4.7 Review

Deep learning in systems medicine

期刊

BRIEFINGS IN BIOINFORMATICS
卷 22, 期 2, 页码 1543-1559

出版社

OXFORD UNIV PRESS
DOI: 10.1093/bib/bbaa237

关键词

deep learning (DL); systems medicine (SM); data integration; biomarker discovery; disease classification

资金

  1. COST (European Cooperation in Science and Technology) [CA15120]
  2. H2020 project iPC individualized Paediatric Cure [826121]
  3. Czech Ministry of Education, Youth and Sports [LTC18074]
  4. FCT-Fundacao para a Ciencia e a Tecnologia [FCT-UIDB/04028/2020]
  5. Maria de Maeztu Program for Centers and Units of Excellence in RD [MDM-2017-0711]
  6. European Research Council (ERC) under the European Union [851255]
  7. European Union Regional Development Fund (ERDF) EU Sustainable Competitiveness Programme for Northern Ireland
  8. Northern Ireland Public Health Agency (HSC RD)
  9. PHA RD Division
  10. Horizon 2020 Framework Programme of the European Union
  11. Western Health Social Care
  12. MetaPlat project - H2020 RISE programme [690998]
  13. SenseCare project - H2020 RISE programme [690862]
  14. STOP project - H2020 RISE programme [823978]

向作者/读者索取更多资源

Systems medicine utilizes deep learning to extract relevant features from complex data for improved understanding, prevention, and treatment of diseases. This review paper discusses the developments and challenges of applying deep learning in systems medicine, highlighting its importance in predictive, preventive, and precision medicine. Promising prototypical examples showcase the potential impact of incorporating deep learning in systems medicine research.
Systems medicine (SM) has emerged as a powerful tool for studying the human body at the systems level with the aim of improving our understanding, prevention and treatment of complex diseases. Being able to automatically extract relevant features needed for a given task from high-dimensional, heterogeneous data, deep learning (DL) holds great promise in this endeavour. This review paper addresses the main developments of DL algorithms and a set of general topics where DL is decisive, namely, within the SM landscape. It discusses how DL can be applied to SM with an emphasis on the applications to predictive, preventive and precision medicine. Several key challenges have been highlighted including delivering clinical impact and improving interpretability. We used some prototypical examples to highlight the relevance and significance of the adoption of DL in SM, one of them is involving the creation of a model for personalized Parkinson's disease. The review offers valuable insights and informs the research in DL and SM.

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