利用PheTK对大规模生物银行数据进行PheWAS分析。

Tam C Tran, David J Schlueter, Chenjie Zeng, Huan Mo, Robert J Carroll, Joshua C Denny
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引用次数: 0

摘要

摘要:随着大量与电子健康记录数据相关的基因数据的快速增长,大规模全现象关联研究(PheWAS)已成为生物医学研究中强有力的发现工具。PheWAS是一种利用纵向电子健康记录(EHR)数据研究表型关联的分析方法。以前的PheWAS软件包主要是使用较小的数据集和早期的PheWAS方法开发的。PheTK旨在简化分析并有效处理生物库规模的数据。PheTK使用多线程,支持完整的PheWAS工作流,包括从OMOP数据库和Hail矩阵表中提取数据,以及phecode 1.2版和phecodeX的PheWAS分析。基准测试结果显示,在完成相同的工作流程时,PheTK比R PheWAS包节省64%的时间。PheTK可以在本地运行,也可以在云平台上运行,例如All of Us Researcher Workbench (All of Us)或UK Biobank (UKB) Research Analysis Platform (RAP)。可用性和实现:PheTK包在Python包索引上免费提供,在GitHub上根据GNU通用公共许可证(GPL-3)在https://github.com/nhgritctran/PheTK上,在Zenodo上,DOI 10.5281/ Zenodo上。14217954,网址:https://doi.org/10.5281/zenodo.14217954PheTK是用Python实现的,与平台无关。补充信息:补充数据可在生物信息学在线获取。
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PheWAS analysis on large-scale biobank data with PheTK.

Summary: With the rapid growth of genetic data linked to electronic health record (EHR) data in huge cohorts, large-scale phenome-wide association study (PheWAS) have become powerful discovery tools in biomedical research. PheWAS is an analysis method to study phenotype associations utilizing longitudinal EHR data. Previous PheWAS packages were developed mostly with smaller datasets and with earlier PheWAS approaches. PheTK was designed to simplify analysis and efficiently handle biobank-scale data. PheTK uses multithreading and supports a full PheWAS workflow including extraction of data from OMOP databases and Hail matrix tables as well as PheWAS analysis for both phecode version 1.2 and phecodeX. Benchmarking results showed PheTK took 64% less time than the R PheWAS package to complete the same workflow. PheTK can be run locally or on cloud platforms such as the All of Us Researcher Workbench (All of Us) or the UK Biobank (UKB) Research Analysis Platform (RAP).

Availability and implementation: The PheTK package is freely available on the Python Package Index, on GitHub under GNU General Public License (GPL-3) at https://github.com/nhgritctran/PheTK, and on Zenodo, DOI 10.5281/zenodo.14217954, at https://doi.org/10.5281/zenodo.14217954. PheTK is implemented in Python and platform independent.

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