Genetic underpinnings of predicted changes in cardiovascular function using self supervised learning

Zachary Levine, Guy Lutsker, Anastasia Godneva, Adina Weinberger, Maya Lotan-Pompan, Yeela Talmor-Barkan, Yotam Reisner, Hagai Rossman, Eran Segal
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Abstract

Background The genetic underpinnings of cardiovascular disease remain elusive. Contrastive learning algorithms have recently shown cutting-edge performance in extracting representations from electrocardiogram (ECG) signals that characterize cross-temporal cardiovascular state. However, there is currently no connection between these representations and genetics. Methods We designed a new metric, denoted as Delta ECG, which measures temporal shifts in patients' cardiovascular state, and inherently adjusts for inter-patient differences at baseline. We extracted this measure for 4,782 patients in the Human Phenotype Project using a novel self-supervised learning model, and quantified the associated genetic signals with Genome-Wide-Association Studies (GWAS). We predicted the expression of thousands of genes extracted from Peripheral Blood Mononuclear Cells (PBMCs). Downstream, we ran enrichment and overrepresentation analysis of genes we identified as significantly predicted from ECG. Findings In a Genome-Wide Association Study (GWAS) of Delta ECG, we identified five associations that achieved genome-wide significance. From baseline embeddings, our models significantly predict the expression of 57 genes in men and 9 in women. Enrichment analysis showed that these genes were predominantly associated with the electron transport chain and the same immune pathways as identified in our GWAS. Conclusions We validate a novel method integrating self-supervised learning in the medical domain and simple linear models in genetics. Our results indicate that the processes underlying temporal changes in cardiovascular health share a genetic basis with CVD, its major risk factors, and its known correlates. Moreover, our functional analysis confirms the importance of leukocytes, specifically eosinophils and mast cells with respect to cardiac structure and function.
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利用自我监督学习预测心血管功能变化的遗传基础
背景心血管疾病的遗传基础仍然难以捉摸。对比学习算法最近在从心电图(ECG)信号中提取表征跨时空心血管状态的表征方面表现出了尖端性能。我们设计了一种新指标,称为 "Delta ECG",它能测量患者心血管状态的时间变化,并能根据基线时患者间的差异进行内在调整。我们利用新型自监督学习模型,从人类表型项目的 4782 名患者中提取了这一指标,并通过基因组全关联研究(GWAS)量化了相关的遗传信号。我们预测了从外周血单核细胞(PBMC)中提取的数千个基因的表达。在对三角洲心电图进行的全基因组关联研究(GWAS)中,我们发现了五种具有全基因组意义的关联。根据基线嵌入,我们的模型可显著预测男性 57 个基因和女性 9 个基因的表达。富集分析表明,这些基因主要与电子传递链和我们的 GWAS 中发现的相同免疫途径相关。我们的研究结果表明,心血管健康的时间变化过程与心血管疾病、其主要风险因素及其已知相关因素有着共同的遗传基础。此外,我们的功能分析证实了白细胞,特别是嗜酸性粒细胞和肥大细胞对心脏结构和功能的重要性。
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