Applications of Machine Learning-Driven Molecular Models for Advancing Ophthalmic Precision Medicine.

TitleApplications of Machine Learning-Driven Molecular Models for Advancing Ophthalmic Precision Medicine.
Publication TypeJournal Article
Year of Publication2025
AuthorsKumar R, Ong J, Waisberg E, Lee R, Nguyen T, Paladugu P, Rivolta MChiara, Gowda C, Janin JVincent, Saintyl J, Amiri D, Gosain A, Jagadeesan R
JournalBioengineering (Basel)
Volume12
Issue2
Date Published2025 Feb 06
ISSN2306-5354
Abstract

Ophthalmic diseases such as glaucoma, age-related macular degeneration (ARMD), and optic neuritis involve complex molecular and cellular disruptions that challenge current diagnostic and therapeutic approaches. Advanced artificial intelligence (AI) and machine learning (ML) models offer a novel lens to analyze these diseases by integrating diverse datasets, identifying patterns, and enabling precision medicine strategies. Over the past decade, applications of AI in ophthalmology have expanded from imaging-based diagnostics to molecular-level modeling, bridging critical gaps in understanding disease mechanisms. This paper systematically reviews the application of AI-driven methods, including reinforcement learning (RL), graph neural networks (GNNs), Bayesian inference, and generative adversarial networks (GANs), in the context of these ophthalmic conditions. RL models simulate transcription factor dynamics in hypoxic or inflammatory environments, offering insights into disrupted molecular pathways. GNNs map intricate molecular networks within affected tissues, identifying key inflammatory or degenerative drivers. Bayesian inference provides probabilistic models for predicting disease progression and response to therapies, while GANs generate synthetic datasets to explore therapeutic interventions. By contextualizing these AI tools within the broader framework of ophthalmic disease management, this review highlights their potential to transform diagnostic precision and therapeutic outcomes. Ultimately, this work underscores the need for continued interdisciplinary collaboration to harness AI's potential in advancing the field of ophthalmology and improving patient care.

DOI10.3390/bioengineering12020156
Alternate JournalBioengineering (Basel)
PubMed ID40001676
PubMed Central IDPMC11851544

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