Big Data, Big Knowledge: Big Data for Personalized Healthcare

@article{Viceconti2015BigDB,
  title={Big Data, Big Knowledge: Big Data for Personalized Healthcare},
  author={Marco Viceconti and Peter John Hunter and Rod D. Hose},
  journal={IEEE Journal of Biomedical and Health Informatics},
  year={2015},
  volume={19},
  pages={1209-1215}
}
The idea that the purely phenomenological knowledge that we can extract by analyzing large amounts of data can be useful in healthcare seems to contradict the desire of VPH researchers to build detailed mechanistic models for individual patients. [] Key Result These domain-specific requirements suggest a need for targeted funding, in which big data technologies for in silico medicine becomes the research priority.
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