Use of Artificial Intelligence in Lower Gastrointestinal and Small Bowel Disorders: An Update Beyond Polyp Detection.

Journal: Journal of clinical gastroenterology
PMID:

Abstract

Machine learning and its specialized forms, such as Artificial Neural Networks and Convolutional Neural Networks, are increasingly being used for detecting and managing gastrointestinal conditions. Recent advancements involve using Artificial Neural Network models to enhance predictive accuracy for severe lower gastrointestinal (LGI) bleeding outcomes, including the need for surgery. To this end, artificial intelligence (AI)-guided predictive models have shown promise in improving management outcomes. While much literature focuses on AI in early neoplasia detection, this review highlights AI's role in managing LGI and small bowel disorders, including risk stratification for LGI bleeding, quality control, evaluation of inflammatory bowel disease, and video capsule endoscopy reading. Overall, the integration of AI into routine clinical practice is still developing, with ongoing research aimed at addressing current limitations and gaps in patient care.

Authors

  • Mili Parikh
    University of California, Davis.
  • Sooraj Tejaswi
    University of California, Davis.
  • Tavishi Girotra
    Symbiosis Medical College for Women, Pune, MH.
  • Shreya Chopra
    Lady Hardinge Medical College, New Delhi.
  • Daryl Ramai
    Department of Anatomical Sciences, St George's University School of Medicine, True Blue, Grenada, WI.
  • James H Tabibian
    David Geffen School of Medicine, University of California, Los Angeles, Los Angeles, CA, USA.
  • Soumya Jagannath
    All India Institute of Medical Sciences, New Delhi, India.
  • Andrew Ofosu
    University of Cincinnati, Cincinnati, OH.
  • Monique T Barakat
    Stanford University, Palo Alto, CA.
  • Rajnish Mishra
    Swedish Medical Center, Seattle, WA.
  • Mohit Girotra
    Gastroenterology, Swedish Health and Swedish Medical Center, Seattle, Washington, USA.