go back to reference Perotte R, Lewin GO, Tambe U et al (2018) Improving emergency department flow: reducing turnaround time for emergent CT scans. AMIA Ann Symp Proc 2018:897 Perotte R, Lewin GO, Tambe U et al (2018) Improving emergency department flow: reducing turnaround time for emergent CT scans. AMIA Ann Symp Proc 2018:897
Metadata
Title
Adhesion-related small bowel obstruction: deep learning for automatic transition-zone detection by CT
Authors
Quentin Vanderbecq
Roberto Ardon
Antoine De Reviers
Camille Ruppli
Axel Dallongeville
Isabelle Boulay-Coletta
Gaspard D’Assignies
Marc Zins
Publication date
01-12-2022
Publisher
Springer International Publishing
Published in
Insights into Imaging / Issue 1/2022
Electronic ISSN: 1869-4101
DOI
https://doi.org/10.1186/s13244-021-01150-y

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