BACKGROUND: Systems biology experiments generate large volumes of data of multiple modalities and this information presents a challenge for integration due to a mix of complexity together with rich semantics. Here, we describe how graph databases provide a powerful framework for storage, querying and envisioning of biological data. RESULTS: We show how graph databases are well suited for the representation of biological information, which is typically highly connected, semi-structured and unpredictable. We outline an application case that uses the Neo4j graph database for building and querying a prototype network to provide biological context to asthma related genes. CONCLUSIONS: Our study suggests that graph databases provide a flexible solution for the integration of multiple types of biological data and facilitate exploratory data mining to support hypothesis generation.
Representing and querying disease networks using graph databases.
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作者:Lysenko Artem, RoznovÄÅ£ Irina A, Saqi Mansoor, Mazein Alexander, Rawlings Christopher J, Auffray Charles
| 期刊: | Biodata Mining | 影响因子: | 6.100 |
| 时间: | 2016 | 起止号: | 2016 Jul 25; 9:23 |
| doi: | 10.1186/s13040-016-0102-8 | ||
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