Tools & Strategies News

Deep Learning Algorithm Predicts Need for Crohn’s Disease Therapy

Deep learning analysis of complete capsule endoscopy at initial Crohn’s disease diagnosis can accurately forecast a patient's need for biological therapy.

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Source: Getty Images

By Shania Kennedy

- A study published last month in Therapeutic Advances in Gastroenterology demonstrated that a deep learning (DL) model can predict the need for biological therapy using capsule endoscopy (CE) videos of newly-diagnosed Crohn’s disease patients.

Mayo Clinic experts indicate that CE is useful in helping to determine the extent and severity of Crohn’s disease, along with monitoring a patient’s response to therapy, as the method is generally well-tolerated and less invasive than traditional endoscopy.

In the study, the researchers noted that predictors of disease progression and treatment response are lacking. CE can help combat this by providing clinicians with images of the entire digestive system, but each CE generates ten to twelve thousand images per patient for interpretation.