Snyder K, Ahmed C M Sabbir, Ali Md Yousuf, Butler S, DeNieu Michael, Houser W, Paisley B, Rosentreter M, Wang W, Larsen B
US Food and Drug Administration, Silver Spring, MD, United States.
Oak Ridge Institute for Science and Education, Oak Ridge, TN, United States.
Front Toxicol. 2024 Jul 15;6:1392686. doi: 10.3389/ftox.2024.1392686. eCollection 2024.
The CDISC Standard for Exchange of Nonclinical Data (SEND) data standard has created new opportunities for collaborative development of open-source software solutions to facilitate cross-study analyses of toxicology study data. A public-private partnership between BioCelerate and the FDA/Center for Drug Evaluation and Research (CDER) was established in part to develop and publicize novel methods to facilitate cross-study analysis of SEND datasets. As part of this work in collaboration with the Pharmaceutical Users Software Exchange (PHUSE), an R package sendigR has been developed to enable users to construct a relational database from a collection of SEND datasets and then query that database to perform cross-study analyses. The sendigR package also includes an integrated Python package, xptcleaner, which can be used to harmonize the terminology used in SEND datasets by mapping to CDISC controlled terminologies. The sendigR R package is freely available on the comprehensive R Archive Network (CRAN) and at https://github.com/phuse-org/sendigR. An R Shiny web application was included in the R package to enable toxicologists with no coding experience to perform historical control analyses. Experienced R programmers will be able to integrate the package functions into their own custom scripts/packages and potentially contribute improvements to the functionality of sendigR. sendigR reference manual: https://phuse-org.github.io/sendigR/. sendigR R Shiny demo app: https://phuse-org.shinyapps.io/sendigR/.
非临床数据交换(SEND)的CDISC标准为开源软件解决方案的协作开发创造了新机会,以促进毒理学研究数据的跨研究分析。BioCelerate与美国食品药品监督管理局/药品评价和研究中心(CDER)建立了公私合作关系,部分目的是开发和推广促进SEND数据集跨研究分析的新方法。作为与制药用户软件交换(PHUSE)合作开展的这项工作的一部分,已开发出一个R包sendigR,使用户能够从一组SEND数据集中构建关系数据库,然后查询该数据库以进行跨研究分析。sendigR包还包括一个集成的Python包xptcleaner,可用于通过映射到CDISC受控术语来统一SEND数据集中使用的术语。sendigR R包可在综合R存档网络(CRAN)以及https://github.com/phuse-org/sendigR上免费获取。R包中包含一个R Shiny网络应用程序,使没有编码经验的毒理学家能够进行历史对照分析。有经验的R程序员将能够将包的功能集成到他们自己的自定义脚本/包中,并可能对sendigR的功能做出改进。sendigR参考手册:https://phuse-org.github.io/sendigR/。sendigR R Shiny演示应用程序:https://phuse-org.shinyapps.io/sendigR/。