TY - JOUR
T1 - Building new computational models to support health behavior change and maintenance
T2 - new opportunities in behavioral research
AU - Spruijt-Metz, Donna
AU - Hekler, Eric
AU - Saranummi, Niilo
AU - Intille, Stephen
AU - Korhonen, Ilkka
AU - Nilsen, Wendy
AU - Rivera, Daniel
AU - Spring, Bonnie
AU - Michie, Susan
AU - Asch, David A.
AU - Sanna, Alberto
AU - Salcedo, Vicente Traver
AU - Kukakfa, Rita
AU - Pavel, Misha
N1 - Publisher Copyright:
© 2015, Society of Behavioral Medicine.
PY - 2015/9/17
Y1 - 2015/9/17
N2 - Adverse and suboptimal health behaviors and habits are responsible for approximately 40 % of preventable deaths, in addition to their unfavorable effects on quality of life and economics. Our current understanding of human behavior is largely based on static “snapshots” of human behavior, rather than ongoing, dynamic feedback loops of behavior in response to ever-changing biological, social, personal, and environmental states. This paper first discusses how new technologies (i.e., mobile sensors, smartphones, ubiquitous computing, and cloud-enabled processing/computing) and emerging systems modeling techniques enable the development of new, dynamic, and empirical models of human behavior that could facilitate just-in-time adaptive, scalable interventions. The paper then describes concrete steps to the creation of robust dynamic mathematical models of behavior including: (1) establishing “gold standard” measures, (2) the creation of a behavioral ontology for shared language and understanding tools that both enable dynamic theorizing across disciplines, (3) the development of data sharing resources, and (4) facilitating improved sharing of mathematical models and tools to support rapid aggregation of the models. We conclude with the discussion of what might be incorporated into a “knowledge commons,” which could help to bring together these disparate activities into a unified system and structure for organizing knowledge about behavior.
AB - Adverse and suboptimal health behaviors and habits are responsible for approximately 40 % of preventable deaths, in addition to their unfavorable effects on quality of life and economics. Our current understanding of human behavior is largely based on static “snapshots” of human behavior, rather than ongoing, dynamic feedback loops of behavior in response to ever-changing biological, social, personal, and environmental states. This paper first discusses how new technologies (i.e., mobile sensors, smartphones, ubiquitous computing, and cloud-enabled processing/computing) and emerging systems modeling techniques enable the development of new, dynamic, and empirical models of human behavior that could facilitate just-in-time adaptive, scalable interventions. The paper then describes concrete steps to the creation of robust dynamic mathematical models of behavior including: (1) establishing “gold standard” measures, (2) the creation of a behavioral ontology for shared language and understanding tools that both enable dynamic theorizing across disciplines, (3) the development of data sharing resources, and (4) facilitating improved sharing of mathematical models and tools to support rapid aggregation of the models. We conclude with the discussion of what might be incorporated into a “knowledge commons,” which could help to bring together these disparate activities into a unified system and structure for organizing knowledge about behavior.
KW - Computational models of behavior
KW - Connected health
KW - Health-related behavior
KW - Just-in-time adaptive interventions
KW - Mobile health
KW - Real-time interventions
KW - mHealth
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UR - http://www.scopus.com/inward/citedby.url?scp=84939204163&partnerID=8YFLogxK
U2 - 10.1007/s13142-015-0324-1
DO - 10.1007/s13142-015-0324-1
M3 - Article
AN - SCOPUS:84939204163
SN - 1869-6716
VL - 5
SP - 335
EP - 346
JO - Translational behavioral medicine
JF - Translational behavioral medicine
IS - 3
ER -