TraIT, Translational research IT bridging the valley of death in translational medicine

Translating new technology and biological findings into clinical applications is hampered by insufficient translational research IT. The Dutch Translational research IT (TraIT) initiative organizes, deploys, and manages data and workflows in an on-line “office suite”, supplemented with efficient training and user support. TraIT has been adopted by a wide user community providing an excellent large-scale demonstrator for the nation-wide Health-RI initiative.

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