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  "notes": "Includes a list of proprietary and licensed patent applications.",
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      "text": "Data flow diagram showing health status data and epigenetic data converging into epigenetic biomarkers.",
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      "text": "FOXO Patent Applications: Risk Classifier, Biochemical State, Synthetic Probe, Machine-Learned Quality Control. Licensed Patent Applications from UCLA: GrimAge, PhenoAge, M-Panel.",
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      "text": "We use automated machine learning to find patterns of DNA methylation occurring along the epigenome that correlate to current states health and wellness. We call these identifiable patterns “epigenetic biomarkers.”",
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      "text": "(1) Results from STP1 data set, and subject to further testing and validation; FOXO Forward Looking Statement",
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