Literature DB >> 19745474

Using reality mining to improve public health and medicine.

Alex Pentland1, David Lazer, Devon Brewer, Tracy Heibeck.   

Abstract

We live our lives in digital networks. We wake up in the morning, check our e-mail, make a quick phone call, commute to work, buy lunch. Many of these transactions leave digital breadcrumbs--tiny records of our daily experiences. Reality mining, which pulls together these crumbs using statistical analysis and machine learning methods, offers an increasingly comprehensive picture of our lives, both individually and collectively, with the potential of transforming our understanding of ourselves, our organizations, and our society in a fashion that was barely conceivable just a few years ago. It is for this reason that reality mining was recently identified by Technology Review as one of "10 emerging technologies that could change the world". Many everyday devices provide the raw database upon which reality mining builds; sensors in mobile phones, cars, security cameras, RFID ('smart card') readers, and others, all allow for the measurement of human physical and social activity. Computational models based on such data have the potential to dramatically transform the arenas of both individual and community health. Reality mining can provide new opportunities with respect to diagnosis, patient and treatment monitoring, health services planning, surveillance of disease and risk factors, and public health investigation and disease control. Currently, the single most important source of reality mining data is the ubiquitous mobile phone. Every time a person uses a mobile phone, a few bits of information are left behind. The phone pings the nearest mobile-phone towers, revealing its location. The mobile phone service provider records the duration of the call and the number dialed. In the near future, mobile phones and other technologies will collect even more information about their users, recording everything from their physical activity to their conversational cadences. While such data pose a potential threat to individual privacy, they also offer great potential value both to individuals and communities. With the aid of data-mining algorithms, these data could shed light on individual patterns of behavior and even on the well-being of communities, creating new ways to improve public health and medicine. To illustrate, consider two examples of how reality mining may benefit individual health care. By taking advantage of special sensors in mobile phones, such as the microphone or the accelerometers built into newer devices such as Apple's iPhone, important diagnostic data can be captured. Clinical pilot data demonstrate that it may be possible to diagnose depression from the way a person talks--a depressed person tends to speak more slowly, a change that speech analysis software on a phone might recognize more readily than friends or family do. Similarly, monitoring a phone's motion sensors can also reveal small changes in gait, which could be an early indicator of ailments such as Parkinson's disease. Within the next few years reality mining will become more common, thanks in part to the proliferation and increasing sophistication of mobile phones. Many handheld devices now have the processing power of low-end desktop computers, and they can also collect more varied data, due to components such as GPS chips that track location. The Chief Technology Officer of EMC, a large digital storage company, estimates that this sort of personal sensor data will balloon from 10% of all stored information to 90% within the next decade. While the promise of reality mining is great, the idea of collecting so much personal information naturally raises many questions about privacy. It is crucial that behavior-logging technology not be forced on anyone. But legal statutes are lagging behind data collection capabilities, making it particularly important to begin discussing how the technology will and should be used. Therefore, an additional focus of this chapter will be the development of a legal and ethical framework concerning the data used by reality mining techniques.

Entities:  

Mesh:

Year:  2009        PMID: 19745474

Source DB:  PubMed          Journal:  Stud Health Technol Inform        ISSN: 0926-9630


  18 in total

1.  Exposome informatics: considerations for the design of future biomedical research information systems.

Authors:  Fernando Martin Sanchez; Kathleen Gray; Riccardo Bellazzi; Guillermo Lopez-Campos
Journal:  J Am Med Inform Assoc       Date:  2013-11-01       Impact factor: 4.497

2.  The potential of sensor-based monitoring as a tool for health care, health promotion, and research.

Authors:  Kevin G Stanley; Nathaniel D Osgood
Journal:  Ann Fam Med       Date:  2011 Jul-Aug       Impact factor: 5.166

3.  Twelve modern digital technologies that are transforming decision making for diabetes and all areas of health care.

Authors:  David C Klonoff
Journal:  J Diabetes Sci Technol       Date:  2013-03-01

4.  Integrated electronic platforms for weight loss.

Authors:  Shelly K McCrady-Spitzer; James A Levine
Journal:  Expert Rev Med Devices       Date:  2010-03       Impact factor: 3.166

5.  "You need to get them where they feel it": Conflicting Perspectives on How to Maximize the Structure of Text-Message Psychological Interventions for Adolescents.

Authors:  Megan L Ranney; Margaret Thorsen; John V Patena; Rebecca M Cunningham; Edward W Boyer; Maureen A Walton; Anthony Spirito; Douglas F Zatzick; Kathleen Morrow
Journal:  Proc Annu Hawaii Int Conf Syst Sci       Date:  2015-01

6.  Transforming Scientific Inquiry: Tapping Into Digital Data by Building a Culture of Transparency and Consent.

Authors:  Robert J Smith; David Grande; Raina M Merchant
Journal:  Acad Med       Date:  2016-04       Impact factor: 6.893

7.  The application of digital health to the assessment and treatment of substance use disorders: The past, current, and future role of the National Drug Abuse Treatment Clinical Trials Network.

Authors:  Lisa A Marsch; Aimee Campbell; Cynthia Campbell; Ching-Hua Chen; Emre Ertin; Udi Ghitza; Chantal Lambert-Harris; Saeed Hassanpour; August F Holtyn; Yih-Ing Hser; Petra Jacobs; Jeffrey D Klausner; Shea Lemley; David Kotz; Andrea Meier; Bethany McLeman; Jennifer McNeely; Varun Mishra; Larissa Mooney; Edward Nunes; Chrysovalantis Stafylis; Catherine Stanger; Elizabeth Saunders; Geetha Subramaniam; Sean Young
Journal:  J Subst Abuse Treat       Date:  2020-03

8.  Feasibility of a large cohort study in sub-Saharan Africa assessed through a four-country study.

Authors:  Shona Dalal; Michelle D Holmes; Carien Laurence; Francis Bajunirwe; David Guwatudde; Marina Njelekela; Clement Adebamowo; Joan Nankya-Mutyoba; Faraja S Chiwanga; Jimmy Volmink; Ikeoluwapo Ajayi; Robert Kalyesubula; Todd G Reid; Douglas Dockery; David Hemenway; Hans-Olov Adami
Journal:  Glob Health Action       Date:  2015-05-25       Impact factor: 2.640

9.  "Right time, right place" health communication on Twitter: value and accuracy of location information.

Authors:  Scott H Burton; Kesler W Tanner; Christophe G Giraud-Carrier; Joshua H West; Michael D Barnes
Journal:  J Med Internet Res       Date:  2012-11-15       Impact factor: 5.428

10.  Big Data in Biology and Medicine: Based on material from a joint workshop with representatives of the international Data-Enabled Life Science Alliance, July 4, 2013, Moscow, Russia.

Authors:  O P Trifonova; V A Il'in; E V Kolker; A V Lisitsa
Journal:  Acta Naturae       Date:  2013-07       Impact factor: 1.845

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