Journal article Open Access

Artificial Intelligence in Cancer Research: learning at different levels of data granularity

Cirillo, D.; Nunez-Carpintero, I.; Valencia, A.

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<oai_dc:dc xmlns:dc="" xmlns:oai_dc="" xmlns:xsi="" xsi:schemaLocation="">
  <dc:creator>Cirillo, D.</dc:creator>
  <dc:creator>Nunez-Carpintero, I.</dc:creator>
  <dc:creator>Valencia, A.</dc:creator>
  <dc:description>From genome-scale experimental studies to imaging data, behavioral footprints, and longitudinal healthcare records, the convergence of big data in cancer research and the advances in artificial intelligence is paving the way to develop a systems view of cancer. Nevertheless, this biomedical area is largely characterized by the co-existence of big data and small data resources, highlighting the need for a deeper investigation about the crosstalk between different levels of data granularity, including varied sample sizes, labels, data types, and other data descriptors. This review introduces the current challenges, limitations, and solutions of artificial intelligence in the heterogeneous landscape of data granularity in cancer research. Such a variety of cancer molecular and clinical data call for advancing the interoperability among artificial intelligence approaches, with particular emphasis on the synergy between discriminative and generative models that we discuss in this work with several examples of techniques and applications.</dc:description>
  <dc:source>FEBS Press 15(4) 817-829</dc:source>
  <dc:title>Artificial Intelligence in Cancer Research: learning at different levels of data granularity</dc:title>
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