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Showing 1–8 of 8 results
Advanced filters: Author: Sophia M. Schüssler-Fiorenza Rose Clear advanced filters
  • Personalized omics profiling can lead to actionable health discoveries and stimulate lifestyle changes.

    • Sophia Miryam Schüssler-Fiorenza Rose
    • Kévin Contrepois
    • Michael P. Snyder
    Research
    Nature Medicine
    Volume: 25, P: 792-804
  • Bahmani, Cha, Alavi, Dixit et al. evaluate an AI-facilitated precision medicine learning platform they built, Stanford Data Ocean. The platform, which provided 3594 costfree certification accesses across 93 countries, demonstrates positive training outcomes across bioinformatics topics for low and middle income learners.

    • Amir Bahmani
    • Kexin Cha
    • Michael Snyder
    ResearchOpen Access
    Communications Medicine
    Volume: 5, P: 1-15
  • Seasonal patterns of molecular markers in humans have not been extensively studied. Here, the authors combine host components (transcriptome, metabolome, proteome, immunome, clinical lab tests) and microbiome to profile 105 individuals, identifying over 1000 markers in two major seasonal patterns.

    • M. Reza Sailani
    • Ahmed A. Metwally
    • Michael P. Snyder
    ResearchOpen Access
    Nature Communications
    Volume: 11, P: 1-12
  • A wealth of gene expression data is publicly available, yet is little use without additional human curation. Ma’ayan and colleagues report a crowdsourcing project involving over 70 participants to annotate and analyse thousands of human disease-related gene expression datasets.

    • Zichen Wang
    • Caroline D. Monteiro
    • Avi Ma’ayan
    ResearchOpen Access
    Nature Communications
    Volume: 7, P: 1-11
  • Deep profiling of transcriptomes, metabolomes, cytokines, and proteomes, alongside changes in the microbiome, in samples from individuals with and without prediabetes reveal insights into inter-individual variability and associations between changes in the microbiome and other factors.

    • Wenyu Zhou
    • M. Reza Sailani
    • Michael Snyder
    ResearchOpen Access
    Nature
    Volume: 569, P: 663-671