利用深度神经网络的疾病责任进行遗传关联研究。

Lu Yang, Marie C Sadler, Russ B Altman
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引用次数: 0

摘要

病例对照研究是研究二元性状遗传景观的一种广泛使用的方法。然而,在英国生物库等长期前瞻性队列研究中,参与者的健康相关结果或疾病状况可能会发生变化。在这里,我们开发了一种基因关联研究的方法,利用从深度患者表型框架计算的疾病责任(基于人工智能的责任)。通过分析来自英国生物库的261807名参与者的44个常见特征,与传统的病例对照(CC)关联研究相比,我们确定了新的基因座。我们的结果表明,在检测不同疾病的独立遗传基因座方面,将责任评分与CC状态相结合比CC-GWAS更有效。统计能力的提高进一步反映在基于SNP的遗传力估计值的增加中。此外,根据基于人工智能的负债计算的多基因风险评分在2022年发布的英国生物库中更好地识别了新确诊病例,该数据库在2019年版本中作为对照(平均百分位数增加6.2%)。这些发现证明了深度神经网络的实用性,该网络能够根据大规模人群队列中的高维表型数据对疾病责任进行建模。我们与疾病责任的全基因组关联研究可以应用于其他具有丰富表型和基因型数据的生物库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Genetic association studies using disease liabilities from deep neural networks.

Genetic association studies using disease liabilities from deep neural networks.

Genetic association studies using disease liabilities from deep neural networks.

Genetic association studies using disease liabilities from deep neural networks.

The case-control study is a widely used method for investigating the genetic underpinnings of binary traits. However, long-term, prospective cohort studies often grapple with absent or evolving health-related outcomes. Here, we propose two methods, liability and meta, for conducting genome-wide association study (GWAS) that leverage disease liabilities calculated from deep patient phenotyping. Analyzing 38 common traits in ~300,000 UK Biobank participants, we identified an increased number of loci compared to the conventional case-control approach, with high replication rates in larger external GWAS. Further analyses confirmed the disease-specificity of the genetic architecture with the meta method demonstrating higher robustness when phenotypes were imputed with low accuracy. Additionally, polygenic risk scores based on disease liabilities more effectively predicted newly diagnosed cases in the 2022 dataset, which were controls in the earlier 2019 dataset. Our findings demonstrate that integrating high-dimensional phenotypic data into deep neural networks enhances genetic association studies while capturing disease-relevant genetic architecture.

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