2015
DOI: 10.1089/big.2015.0012
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Using Big Data to Understand the Human Condition: The Kavli HUMAN Project

Abstract: 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 critic… Show more

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Cited by 42 publications
(24 citation statements)
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“…This was evidenced in the recent case of COVID-19, taking only seven days for detection. In particular, advancements in computing capacity brought about by the emergence and widespread employment of such technologies like AI [18], machine learning, Big Data [19,20], and Cloud Computing have allowed massive amounts of data from various sources to be captured and analyzed in real-time and from them insightful predictions are being made. Advancements in AI-based infectious disease-surveillance algorithms and their use to aid early infectious disease detection is further noted in Figure 1 below, where a comparison between the detection time of previous infectious disease outbreaks in the past 20 years, as reported by the WHO, reveals a trend where AI-based tools have gained in efficiency.…”
Section: A Brief Survey On Infectious Disease Outbreak In a 20-year Pmentioning
confidence: 99%
“…This was evidenced in the recent case of COVID-19, taking only seven days for detection. In particular, advancements in computing capacity brought about by the emergence and widespread employment of such technologies like AI [18], machine learning, Big Data [19,20], and Cloud Computing have allowed massive amounts of data from various sources to be captured and analyzed in real-time and from them insightful predictions are being made. Advancements in AI-based infectious disease-surveillance algorithms and their use to aid early infectious disease detection is further noted in Figure 1 below, where a comparison between the detection time of previous infectious disease outbreaks in the past 20 years, as reported by the WHO, reveals a trend where AI-based tools have gained in efficiency.…”
Section: A Brief Survey On Infectious Disease Outbreak In a 20-year Pmentioning
confidence: 99%
“…For example the Kavli HUMAN Project is an effort to aggregate health-related data from 10,000 individuals in New York City containing health, education, genetics, environmental and lifestyle information that will be collected over a period of 20 years [24]. …”
Section: Introductionmentioning
confidence: 99%
“…The rapid development of the information technology and the changing decision making environment means that our findings will benefit health library and information professionals in meeting the information-intensive demands of Althebyan, Yaseen, Jararweh, and Al-Ayyoub (2016) Presents a system that aims to improve the health of patients and reduce the risk of having medical problems. They developed a cloud based monitoring system that targets a crowd of individuals in a wide geographical area and efficiently can integrate many emerging technologies such as mobile computing and wearable sensors that can offer remote monitoring of patients anytime and anywhere in a timely manner Azmak et al (2015) Introduce the Kavli HUMAN Project (KHP) which aggregated data from 2500 New York City households (roughly 10 000 individuals) whose biology and behaviour are measured using modalities such as environmental conditions, events and geographic information over 20 years. Views were offered from the database of how human health and behaviour evolve over the life cycle and why they evolve differently for different people.…”
Section: Discussionmentioning
confidence: 99%