Applying machine learning to predict future adherence to physical activity programs

被引:28
|
作者
Zhou, Mo [1 ]
Fukuoka, Yoshimi [2 ]
Goldberg, Ken [3 ,4 ]
Vittinghoff, Eric [5 ]
Aswani, Anil [6 ]
机构
[1] Univ Calif Berkeley, Dept Ind Engn & Operat Res, 4141 Etcheverry Hall, Berkeley, CA 94720 USA
[2] Univ Calif San Francisco, Sch Nursing, Dept Physiol Nursing, 2 Koret Way,N631, San Francisco, CA 94143 USA
[3] Univ Calif Berkeley, Dept Ind Engn & Operat Res, 425 Sutardja Dai Hall, Berkeley, CA 94720 USA
[4] Univ Calif Berkeley, Elect Engn & Comp Sci, 425 Sutardja Dai Hall, Berkeley, CA 94720 USA
[5] Univ Calif San Francisco, Sch Med, Dept Epidemiol & Biostat, 550 16th St, San Francisco, CA 94158 USA
[6] Univ Calif Berkeley, Dept Ind Engn & Operat Res, 4119 Etcheverry Hall, Berkeley, CA 94720 USA
关键词
Physical activity; Exercise relapse; Adherence; Machine learning; WEIGHT-LOSS; INTERVENTIONS; MORTALITY; THERAPY; ADULTS; TRIAL;
D O I
10.1186/s12911-019-0890-0
中图分类号
R-058 [];
学科分类号
摘要
Background: Identifying individuals who are unlikely to adhere to a physical exercise regime has potential to improve physical activity interventions. The aim of this paper is to develop and test adherence prediction models using objectively measured physical activity data in the Mobile Phone-Based Physical Activity Education program (mPED) trial. To the best of our knowledge, this is the first to apply Machine Learning methods to predict exercise relapse using accelerometer-recorded physical activity data. Methods: We use logistic regression and support vector machine methods to design two versions of a Discontinuation Prediction Score (DiPS), which uses objectively measured past data (e.g., steps and goal achievement) to provide a numerical quantity indicating the likelihood of exercise relapse in the upcoming week. The respective prediction accuracy of these two versions of DiPS are compared, and then numerical simulation is performed to explore the potential of using DiPS to selectively allocate financial incentives to participants to encourage them to increase physical activity. Results: we had access to a physical activity trial data that were continuously collected every 60 sec every day for 9 months in 210 participants. By using the first 15 weeks of data as training and test on weeks 16-30, we show that both versions of DiPS have a test AUC of 0.9 with high sensitivity and specificity in predicting the probability of exercise adherence. Simulation results assuming different intervention regimes suggest the potential benefit of using DiPS as a score to allocate resources in physical activity intervention programs in reducing costs over other allocation schemes. Conclusions: DiPS is capable of making accurate and robust predictions for future weeks. The most predictive features are steps and physical activity intensity. Furthermore, the use of DiPS scores can be a promising approach to determine when or if to provide just-in-time messages and step goal adjustments to improve compliance. Further studies on the use of DiPS in the design of physical activity promotion programs are warranted.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] Applying machine learning to predict future adherence to physical activity programs
    Mo Zhou
    Yoshimi Fukuoka
    Ken Goldberg
    Eric Vittinghoff
    Anil Aswani
    [J]. BMC Medical Informatics and Decision Making, 19
  • [2] Machine Learning Modeling For Predicting Adherence To Physical Activity Guideline
    Choe, Jupil
    Lee, Seungbak
    Kang, Minsoo
    [J]. MEDICINE & SCIENCE IN SPORTS & EXERCISE, 2024, 56 (10) : 888 - 889
  • [3] Applying Machine Learning to Predict Alaskan Ionospheric Irregularities
    Gomez, Annabel R.
    Pi, Xiaoqing
    [J]. PROCEEDINGS OF THE 34TH INTERNATIONAL TECHNICAL MEETING OF THE SATELLITE DIVISION OF THE INSTITUTE OF NAVIGATION (ION GNSS+ 2021), 2021, : 3848 - 3858
  • [4] Applying machine learning to predict reproductive condition in fish
    Flores, Andres
    Wiff, Rodrigo
    Donovan, Carl R.
    Galvez, Patricio
    [J]. ECOLOGICAL INFORMATICS, 2024, 80
  • [5] Does Adherence to a Lifestyle Physical Activity Intervention Predict Changes in Physical Activity?
    K. C. Heesch
    L. C. Mâsse
    A. L. Dunn
    R. F. Frankowski
    P. Dolan Mullen
    [J]. Journal of Behavioral Medicine, 2003, 26 : 333 - 348
  • [6] Does adherence to a lifestyle physical activity intervention predict changes in physical activity?
    Heesch, KC
    Mâsse, LC
    Dunn, AL
    Frankowski, RF
    Mullen, PD
    [J]. JOURNAL OF BEHAVIORAL MEDICINE, 2003, 26 (04) : 333 - 348
  • [7] Hypertension and adherence to physical activity programs - a sticky matter!
    Jennings, Garry L. R.
    [J]. BRITISH JOURNAL OF SPORTS MEDICINE, 2010, 44 (14) : 994 - 997
  • [8] Applying machine learning techniques to predict the properties of energetic materials
    Daniel C. Elton
    Zois Boukouvalas
    Mark S. Butrico
    Mark D. Fuge
    Peter W. Chung
    [J]. Scientific Reports, 8
  • [9] Applying Machine Learning Algorithms to Predict the Size of the Informal Economy
    Felix, Joao
    Alexandre, Michel
    Lima, Gilberto Tadeu
    [J]. COMPUTATIONAL ECONOMICS, 2024,
  • [10] Applying machine learning techniques to predict the properties of energetic materials
    Elton, Daniel C.
    Boukouvalas, Zois
    Butrico, Mark S.
    Fuge, Mark D.
    Chung, Peter W.
    [J]. SCIENTIFIC REPORTS, 2018, 8