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Next-Generation Personal Genomic Studies: Extending Social Intelligence Genomics to Cognitive Performance Genomics in Quantified Creativity and Thinking Fast and Slow

机译:下一代个人基因组研究:在量化创造力和思维速度延伸社会智力基因组学以认知性能基因组学快速缓慢

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A significant shift is underway as the fields of health and biology are re-organizing into the larger ecosystems of information sciences and complexity sciences. The era of big data is transforming all economic sectors including health and biology. Three big health data streams are being integrated into a standardized investigative method in the realization of personalized medicine - creating individualized risk profiles and interventions such that medical conditions may be combatted during the 80% of their life-cycle while they are still pre-clinical. These three big health data streams are traditional medical data, 'omics' data (genomics, microbiomics, proteomics, etc.), and biometric quantified-self daily analytic data. Sequencing costs have continued to decrease such that consumer 'omics' data is increasingly available. Simultaneously, the potentially fast-arriving wearable electronics platform (smartwatches, disposable patches, augmented eyewear, etc.) means that it could become possible to unobtrusively collect vast amounts of previously-unavailable objective metric data for each individual and parlay this into personalized physical and mental health optimization platforms. Two experimental protocols are presented here putting this model of integrated health data streams into action and extending recent social intelligence genomics research into the realm of cognitive performance genomics. The DIYgenomics Quantified Creativity study investigates potential linkage between personal genomics and the creative process of the individual. The DIYgenomics Thinking Fast and Slow study examines cognitive bias in thinking (loss aversion and optimism bias) versus personal genomic profiles. The studies integrate big health data streams including traditional health data, personal genomics, quantified self-reported data, standardized questionnaires, and personalized intervention.
机译:随着卫生和生物学领域重新组织进入较大的信息科学和复杂性科学的生态系统,正在进行重大转变。大数据的时代正在改变所有经济部门,包括健康和生物学。三个大健康数据流被纳入了一个标准化的调查方法,实现了个性化医学 - 创造个性化风险概况和干预措施,使得医疗条件可能在其生命周期的80%期间进行调查,同时它们仍然是预临床。这三个大型健康数据流是传统的医疗数据,'OMICS'数据(基因组学,微生物学,蛋白质组学等),以及生物识别量化的自我分析数据。排序成本继续降低,使得消费者的OMICS数据越来越多。同时,潜在的快速到达可穿戴电子平台(Smartwatches,一次性贴片,增强眼镜等)意味着可以不引人注目地为每个个人收集大量的预先不可用的客观度量数据,并将其帕拉地纳入个性化的物理和心理健康优化平台。这里提出了两种实验协议,将这种综合健康数据流放入行动并将最近的社会智能基因组学研究扩展到认知性能基因组学的领域。 DIYGAMOMICS量化创造力研究调查个人基因组学与个人创作过程之间的潜在联系。 DiyGenomics思考快速和慢速研究审查了思维中的认知偏差(损失厌恶和乐观偏见)与个人基因组谱相关。这些研究将大型健康数据流集成,包括传统的健康数据,个人基因组学,量化的自我报告的数据,标准化问卷和个性化干预。

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