Machine Learning-Based Prediction of Key Genes Correlated to the Subretinal Lesion Severity in a Mouse Model of Age-Related Macular Degeneration
Kuan Yan, Yue Zeng, Dai Shi, Ting Zhang, Dmytro Matsypura, Mark C., Gillies, Ling Zhu, Junbin Gao

TL;DR
This paper presents a machine learning framework that predicts key genes associated with subretinal lesion severity in AMD, aiding in identifying potential therapeutic targets to prevent fibrosis.
Contribution
It introduces a novel feature engineering approach and applies regression models to identify genes linked to AMD severity, advancing molecular understanding and treatment strategies.
Findings
Identified biologically significant key genes
Demonstrated effectiveness of the framework in predicting gene impact
Provided insights for drug discovery in AMD
Abstract
Age-related macular degeneration (AMD) is a major cause of blindness in older adults, severely affecting vision and quality of life. Despite advances in understanding AMD, the molecular factors driving the severity of subretinal scarring (fibrosis) remain elusive, hampering the development of effective therapies. This study introduces a machine learning-based framework to predict key genes that are strongly correlated with lesion severity and to identify potential therapeutic targets to prevent subretinal fibrosis in AMD. Using an original RNA sequencing (RNA-seq) dataset from the diseased retinas of JR5558 mice, we developed a novel and specific feature engineering technique, including pathway-based dimensionality reduction and gene-based feature expansion, to enhance prediction accuracy. Two iterative experiments were conducted by leveraging Ridge and ElasticNet regression models to…
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Taxonomy
TopicsRetinal Imaging and Analysis
