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Human microbiome aging clocks based on deep learning and tandem of permutation feature importance and accumulated local effects

View ORCID ProfileFedor Galkin, View ORCID ProfileAleksandr Aliper, View ORCID ProfileEvgeny Putin, Igor Kuznetsov, View ORCID ProfileVadim N. Gladyshev, View ORCID ProfileAlex Zhavoronkov
doi: https://doi.org/10.1101/507780
Fedor Galkin
1Insilico Medicine, Rockville, Maryland 20850, USA
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Aleksandr Aliper
1Insilico Medicine, Rockville, Maryland 20850, USA
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Evgeny Putin
1Insilico Medicine, Rockville, Maryland 20850, USA
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Igor Kuznetsov
1Insilico Medicine, Rockville, Maryland 20850, USA
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Vadim N. Gladyshev
2Division of Genetics, Department of Medicine, Brigham and Women’s Hospital, Harvard Medical School, Boston, MA 02115, USA
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Alex Zhavoronkov
1Insilico Medicine, Rockville, Maryland 20850, USA
3Buck Institute for Research on Aging, Novato, CA, USA
4Biogerontology Research Foundation, London, UK
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Abstract The human gut microbiome is a complex ecosystem that both affects and is affected by its host status. Previous analyses of gut microflora revealed associations between specific microbes and host health and disease status, genotype and diet. Here, we developed a method of predicting biological age of the host based on the microbiological profiles of gut microbiota using a curated dataset of 1,165 healthy individuals (3,663 microbiome samples). Our predictive model, a human microbiome clock, has an architecture of a deep neural network and achieves the accuracy of 3.94 years mean absolute error in cross-validation. The performance of the deep microbiome clock was also evaluated on several additional populations. We further introduce a platform for biological interpretation of individual microbial features used in age models, which relies on permutation feature importance and accumulated local effects. This approach has allowed us to define two lists of 95 intestinal biomarkers of human aging. We further show that this list can be reduced to 39 taxa that convey the most information on their host’s aging. Overall, we show that (a) microbiological profiles can be used to predict human age; and (b) microbial features selected by models are age-related.

  • List of abbreviations

    ALE
    Accumulated local effect
    BMU
    Best matching unit
    DFS
    Deep feature selection
    DNN
    Deep neural network
    IBD
    Inflammatory bowel diseases
    IBS
    Irritable bowel syndrome
    LE
    Local effect
    MAE
    Mean absolute error
    OUT
    Operational taxonomic unit
    PFI
    Permutation feature importance
    SCFA
    Short chain fatty acids
    SOM
    Self-organizing maps
    WGS
    Whole genome shotgun [sequencing]
    XGB
    Gradient boosting (XGBoost Python implementation)
  • Copyright 
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    Posted December 28, 2018.
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    Human microbiome aging clocks based on deep learning and tandem of permutation feature importance and accumulated local effects
    Fedor Galkin, Aleksandr Aliper, Evgeny Putin, Igor Kuznetsov, Vadim N. Gladyshev, Alex Zhavoronkov
    bioRxiv 507780; doi: https://doi.org/10.1101/507780
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    Human microbiome aging clocks based on deep learning and tandem of permutation feature importance and accumulated local effects
    Fedor Galkin, Aleksandr Aliper, Evgeny Putin, Igor Kuznetsov, Vadim N. Gladyshev, Alex Zhavoronkov
    bioRxiv 507780; doi: https://doi.org/10.1101/507780

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