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Development of an AI-Assisted Diagnostic Tool for Mycosis Fungoides and Other Cutaneous Lymphoproliferative Diseases Using Microscopic Image Analysis: A Training and Validation Study
Sponsor: Cairo University
Summary
Cutaneous lymphoproliferative diseases (CLPDs) are a group of skin disorders that range from benign conditions, such as pseudolymphomas, to malignant forms like cutaneous T-cell and B-cell lymphomas. Mycosis fungoides is the most common malignant type, but diagnosis is often difficult because many benign skin conditions can mimic lymphoma. Current diagnostic methods rely on microscopic examination of biopsies, which can be subjective and vary between pathologists. This study aims to develop and validate a deep learning model that uses digitized biopsy images and clinical data to distinguish malignant CLPDs from benign ones. By applying artificial intelligence to dermatopathology, the project seeks to improve diagnostic accuracy, reduce variability, and support clinicians in making timely treatment decisions. The novelty of this work lies in applying advanced AI methods to a rare and challenging group of skin diseases, with the potential to enhance patient care in both specialized centers and resource-limited settings.
Key Details
Gender
All
Age Range
Any - Any
Study Type
OBSERVATIONAL
Enrollment
463
Start Date
2026-01-01
Completion Date
2026-12-30
Last Updated
2026-07-15
Healthy Volunteers
Not specified
Conditions
Interventions
AI-assisted histopathology image analysis
Development and validation of a deep learning model using digitized hematoxylin and eosin (H\&E) stained slides and clinical data to differentiate malignant CLPDs from benign mimickers. Comparator: Standard histopathological diagnosis by experienced dermatopathologists.
Locations (1)
Kasr Al-Aini Hospitals, Cairo University
Cairo, Egypt