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A wellness study of 108 individuals using personal dense dynamicdata clouds

机译:使用个人的密集的动态的对108个人的健康研究数据云

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摘要

We collected personal, dense, dynamic data for 108 individuals over 9 months, including whole genome sequence; clinical tests, metabolomes, proteomes and microbiomes at three time points; and daily activity tracking. Using these data we generated a correlation network and identified communities of related analytes that were associated with physiology and disease. We demonstrate how connectivity within these communities identified known and candidate biomarkers, e.g. gamma-glutamyltyrosine was densely interconnected with clinical analytes for cardiometabolic disease. We calculated polygenic scores from GWAS for 127 traits and diseases, and identified molecular correlates of polygenic risk, e.g. genetic risk for inflammatory bowel disease was negatively correlated with plasma cystine. Finally, behavioral coaching informed by personalized data helped participants improve clinical biomarkers. Personal, dense, dynamic data clouds will improve understanding of health and disease, especially for early transition states. This approach to “scientific wellness” represents an opportunity largely missing in contemporary health care.
机译:我们在9个月内收集了108位个体的密集,动态数据,包括整个基因组序列;在三个时间点进行临床测试,代谢组,蛋白质组和微生物组;和日常活动跟踪。使用这些数据,我们生成了一个相关网络,并确定了与生理和疾病相关的相关分析物的群落。我们展示了这些社区中的连通性如何识别已知和候选生物标志物,例如γ-谷氨酰酪氨酸与心脏代谢疾病的临床分析物紧密相连。我们从GWAS计算了127个性状和疾病的多基因分数,并确定了多基因风险的分子相关性,例如炎症性肠病的遗传风险与血浆胱氨酸呈负相关。最后,由个性化数据提供的行为指导可帮助参与者改善临床生物标志物。个人,密集,动态的数据云将增进对健康和疾病的了解,尤其是对于早期过渡状态。这种“科学健康”的方法代表了当代医疗保健中大量缺少的机会。

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