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@ARTICLE{Ahlbrandt:141971,
      author       = {J. Ahlbrandt$^*$ and M. Lablans$^*$ and K. Glocker$^*$ and
                      S. Stahl-Toyota$^*$ and K. Maier-Hein$^*$ and L.
                      Maier-Hein$^*$ and F. Ückert$^*$},
      title        = {{M}odern {I}nformation {T}echnology for {C}ancer
                      {R}esearch: {W}hat's in {IT} for {M}e? {A}n {O}verview of
                      {T}echnologies and {A}pproaches.},
      journal      = {Oncology},
      volume       = {98},
      number       = {6},
      issn         = {1423-0232},
      address      = {Basel},
      publisher    = {Karger},
      reportid     = {DKFZ-2018-02201},
      pages        = {363-369},
      year         = {2020},
      note         = {Oncology. 2020;98(6):363-369 #EA:E240#LA:E240#},
      abstract     = {Information technology (IT) can enhance or change many
                      scenarios in cancer research for the better. In this paper,
                      we introduce several examples, starting with clinical data
                      reuse and collaboration including data sharing in research
                      networks. Key challenges are semantic interoperability and
                      data access (including data privacy). We deal with gathering
                      and analyzing genomic information, where cloud computing,
                      uncertainties and reproducibility challenge researchers.
                      Also, new sources for additional phenotypical data are shown
                      in patient-reported outcome and machine learning in imaging.
                      Last, we focus on therapy assistance, introducing tools used
                      in molecular tumor boards and techniques for
                      computer-assisted surgery. We discuss the need for metadata
                      to aggregate and analyze data sets reliably. We conclude
                      with an outlook towards a learning health care system in
                      oncology, which connects bench and bedside by employing
                      modern IT solutions.},
      subtyp        = {Review Article},
      cin          = {E240 / E260 / E230 / E130},
      ddc          = {610},
      cid          = {I:(DE-He78)E240-20160331 / I:(DE-He78)E260-20160331 /
                      I:(DE-He78)E230-20160331 / I:(DE-He78)E130-20160331},
      pnm          = {315 - Imaging and radiooncology (POF3-315)},
      pid          = {G:(DE-HGF)POF3-315},
      typ          = {PUB:(DE-HGF)16},
      pubmed       = {pmid:30439700},
      doi          = {10.1159/000493638},
      url          = {https://inrepo02.dkfz.de/record/141971},
}