Integration and Visualization of Translational Medicine Data for Better Understanding of Human Diseases
Overview
Public Health
Authors
Affiliations
Translational medicine is a domain turning results of basic life science research into new tools and methods in a clinical environment, for example, as new diagnostics or therapies. Nowadays, the process of translation is supported by large amounts of heterogeneous data ranging from medical data to a whole range of -omics data. It is not only a great opportunity but also a great challenge, as translational medicine big data is difficult to integrate and analyze, and requires the involvement of biomedical experts for the data processing. We show here that visualization and interoperable workflows, combining multiple complex steps, can address at least parts of the challenge. In this article, we present an integrated workflow for exploring, analysis, and interpretation of translational medicine data in the context of human health. Three Web services-tranSMART, a Galaxy Server, and a MINERVA platform-are combined into one big data pipeline. Native visualization capabilities enable the biomedical experts to get a comprehensive overview and control over separate steps of the workflow. The capabilities of tranSMART enable a flexible filtering of multidimensional integrated data sets to create subsets suitable for downstream processing. A Galaxy Server offers visually aided construction of analytical pipelines, with the use of existing or custom components. A MINERVA platform supports the exploration of health and disease-related mechanisms in a contextualized analytical visualization system. We demonstrate the utility of our workflow by illustrating its subsequent steps using an existing data set, for which we propose a filtering scheme, an analytical pipeline, and a corresponding visualization of analytical results. The workflow is available as a sandbox environment, where readers can work with the described setup themselves. Overall, our work shows how visualization and interfacing of big data processing services facilitate exploration, analysis, and interpretation of translational medicine data.
Abualigah L, Alomari S, Almomani M, Zitar R, Saleem K, Migdady H J Transl Med. 2025; 23(1):302.
PMID: 40065389 PMC: 11892274. DOI: 10.1186/s12967-025-06308-6.
Hai Y, Ma J, Yang K, Wen Y Bioinformatics. 2023; 39(11).
PMID: 37882747 PMC: 10627352. DOI: 10.1093/bioinformatics/btad647.
Mazein A, Acencio M, Balaur I, Rougny A, Welter D, Niarakis A Front Bioinform. 2023; 3:1197310.
PMID: 37426048 PMC: 10325725. DOI: 10.3389/fbinf.2023.1197310.
Toure V, Krauss P, Gnodtke K, Buchhorn J, Unni D, Horki P Sci Data. 2023; 10(1):127.
PMID: 36899064 PMC: 10006404. DOI: 10.1038/s41597-023-02028-y.
Systems Biology in ELIXIR: modelling in the spotlight.
Martins Dos Santos V, Anton M, Szomolay B, Ostaszewski M, Arts I, Benfeitas R F1000Res. 2024; 11.
PMID: 36742342 PMC: 9871403. DOI: 10.12688/f1000research.126734.2.