TY - JOUR
T1 - Deep learning in magnetic resonance enterography for Crohn’s disease assessment
T2 - a systematic review
AU - Brem, Ofir
AU - Elisha, David
AU - Konen, Eli
AU - Amitai, Michal
AU - Klang, Eyal
N1 - Publisher Copyright:
© The Author(s) 2024.
PY - 2024/9
Y1 - 2024/9
N2 - Crohn’s disease (CD) poses significant morbidity, underscoring the need for effective, non-invasive inflammatory assessment using magnetic resonance enterography (MRE). This literature review evaluates recent publications on the role of deep learning in improving MRE for CD assessment. We searched MEDLINE/PUBMED for studies that reported the use of deep learning algorithms for assessment of CD activity. The study was conducted according to the PRISMA guidelines. The risk of bias was evaluated using the QUADAS‐2 tool. Five eligible studies, encompassing 468 subjects, were identified. Our study suggests that diverse deep learning applications, including image quality enhancement, bowel segmentation for disease burden quantification, and 3D reconstruction for surgical planning are useful and promising for CD assessment. However, most of the studies are preliminary, retrospective studies, and have a high risk of bias in at least one category. Future research is needed to assess how deep learning can impact CD patient diagnostics, particularly when considering the increasing integration of such models into hospital systems.
AB - Crohn’s disease (CD) poses significant morbidity, underscoring the need for effective, non-invasive inflammatory assessment using magnetic resonance enterography (MRE). This literature review evaluates recent publications on the role of deep learning in improving MRE for CD assessment. We searched MEDLINE/PUBMED for studies that reported the use of deep learning algorithms for assessment of CD activity. The study was conducted according to the PRISMA guidelines. The risk of bias was evaluated using the QUADAS‐2 tool. Five eligible studies, encompassing 468 subjects, were identified. Our study suggests that diverse deep learning applications, including image quality enhancement, bowel segmentation for disease burden quantification, and 3D reconstruction for surgical planning are useful and promising for CD assessment. However, most of the studies are preliminary, retrospective studies, and have a high risk of bias in at least one category. Future research is needed to assess how deep learning can impact CD patient diagnostics, particularly when considering the increasing integration of such models into hospital systems.
KW - Convoluted neural networks
KW - Crohn’s disease
KW - Deep learning
KW - Inflammatory bowel disease
KW - MRE
UR - http://www.scopus.com/inward/record.url?scp=85191964193&partnerID=8YFLogxK
U2 - 10.1007/s00261-024-04326-4
DO - 10.1007/s00261-024-04326-4
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C2 - 38693270
AN - SCOPUS:85191964193
SN - 2366-004X
VL - 49
SP - 3183
EP - 3189
JO - Abdominal Radiology
JF - Abdominal Radiology
IS - 9
ER -