Document Type
Article
Publication Date
10-17-2024
Abstract
Background: The color variation in fundus images from differences in melanin concentrations across races can affect the accuracy of artificial intelligence and machine learning (AI/ML) models. Hence, we studied the performance of our AI model (with proven efficacy in an Asian-Indian cohort) in a multiracial cohort for detecting and classifying intraocular RB (iRB). Methods: Retrospective observational study. Results: Of 210 eyes, 153 (73%) belonged to White, 37 (18%) to African American, 9 (4%) to Asian, 6 (3%) to Hispanic races, based on the U.S. Office of Management and Budget's Statistical Policy Directive No.15 and 5 (2%) had no reported race. Of the 2473 images in 210 eyes, 427 had no tumor, and 2046 had iRB. After training the AI model based on race, the sensitivity and specificity for detection of RB in 2473 images were 93% and 96%, respectively. The sensitivity and specificity of the AI model were 74% and 100% for group A; 88% and 96% for group B; 88% and 100% for group C; 73% and 98% for group D, and 100% and 92% for group E, respectively. Conclusions: The AI models built on a single race do not work well for other races. When retrained for different races, our model exhibited high sensitivity and specificity in detecting RB and classifying RB.
Recommended Citation
Vempuluru, Vijitha S.; Viriyala, Rajiv; Ayyagari, Virinchi; Bakal, Komal; Bhamidipati, Patanjali; Dhara, Krishna Krishore; Ferenczy, Sandor R.; Shields, Carol L.; and Kaliki, Swathi, "Artificial Intelligence and Machine Learning in Ocular Oncology, Retinoblastoma (ArMOR): Experience with a Multiracial Cohort" (2024). Wills Eye Hospital Papers. Paper 237.
https://jdc.jefferson.edu/willsfp/237
Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 License.
PubMed ID
39456609
Language
English
Comments
This article is the author's final published version in Cancers, Volume 16, Issue 20, October 2024, Article number 3516.
The published version is available at "https://doi.org/10.3390/cancers16203516.
Copyright © 2024 by the authors