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
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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 assess biological relevance and gene impact. The results highlight the biological significance of several key genes and demonstrate the framework's effectiveness in identifying novel therapeutic targets. The key findings provide valuable insights for advancing drug discovery efforts and improving treatment strategies for AMD, with the potential to enhance patient outcomes by targeting the underlying genetic mechanisms of subretinal lesion development.
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基于机器学习预测与年龄相关性黄斑变性小鼠模型中视网膜下病变严重程度相关的关键基因
老年性黄斑变性(AMD)是老年人失明的主要原因,严重影响视力和生活质量。尽管人们对黄斑变性的认识取得了进展,但导致视网膜下瘢痕(纤维化)严重程度的分子因素仍然难以捉摸,这阻碍了有效疗法的开发。本研究引入了一种基于机器学习的框架,用于预测与病变严重程度密切相关的关键基因,并确定潜在的治疗靶点,以预防AMD视网膜下纤维化。我们利用来自 JR5558 小鼠病变视网膜的原始 RNA 测序(RNA-seq)数据集,开发了一种新颖而特殊的特征工程技术,包括基于通路的降维和基于基因的特征扩展,以提高预测的准确性。我们利用 Ridge 和 ElasticNet 回归模型进行了两次迭代实验,以评估生物学相关性和基因影响。结果凸显了几个关键基因的生物学意义,并证明了该框架在识别新型治疗靶点方面的有效性。这些重要发现为推进药物发现工作和改善老年性视网膜病变的治疗策略提供了有价值的见解,并有可能通过针对视网膜下病变发展的潜在遗传机制来提高患者的治疗效果。
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