Current Status and Future Potential of Machine Learning in Diagnostic Imaging of Endometriosis : A Literature Review

The presence of endometrial tissue outside the uterus is a defining characteristic of endometriosis, a chronic systemic illness that affects women of childbearing age. Despite its enigmatic nature, laparoscopy remains the gold standard for diagnosis, while noninvasive methods such as transvaginal u...

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Bibliographic Details
Main Authors: Palpasa Shrestha, Bibek Shrestha, Jati Shrestha, Jun Chen
Format: Article
Language:English
Published: Nepal Medical Association 2025-02-01
Series:Journal of Nepal Medical Association
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Online Access:https://www.jnma.com.np/jnma/index.php/jnma/article/view/8897
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Summary:The presence of endometrial tissue outside the uterus is a defining characteristic of endometriosis, a chronic systemic illness that affects women of childbearing age. Despite its enigmatic nature, laparoscopy remains the gold standard for diagnosis, while noninvasive methods such as transvaginal ultrasonography and magnetic resonance imaging are commonly used to aid in preoperative planning. In healthcare, AI has emerged as a game-changing innovation, enhancing patient outcomes, reducing costs, and revolutionizing healthcare delivery, particularly in diagnostic radiology. Images can be analyzed using machine learning, a pattern recognition method. The machine learning algorithm first computes the image characteristics deemed significant for making predictions or diagnoses about unseen images.
ISSN:0028-2715
1815-672X