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Using Big Data to Understand the Human Condition: The Kavli HUMAN Project

Until now, most large-scale studies of humans have either focused on very specific domains of inquiry or have relied on between-subjects approaches. While these previous studies have been invaluable for revealing important biological factors in cardiac health or social factors in retirement choices,...

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Autores principales: Azmak, Okan, Bayer, Hannah, Caplin, Andrew, Chun, Miyoung, Glimcher, Paul, Koonin, Steven, Patrinos, Aristides
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Mary Ann Liebert, Inc. 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4605457/
https://www.ncbi.nlm.nih.gov/pubmed/26487987
http://dx.doi.org/10.1089/big.2015.0012
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author Azmak, Okan
Bayer, Hannah
Caplin, Andrew
Chun, Miyoung
Glimcher, Paul
Koonin, Steven
Patrinos, Aristides
author_facet Azmak, Okan
Bayer, Hannah
Caplin, Andrew
Chun, Miyoung
Glimcher, Paul
Koonin, Steven
Patrinos, Aristides
author_sort Azmak, Okan
collection PubMed
description Until now, most large-scale studies of humans have either focused on very specific domains of inquiry or have relied on between-subjects approaches. While these previous studies have been invaluable for revealing important biological factors in cardiac health or social factors in retirement choices, no single repository contains anything like a complete record of the health, education, genetics, environmental, and lifestyle profiles of a large group of individuals at the within-subject level. This seems critical today because emerging evidence about the dynamic interplay between biology, behavior, and the environment point to a pressing need for just the kind of large-scale, long-term synoptic dataset that does not yet exist at the within-subject level. At the same time that the need for such a dataset is becoming clear, there is also growing evidence that just such a synoptic dataset may now be obtainable—at least at moderate scale—using contemporary big data approaches. To this end, we introduce the Kavli HUMAN Project (KHP), an effort to aggregate data from 2,500 New York City households in all five boroughs (roughly 10,000 individuals) whose biology and behavior will be measured using an unprecedented array of modalities over 20 years. It will also richly measure environmental conditions and events that KHP members experience using a geographic information system database of unparalleled scale, currently under construction in New York. In this manner, KHP will offer both synoptic and granular views of how human health and behavior coevolve over the life cycle and why they evolve differently for different people. In turn, we argue that this will allow for new discovery-based scientific approaches, rooted in big data analytics, to improving the health and quality of human life, particularly in urban contexts.
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spelling pubmed-46054572015-10-20 Using Big Data to Understand the Human Condition: The Kavli HUMAN Project Azmak, Okan Bayer, Hannah Caplin, Andrew Chun, Miyoung Glimcher, Paul Koonin, Steven Patrinos, Aristides Big Data Original Articles Until now, most large-scale studies of humans have either focused on very specific domains of inquiry or have relied on between-subjects approaches. While these previous studies have been invaluable for revealing important biological factors in cardiac health or social factors in retirement choices, no single repository contains anything like a complete record of the health, education, genetics, environmental, and lifestyle profiles of a large group of individuals at the within-subject level. This seems critical today because emerging evidence about the dynamic interplay between biology, behavior, and the environment point to a pressing need for just the kind of large-scale, long-term synoptic dataset that does not yet exist at the within-subject level. At the same time that the need for such a dataset is becoming clear, there is also growing evidence that just such a synoptic dataset may now be obtainable—at least at moderate scale—using contemporary big data approaches. To this end, we introduce the Kavli HUMAN Project (KHP), an effort to aggregate data from 2,500 New York City households in all five boroughs (roughly 10,000 individuals) whose biology and behavior will be measured using an unprecedented array of modalities over 20 years. It will also richly measure environmental conditions and events that KHP members experience using a geographic information system database of unparalleled scale, currently under construction in New York. In this manner, KHP will offer both synoptic and granular views of how human health and behavior coevolve over the life cycle and why they evolve differently for different people. In turn, we argue that this will allow for new discovery-based scientific approaches, rooted in big data analytics, to improving the health and quality of human life, particularly in urban contexts. Mary Ann Liebert, Inc. 2015-09-01 /pmc/articles/PMC4605457/ /pubmed/26487987 http://dx.doi.org/10.1089/big.2015.0012 Text en © Azmak et al. 2015; Published by Mary Ann Liebert, Inc. This Open Access article is distributed under the terms of the Creative Commons Attribution Noncommercial License (http://creativecommons.org/licenses/by-nc/4.0/) which permits any noncommercial use, distribution, and reproduction in any medium, provided the original author(s) and the source are credited.
spellingShingle Original Articles
Azmak, Okan
Bayer, Hannah
Caplin, Andrew
Chun, Miyoung
Glimcher, Paul
Koonin, Steven
Patrinos, Aristides
Using Big Data to Understand the Human Condition: The Kavli HUMAN Project
title Using Big Data to Understand the Human Condition: The Kavli HUMAN Project
title_full Using Big Data to Understand the Human Condition: The Kavli HUMAN Project
title_fullStr Using Big Data to Understand the Human Condition: The Kavli HUMAN Project
title_full_unstemmed Using Big Data to Understand the Human Condition: The Kavli HUMAN Project
title_short Using Big Data to Understand the Human Condition: The Kavli HUMAN Project
title_sort using big data to understand the human condition: the kavli human project
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4605457/
https://www.ncbi.nlm.nih.gov/pubmed/26487987
http://dx.doi.org/10.1089/big.2015.0012
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