基于变分自编码器的模型改进血细胞性状的多基因预测。

IF 3.6 Q2 GENETICS & HEREDITY
HGG Advances Pub Date : 2025-10-09 Epub Date: 2025-08-08 DOI:10.1016/j.xhgg.2025.100490
Xiaoqi Li, Elena Kharitonova, Minxing Pang, Jia Wen, Laura Y Zhou, Laura Raffield, Haibo Zhou, Huaxiu Yao, Can Chen, Yun Li, Quan Sun
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引用次数: 0

摘要

大规模基因组研究使复杂性状的遗传预测成为可能,为了解个体遗传倾向创造了新的方法。多基因风险评分(PRS)提供了一种收集基因组信息的方法,使复杂性状和疾病的个性化风险预测成为可能。然而,传统的依赖线性模型的PRS计算方法在捕获高维基因组数据中的复杂模式和相互作用效应的能力方面受到限制。在本研究中,我们试图通过应用先进的深度学习技术来提高PRS的预测能力。我们表明,基于变分自动编码器的PRS构建模型(VAE-PRS)在16种血细胞特征中的14种中优于目前最先进的生物库级数据方法,同时具有计算效率。通过综合实验,我们发现VAE-PRS模型能够捕获高维数据中的交互效应,并在不同的预筛选变体集上显示出稳健的性能。此外,通过SHapley加性解释(SHAP)方法评估每个个体标记对最终预测分数的贡献,可以很容易地解释VAE-PRS,为识别性状相关的遗传变异提供了潜在的新见解。综上所述,VAE-PRS通过适当的训练样本量,利用深度学习方法的力量,为血细胞特征的遗传风险预测提供了一种措施,可以进一步促进个性化医疗和基因研究的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Variational autoencoder-based model improves polygenic prediction in blood cell traits.

Genetic prediction of complex traits, enabled by large-scale genomic studies, has created new measures to understand individual genetic predisposition. Polygenic risk scores (PRSs) offer a way to aggregate information across the genome, enabling personalized risk prediction for complex traits and diseases. However, conventional PRS calculation methods that rely on linear models are limited in their ability to capture complex patterns and interaction effects in high-dimensional genomic data. In this study, we seek to improve the predictive power of PRS through applying advanced deep learning techniques. We show that the variational autoencoder-based model for PRS construction (VAE-PRS) outperforms currently state-of-the-art methods for biobank-level data in 14 out of 16 blood cell traits, while being computationally efficient. Through comprehensive experiments, we found that the VAE-PRS model offers the ability to capture interaction effects in high-dimensional data and shows robust performance across different pre-screened variant sets. Furthermore, VAE-PRS is easily interpretable via assessing the contribution of each individual marker to the final prediction score through the Shapley additive explanations method, providing potential new insights in identifying trait-associated genetic variants. In summary, VAE-PRS presents a measure to genetic risk prediction for blood cell traits by harnessing the power of deep learning methods given appropriate training sample size, which could further facilitate the development of personalized medicine and genetic research.

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来源期刊
HGG Advances
HGG Advances Biochemistry, Genetics and Molecular Biology-Molecular Medicine
CiteScore
4.30
自引率
4.50%
发文量
69
审稿时长
14 weeks
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