Development and Validation of a CT-based Diagnostic Models Using Artificial Intelligence for Detection of Small Bowel Obstruction
NCT ID: NCT05566158
Last Updated: 2022-10-04
Study Results
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Basic Information
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UNKNOWN
8000 participants
OBSERVATIONAL
2022-08-09
2023-12-31
Brief Summary
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Given the exponential increase in the number of scans being performed, especially in the setting of emergency management, methods to assist the radiologist would be useful to:
1. Sort the scans performed, allowing prioritization of the analysis of scans with a higher probability of pathology (occlusion in our case)
2. Help the radiologist to diagnose occlusion and its type (functional or mechanical), and to identify signs of severity.
3. To help the emergency physician and the digestive surgeon to make a decision on the management of the disease (surgical or medical).
Machine learning has developed rapidly over the last decades, first thanks to the increase in data storage capacities, then thanks to the arrival of parallel processing hardware based on graphic processing units, in the context of radiological diagnostic assistance. Consequently, the number of studies on deep neural networks in medical imaging is increasing rapidly. However, few teams focus on SBO. The only published classification models have been produced for standard abdominal radiographs. No studies have used CT or 3D models, apart from our preliminary study on ZTs, despite the recognized advantages of CT for the diagnosis of SBO and the likely contribution of 3D models, which may be comparable to that of multiplanar reconstruction for the analysis of images in multiple planes of space.
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Detailed Description
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Conditions
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Study Design
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COHORT
RETROSPECTIVE
Eligibility Criteria
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Inclusion Criteria
* Patient who has had a CT scan with at least one abdominal-pelvic acquisition performed within the Saint Joseph Hospital Group
* Report containing the terms "occlusion" or "occlusive", "vomiting" or "ileus"
* French-speaking patient
Exclusion Criteria
* Absence of abdomino-pelvic volume on CT acquisitions
* Patient under guardianship or curatorship
* Patient deprived of liberty
* Patient under court protection
* Patient objecting to the use of his data for this research
18 Years
ALL
No
Sponsors
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Fondation Hôpital Saint-Joseph
OTHER
Responsible Party
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Principal Investigators
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Quentin Vanderbecq, MD
Role: PRINCIPAL_INVESTIGATOR
Fondation Hôpital Saint-Joseph
Locations
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Central for Visual Computing - OPIS Inria group
Gif-sur-Yvette, , France
Groupe Hospitalier Paris Saint-Joseph
Paris, , France
Countries
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References
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Ten Broek RPG, Krielen P, Di Saverio S, Coccolini F, Biffl WL, Ansaloni L, Velmahos GC, Sartelli M, Fraga GP, Kelly MD, Moore FA, Peitzman AB, Leppaniemi A, Moore EE, Jeekel J, Kluger Y, Sugrue M, Balogh ZJ, Bendinelli C, Civil I, Coimbra R, De Moya M, Ferrada P, Inaba K, Ivatury R, Latifi R, Kashuk JL, Kirkpatrick AW, Maier R, Rizoli S, Sakakushev B, Scalea T, Soreide K, Weber D, Wani I, Abu-Zidan FM, De'Angelis N, Piscioneri F, Galante JM, Catena F, van Goor H. Bologna guidelines for diagnosis and management of adhesive small bowel obstruction (ASBO): 2017 update of the evidence-based guidelines from the world society of emergency surgery ASBO working group. World J Emerg Surg. 2018 Jun 19;13:24. doi: 10.1186/s13017-018-0185-2. eCollection 2018.
Expert Panel on Gastrointestinal Imaging; Chang KJ, Marin D, Kim DH, Fowler KJ, Camacho MA, Cash BD, Garcia EM, Hatten BW, Kambadakone AR, Levy AD, Liu PS, Moreno C, Peterson CM, Pietryga JA, Siegel A, Weinstein S, Carucci LR. ACR Appropriateness Criteria(R) Suspected Small-Bowel Obstruction. J Am Coll Radiol. 2020 May;17(5S):S305-S314. doi: 10.1016/j.jacr.2020.01.025.
Frager D, Medwid SW, Baer JW, Mollinelli B, Friedman M. CT of small-bowel obstruction: value in establishing the diagnosis and determining the degree and cause. AJR Am J Roentgenol. 1994 Jan;162(1):37-41. doi: 10.2214/ajr.162.1.8273686.
Montagnon E, Cerny M, Cadrin-Chenevert A, Hamilton V, Derennes T, Ilinca A, Vandenbroucke-Menu F, Turcotte S, Kadoury S, Tang A. Deep learning workflow in radiology: a primer. Insights Imaging. 2020 Feb 10;11(1):22. doi: 10.1186/s13244-019-0832-5.
Cheng PM, Tejura TK, Tran KN, Whang G. Detection of high-grade small bowel obstruction on conventional radiography with convolutional neural networks. Abdom Radiol (NY). 2018 May;43(5):1120-1127. doi: 10.1007/s00261-017-1294-1.
Kim DH, Wit H, Thurston M, Long M, Maskell GF, Strugnell MJ, Shetty D, Smith IM, Hollings NP. An artificial intelligence deep learning model for identification of small bowel obstruction on plain abdominal radiographs. Br J Radiol. 2021 Jun 1;94(1122):20201407. doi: 10.1259/bjr.20201407. Epub 2021 Apr 27.
Vanderbecq Q, Ardon R, De Reviers A, Ruppli C, Dallongeville A, Boulay-Coletta I, D'Assignies G, Zins M. Adhesion-related small bowel obstruction: deep learning for automatic transition-zone detection by CT. Insights Imaging. 2022 Jan 24;13(1):13. doi: 10.1186/s13244-021-01150-y.
Hodel J, Zins M, Desmottes L, Boulay-Coletta I, Julles MC, Nakache JP, Rodallec M. Location of the transition zone in CT of small-bowel obstruction: added value of multiplanar reformations. Abdom Imaging. 2009 Jan-Feb;34(1):35-41. doi: 10.1007/s00261-007-9348-4.
Other Identifiers
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SMARTLOOP2
Identifier Type: -
Identifier Source: org_study_id
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