Predicting Malignant Transformation of Choroidal Nevi Using Machine Learning
Sabrina P. Iddir,
Jacob Love,
Jiechao (Simon) Ma
et al.
Abstract:Objective
This study aims to assess a machine learning (ML) algorithm using multimodal imaging to accurately identify risk factors for uveal melanoma (UM) and aid in the diagnosis of melanocytic choroidal tumors.
Subjects and Methods
This study included 223 eyes from 221 patients with melanocytic choroidal lesions seen at the eye clinic of the University of Illinois at Chicago between 01/2010 and 07/2022. An ML algorithm was developed and trained on ultra-widefield fundus imaging and B-scan ultrasonography to … Show more
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