Providing an appropriate level of accessibility to and tracking of data or
process elements in large volumes of medical data, is an essential requirement
in the Big Data era. Researchers require systems that provide traceability of
information through provenance data capture and management to support their
clinical analyses. We present an approach that has been adopted in the neuGRID
and N4U projects, which aimed to provide detailed traceability to support
research analysis processes in the study of biomarkers for Alzheimers disease,
but is generically applicable across medical systems. To facilitate the
orchestration of complex, large-scale analyses in these projects we have
adapted CRISTAL, a workflow and provenance tracking solution. The use of
CRISTAL has provided a rich environment for neuroscientists to track and manage
the evolution of data and workflow usage over time in neuGRID and N4U.Comment: 6 pages, 3 diagrams. Proc of the 28th Int Symposium on Computer-Based
Medical Systems (CBMS 2015) Sao Carlos, Brazil. June 2015. arXiv admin note:
text overlap with arXiv:1502.0154