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- Title
BioThings SDK: a toolkit for building high-performance data APIs in biomedical research.
- Authors
Lelong, Sebastien; Zhou, Xinghua; Afrasiabi, Cyrus; Qian, Zhongchao; Cano, Marco Alvarado; Tsueng, Ginger; Xin, Jiwen; Mullen, Julia; Yao, Yao; Avila, Ricardo; Taylor, Greg; Su, Andrew I; Wu, Chunlei
- Abstract
Summary To meet the increased need of making biomedical resources more accessible and reusable, Web Application Programming Interfaces (APIs) or web services have become a common way to disseminate knowledge sources. The BioThings APIs are a collection of high-performance, scalable, annotation as a service APIs that automate the integration of biological annotations from disparate data sources. This collection of APIs currently includes MyGene.info, MyVariant.info and MyChem.info for integrating annotations on genes, variants and chemical compounds, respectively. These APIs are used by both individual researchers and application developers to simplify the process of annotation retrieval and identifier mapping. Here, we describe the BioThings Software Development Kit (SDK), a generalizable and reusable toolkit for integrating data from multiple disparate data sources and creating high-performance APIs. This toolkit allows users to easily create their own BioThings APIs for any data type of interest to them, as well as keep APIs up-to-date with their underlying data sources. Availability and implementation The BioThings SDK is built in Python and released via PyPI (https://pypi.org/project/biothings/). Its source code is hosted at its github repository (https://github.com/biothings/biothings.api). Supplementary information Supplementary data are available at Bioinformatics online.
- Subjects
APPLICATION program interfaces; INTERNET servers; SOFTWARE development tools; MEDICAL research; WEB-based user interfaces; SOURCE code; WEB services
- Publication
Bioinformatics, 2022, Vol 38, Issue 7, p2077
- ISSN
1367-4803
- Publication type
Article
- DOI
10.1093/bioinformatics/btac017