4.7 Article

HyperFoods: Machine intelligent mapping of cancer-beating molecules in foods

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SCIENTIFIC REPORTS
卷 9, 期 -, 页码 -

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NATURE PORTFOLIO
DOI: 10.1038/s41598-019-45349-y

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资金

  1. Vodafone Foundation
  2. Imperial NIHR Biomedical Research Center
  3. ERC [724228]
  4. European Research Council (ERC) [724228] Funding Source: European Research Council (ERC)
  5. BBSRC [BB/L020858/1] Funding Source: UKRI

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Recent data indicate that up-to 30-40% of cancers can be prevented by dietary and lifestyle measures alone. Herein, we introduce a unique network-based machine learning platform to identify putative food-based cancer-beating molecules. These have been identified through their molecular biological network commonality with clinically approved anti-cancer therapies. A machine-learning algorithm of random walks on graphs (operating within the supercomputing DreamLab platform) was used to simulate drug actions on human interactome networks to obtain genome-wide activity profiles of 1962 approved drugs (199 of which were classified as anti-cancer with their primary indications). A supervised approach was employed to predict cancer-beating molecules using these 'learned' interactome activity profiles. The validated model performance predicted anti-cancer therapeutics with classification accuracy of 84-90%. A comprehensive database of 7962 bioactive molecules within foods was fed into the model, which predicted 110 cancer-beating molecules (defined by anti-cancer drug likeness threshold of >70%) with expected capacity comparable to clinically approved anti-cancer drugs from a variety of chemical classes including flavonoids, terpenoids, and polyphenols. This in turn was used to construct a 'food map' with anti-cancer potential of each ingredient defined by the number of cancer-beating molecules found therein. Our analysis underpins the design of next-generation cancer preventative and therapeutic nutrition strategies.

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