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Cited by in CrossRef
For: Wang FT, Lin Y, Yuan XQ, Gao RY, Wu XC, Xu WW, Wu TQ, Xia K, Jiao YR, Yin L, Chen CQ. Predicting short-term major postoperative complications in intestinal resection for Crohn’s disease: A machine learning-based study. World J Gastrointest Surg 2024; 16(3): 717-730 [PMID: 38577067 DOI: 10.4240/wjgs.v16.i3.717]
URL: https://www.wjgnet.com/1007-9327/full/v16/i3/717.htm
Number Citing Articles
1
Constantin-Alexandru Petraru, Tudor Stroie, Doina Istratescu, Dan Pitigoi, Corina Gabriela Meianu, Rucsandra Ilinca-Diculescu, Mircea Diculescu. Biologic Therapy and Surgical Management in Crohn’s Disease: Postoperative Outcomes and Biologic Management Patterns in a Retrospective Cohort StudyMedicina 2026; 62(5) doi: 10.3390/medicina62050917
2
Javier Arredondo Montero. From the mathematical model to the patient: The scientific and human aspects of artificial intelligence in gastrointestinal surgeryWorld Journal of Gastrointestinal Surgery 2024; 16(6): 1517-1520 doi: 10.4240/wjgs.v16.i6.1517
3
Alvin T. George, David T. Rubin. Artificial Intelligence in Inflammatory Bowel DiseaseGastrointestinal Endoscopy Clinics of North America 2025; 35(2) doi: 10.1016/j.giec.2024.10.004
4
Li-Fan Zhang, Liu-Xiang Chen, Wen-Juan Yang, Bing Hu. Machine learning in predicting postoperative complications in Crohn’s diseaseWorld Journal of Gastrointestinal Surgery 2024; 16(8): 2745-2747 doi: 10.4240/wjgs.v16.i8.2745
5
Bobuțac Eduard, Zaharie Delia Roxana, Vălean Dan, Emil Moiș, Călin Popa, Andra Ciocan, Nadim Al-Hajjar, Florin Zaharie. Risk Factors and Predictive Biomarkers for Postoperative Complications in Crohn’s Disease Surgery: Systematic ReviewInternational Journal of Molecular Sciences 2026; 27(13) doi: 10.3390/ijms27135731
6
Olga Maria Nardone, Fabiana Castiglione, Simone Maurea. Advancing perioperative optimization in Crohn's disease surgery with machine learning predictionsWorld Journal of Gastrointestinal Surgery 2024; 16(10): 3091-3093 doi: 10.4240/wjgs.v16.i10.3091
7
Andrew Paul Zbar. Can serious postoperative complications in patients with Crohn’s disease be predicted using machine learning?World Journal of Gastrointestinal Surgery 2024; 16(10): 3358-3362 doi: 10.4240/wjgs.v16.i10.3358
8
Xiu Wang, Jianhua Peng, Peipei Cai, Yuxuan Xia, Chengxue Yi, Anquan Shang, Francis Atim Akanyibah, Fei Mao. The emerging role of the gut microbiota and its application in inflammatory bowel diseaseBiomedicine & Pharmacotherapy 2024; 179 doi: 10.1016/j.biopha.2024.117302
9
Raffaele Pellegrino, Antonietta Gerarda Gravina. Machine learning as a tool predicting short-term postoperative complications in Crohn’s disease patients undergoing intestinal resection: What frontiers?World Journal of Gastrointestinal Surgery 2024; 16(9): 2755-2759 doi: 10.4240/wjgs.v16.i9.2755
10
Shi-Rong Lv, Xiao Huang, Li-Yun Zhou, Jie Shi, Chu-Chu Gong, Ming-Ke Wang, Ji-Shun Yang. Influencing factors and preventive measures of infectious complications after intestinal resection for Crohn’s diseaseWorld Journal of Gastrointestinal Surgery 2024; 16(10): 3363-3370 doi: 10.4240/wjgs.v16.i10.3363
11
Noha Alnazzawi. BERTDiseComp: A Clinical Language Model for Detecting Disease Complications in EHRs2025 International Conference on Electrical, Communication and Computer Engineering (ICECCE) 2025;  doi: 10.1109/ICECCE67514.2025.11257959
12
Lu‐Yen Anny Chen, Shu‐Yi Wang, Shu‐Chuan Amy Lin. Predicting Postoperative Outcomes in Lower Gastrointestinal Surgery: A Machine Learning Approach Using Electronic Health RecordsAORN Journal 2026; 123(1) doi: 10.1002/aorn.70000