mHealth Interventions

Team members

Faculty
Susan Murphy (Harvard)
James M. Rehg (Georgia Tech)
Inbal Nahum-Shani (Michigan)
Mustafa al'Absi (Minnesota)
Santosh Kumar (Memphis)
Gregory Abowd (Georgia Tech)
Ida Sim (UC-San Francisco)
Bonnie Spring (Northwestern)

Students
Peng Liao (Michigan)
Walter Dempsey (Harvard)



Just-in-Time-Adaptive Interventions

jitai3

Just-in-Time Adaptive Interventions (JITAIs) are mHealth technologies that aim to deliver the right intervention components at the right times and locations to optimally support individuals’ health behaviors.

These interventions are adapted to the dynamics of a person’s “emotional, social, physical and contextual state, so as to prevent negative outcomes and promote the adoption and maintenance of healthy behaviors.” [1]

JITAIs are designed to help people make the right decision “in the moment” so that they have an impact in the near future. Because the development of mHealth technologies is progressing at a faster pace than the science to evaluate their efficacy and validity, new methods need to be developed to test these technologies. mHealth researchers have been using a micro-randomized trial design to test the effects of JITAIs. [2]

MD2K software uses three apps for interventions: Mood Surfing and Thought Shakeup, developed internally, and Head Space, which is commercially available. Mood Surfing is to guide one's mind away from negative thoughts; Thought Shakeup is designed to help the user reframe negative thoughts that may contribute to stress, and Head Space offers modules that help regulate stress.

 

[1] Nahum-Shani, S., Smith, S. N., Tewari, A., Witkiewitz, K., Collins, L. M., Spring, B., & Murphy, S. A. (2014). Just-in-Time adaptive interventions (JITAIs): An organizing framework for ongoing health behavior support. (Technical Report No. 14-126). University Park, PA: The Methodology Center, Penn State.

[2] P. Liao; P. Klasnja; A. Tewari; S.A. Murphy: Micro-Randomized Trials in mHealth. In: Statistics in Medicine, 2015.


Publications

  1. Bo-Jhang Ho, Bharathan Balaji, Mehmet Koseoglu and Mani Srivastava.
    Nurture: Notifying Users at the Right Time Using Reinforcement Learning. In Proceedings of the 2018 ACM International Joint Conference and 2018 International Symposium on Pervasive and Ubiquitous Computing and Wearable Computers. 2018, 1194–1201. URL, DOI BibTeX

  2. Mashfiqui Rabbi, Meredith Philyaw-Kotov, Jinseok Lee, Anthony Mansour, Laura Dent, Xiaolei Wang, Rebecca Cunningham, Erin Bonar, Inbal Nahum-Shani, Predrag Klasnja, Maureen Walton and Susan Murphy.
    SARA: A Mobile App to Engage Users in Health Data Collection. In Proceedings of the 2017 ACM International Joint Conference on Pervasive and Ubiquitous Computing and Proceedings of the 2017 ACM International Symposium on Wearable Computers. 2017, 781–789. URL, DOI BibTeX

  3. Blake Wagner III, Elaine Liu, Steven D Shaw, Gleb Iakovlev, Linlu Zhou, Christina Harrington, Gregory Abowd, Carolyn Yoon, Santosh Kumar, Susan Murphy, Bonnie Spring and Inbal Nahum-Shani.
    Ewrapper: Operationalizing Engagement Strategies in mHealth. In Proceedings of the 2017 ACM International Joint Conference on Pervasive and Ubiquitous Computing and Proceedings of the 2017 ACM International Symposium on Wearable Computers. 2017, 790–798. URL, DOI BibTeX

  4. Walter H Dempsey, Alexander Moreno, Christy K Scott, Michael L Dennis, David H Gustafson, Susan A Murphy and James M Rehg.
    iSurvive: An Interpretable, Event-time Prediction Model for mHealth. In Doina Precup and Yee Whye Teh (eds.). Proceedings of the 34th International Conference on Machine Learning 70. 2017, 970–979. URL, DOI BibTeX

  5. Daniel Almirall, Charlotte DiStefano, Ya-Chih Chang, Stephanie Shire, Ann Kaiser, Xi Lu, Inbal Nahum-Shani, Rebecca Landa, Pamela Mathy and Connie Kasari.
    Longitudinal Effects of Adaptive Interventions With a Speech-Generating Device in Minimally Verbal Children With ASD.. Journal of clinical child and adolescent psychology : the official journal for the Society of Clinical Child and Adolescent Psychology, American Psychological Association, Division 53 45:442-56, 2016. BibTeX

  6. Inbal Nahum-Shani, Ashkan Ertefaie, Xi Lu, Kevin G Lynch, James R McKay, David Oslin and Daniel Almirall.
    A SMART Data Analysis Method for Constructing Adaptive Treatment Strategies for Substance Use Disorders. Addiction, pages n/a–n/a, 2016. URL, DOI BibTeX

  7. Kevin Patrick, Eric B Hekler, Deborah Estrin, David C Mohr, Heleen Riper, David Crane, Job Godino and William T Riley.
    The Pace of Technologic Change: Implications for Digital Health Behavior Intervention Research. American Journal of Preventive Medicine 51(5):816 - 824, 2016. URL, DOI BibTeX

  8. Lucy Yardley, Bonnie J Spring, Heleen Riper, Leanne Morrisonand David G H Crane, Kristina Curtis, Gina C Merchant, Felix Naughton and Ann Blandford.
    Understanding and promoting effective engagement with digital behavior change interventions. American Journal of Preventive Medicine 51(5):833–842, 2016. URL BibTeX

  9. Inbal Nahum-Shani, Shawna N Smith, Bonnie J Spring, Linda M Collins, Katie Witkiewitz, Ambuj Tewari and Susan A Murphy.
    Just-in-Time Adaptive Interventions (JITAIs) in Mobile Health: Key Components and Design Principles for Ongoing Health Behavior Support. Annals of Behavioral Medicine, pages 1–17, 2016. URL, DOI BibTeX

  10. Korkut Bekiroglu, Constantino Lagoa, Susan A Murphy and Stephanie T Lanza.
    Control Engineering Methods for the Design of Robust Behavioral Treatments. IEEE Transactions on Control Systems Technology PP(99):1-12, 2016. URL, DOI BibTeX

  11. Audrey Boruvka, Daniel Almirall, Katie Witkiewitz and Susan A Murphy.
    Assessing Time-Varying Causal Effect Moderation in Mobile Health. arXiv preprint arXiv:1601.00237, 2016. URL BibTeX

  12. C Yang, J P Maher and D E Conroy.
    Implementation of Behavior Change Techniques in Mobile Applications for Physical Activity.. American Journal of Preventive Medicine, 2015. URL, DOI BibTeX

  13. M Rabbi, A Pfammatter, M Zhang, B Spring and T Choudhury.
    Automated Personalized Feedback for Physical Activity and Dietary Behavior Change With Mobile Phones: A Randomized Controlled Trial on Adults. Journal of Medical Internet Research 3(2):e42, 2015. URL, DOI BibTeX

  14. P Klasnja, E B Hekler, S Shiffman, A Boruvka, D Almirall, A Tewari and S A Murphy.
    Micro-randomized trials: An experimental design for developing just-in-time adaptive interventions. Health Psychology 34 (suppl):1220-1228, 2015. URL, DOI BibTeX

  15. Kristina Wilson, Ibrahim Senay, Marta Durantini, Flor Sánchez, Michael Hennessyand Bonnie Spring and Doloroes Albarracín.
    When it comes to lifestyle recommendations, more is sometimes less. Psychological Bulletin 141(2):474-509, 2015. URL, DOI BibTeX

  16. C A Pellegrini, A F Pfammatter, D E Conroy and B Spring.
    Smartphone applications to support weight loss: current perspectives. Journal of Advanced Healthcare Technologies July 2015(1):13-22, 2015. URL BibTeX

  17. Bonnie Spring, Abby C King, Sherry L Pagoto, Linda Van Horn and Jeffery D Fisher.
    Fostering multiple healthy lifestyle behaviors for primary prevention of cancer. American Psychologist 70(2):75-90, 2015. URL, DOI BibTeX

  18. P Liao, P Klasnja, A Tewari and S A Murphy.
    Micro-Randomized Trials in mHealth. Statistics in Medicine, 2015. URL BibTeX

  19. Donna Spruijt-Metz, Eric Hekler, Niilo Saranummi, Stephen Intille, Ilkka Korhonen, Wendy Nilsen, Daniel E Rivera, Bonnie Spring, Susan Michie, David A Asch, Alberto Sanna, Vicente Traver Salcedo, Rita Kukakfa and Misha Pavel.
    Building new computational models to support health behavior change and maintenance: new opportunities in behavioral research. Translational Behavioral Medicine 5(3):335-346, 2015. URL, DOI BibTeX

  20. Peng Liao, Predrag Klasnja, Ambuj Tewari and Susan A Murphy.
    Sample Size Calculations for Micro-randomized Trials in mHealth. Statistics in Medicine 35(12):1944-1971, 2015. URL, DOI BibTeX

  21. H Sarker, M Sharmin, A A Ali, M M Rahman, R Bari, S M Hossain and S Kuma.
    Assessing the Availability of Users to Engage in Just-in-time Intervention in the Natural Environment. In Proceedings of the 2014 ACM International Joint Conference on Pervasive and Ubiquitous Computing. 2014, 909–920. URL, DOI BibTeX

 

 

 

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