利用大小数据了解老龄化。

Bridge (Washington, D.C. : 1969) Pub Date : 2019-01-01
Hiroko H Dodge, Deborah Estrin
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引用次数: 0

摘要

所有人在出生时都受到遗传和环境条件的独特禀赋;当他们进入最后几十年时,他们一生的分化决定了他们的健康状况以及对新事件和新条件的反应。这种累积性分化在衰老速度以及对病理损伤的抵抗力和复原力方面造成了巨大的个体内部差异。因此,采用群体平均值或中位阈值等群体常模数据往往无法准确识别和预测个体的临床状态和预后。有两种方法可以应对这种个体内部的高变异性。一种是利用由大量受试者组成的 "大数据 "来改进预测算法。另一种方法是将每个受试者作为自己的宇宙,以识别其发病前阶段的微妙变化或偏差。来自单个人的丰富时间数据--我们称之为 "小数据"--可用于个人的定制诊断、疾病管理和健康行为。要将这些数据用于病人护理、自我保健、持续独立和研究,就需要访问、处理和解释性使用个人随时间变化的综合数据流。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Making Sense of Aging with Data Big and Small.

All people are uniquely endowed at birth by genetic and environmental conditions; by the time they enter their last decades, they have a lifetime of differentiation that determines their state of health and response to new events and conditions. This cumulative differentiation creates substantial intraindividual variability in the rate of aging as well as the extent of resistance and resilience to pathological insults. Therefore, applying normative group data such as group means or median thresholds often fails to accurately identify and predict an individual's clinical state and prognosis. There are two ways to cope with this high intraindividual variability. One is to use "big data," which consists of a large number of subjects to improve the prediction algorithm. Another is to use each subject as their own universe to identify subtle changes or deviations from their premorbid stage. Rich temporal data from a single person-what we call "small data"-can be used for the individual's tailored diagnosis, disease management, and health behavior. Using such data for patient care, self-care, sustained independence, and research involves access to, processing, and interpretive use of an individual's combined data streams over time.

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