有效整合预训练多基因风险评分的无监督集成学习。

Chenyin Gao, Justin D Tubbs, Yi Han, Min Guo, Sijia Li, Erica Ma, Dailin Luo, Jordan W Smoller, Phil H Lee, Rui Duan
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引用次数: 0

摘要

预训练的多基因风险评分(PRS)模型的可用性越来越高,使得它们能够集成到现实世界的应用中,减少了对大量数据标记、训练和校准的需求。然而,为特定目标人群选择最合适的PRS模型仍然具有挑战性,因为存在诸如有限的可移植性、数据异质性以及在现实环境中观察到的表型的稀缺性等问题。集成学习为提高遗传风险评估的预测准确性提供了一条很有前途的途径,但大多数现有方法通常依赖于观察到的表型数据或来自目标人群的额外全基因组关联研究(GWAS)来优化集成权重,限制了它们在实时实施中的实用性。在这里,我们提出了联合国监督的整体PRS (UNSemblePRS),这是一个无监督的集成学习框架,它结合了预训练的PRS模型,而不需要表型数据或目标人群的摘要。与传统的监督方法不同,UNSemblePRS基于候选PRS模型的一个精心策划的子集的预测一致性来聚合模型。我们使用All of Us数据库中的连续和二元特征对UNSemblePRS进行了评估,展示了其在不同人群中的可扩展性和健壮性。这些结果强调了UNSemblePRS作为将PRS模型集成到现实环境中的可访问工具,随着PRS模型的可用性不断扩展,提供了广泛的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Ensemble Learning for Efficient Integration of Pre-trained Polygenic Risk Scores.

The growing availability of pre-trained polygenic risk score (PRS) models has enabled their integration into real-world applications, reducing the need for extensive data labeling, training, and calibration. However, selecting the most suitable PRS model for a specific target population remains challenging, due to issues such as limited transferability, data heterogeneity, and the scarcity of observed phenotype in real-world settings. Ensemble learning offers a promising avenue to enhance the predictive accuracy of genetic risk assessments, but most existing methods often rely on observed phenotype data or additional genome-wide association studies (GWAS) from the target population to optimize ensemble weights, limiting their utility in real-time implementation. Here, we present the UN supervised en Semble PRS ( UNSemblePRS ), an unsupervised ensemble learning framework, that combines pre-trained PRS models without requiring phenotype data or summaries from the target population. Unlike traditional supervised approaches, UNSemblePRS aggregates models based on prediction concordance across a curated subset of candidate PRS models. We evaluated UNSemblePRS using both continuous and binary traits in the All of Us database, demonstrating its scalability and robust performance across diverse populations. These results underscore UNSemblePRS as an accessible tool for integrating PRS models into real-world contexts, offering broad applicability as the availability of PRS models continues to expand.

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