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To cite {behaviorchange} in publications use one or more of these (whichever is or are more appropriate):
Peters G, Crutzen R, Gruijters S (2023). The behaviorchange Package: Tools for Behavior Change Researchers and Professionals. https://behaviorchange.opens.science.
Metz G, Peters GY, Crutzen R (2022). “Acyclic behavior change diagrams: a tool to report and analyze interventions.” Health Psychology and Behavioral Medicine, 10(1), 1216–1228. ISSN 2164-2850, doi:10.1080/21642850.2022.2149930, https://www.tandfonline.com/doi/full/10.1080/21642850.2022.2149930.
Crutzen R, Peters GY, Noijen J (2017). “Using Confidence Interval-Based Estimation of Relevance to select social-cognitive determinants for behaviour change interventions.” Frontiers in Public Health, 5, 165. ISSN 2296-2565, doi:10.3389/fpubh.2017.00165.
Crutzen R, Peters GY (2023). “A lean method for selecting determinants when developing behavior change interventions.” Health Psychology and Behavioral Medicine, 11(1), 2167719. ISSN 2164-2850, doi:10.1080/21642850.2023.2167719, https://www.tandfonline.com/doi/full/10.1080/21642850.2023.2167719.
Corresponding BibTeX entries:
@Manual{, title = {The {behaviorchange} Package: Tools for Behavior Change Researchers and Professionals}, author = {Gjalt-Jorn Ygram Peters and Rik Crutzen and Stefan Gruijters}, year = {2023}, url = {https://behaviorchange.opens.science}, }
@Article{metz_acyclic_2022, title = {Acyclic behavior change diagrams: a tool to report and analyze interventions}, volume = {10}, issn = {2164-2850}, shorttitle = {Acyclic behavior change diagrams}, url = {https://www.tandfonline.com/doi/full/10.1080/21642850.2022.2149930}, doi = {10.1080/21642850.2022.2149930}, language = {en}, number = {1}, urldate = {2023-03-04}, journal = {Health Psychology and Behavioral Medicine}, author = {Gido Metz and Gjalt-Jorn Ygram Peters and Rik Crutzen}, month = {dec}, year = {2022}, pages = {1216--1228}, file = {Full Text:C\:\\Users\\gjalt\\Zotero\\storage\\NE9G8PIQ\\Metz et al. - 2022 - Acyclic behavior change diagrams a tool to report.pdf:application/pdf}, }
@Article{crutzen_using_2017, title = {Using {Confidence} {Interval}-{Based} {Estimation} of {Relevance} to select social-cognitive determinants for behaviour change interventions}, volume = {5}, copyright = {All rights reserved}, issn = {2296-2565}, doi = {10.3389/fpubh.2017.00165}, abstract = {When developing an intervention aimed at behaviour change, one of the crucial steps in the development process is to select the most relevant social-cognitive determinants. These determinants can be seen as the buttons one needs to push in order to establish behaviour change. Insight into these determinants is needed to select behaviour change methods (i.e., general behaviour change techniques that are applied in an intervention) in the development process. Therefore, a study on determinants is often conducted as formative research in the intervention development process. Ideally, all relevant determinants identified in such a study are addressed by an intervention. However, when developing a behaviour change intervention, there are limits in terms of, for example, resources available for intervention development and the amount of content that participants of an intervention can be exposed to. Hence, it is important to select those determinants that are most relevant to the target behaviour as these determinants should be addressed in an intervention. The aim of the current paper is to introduce a novel approach to select the most relevant social-cognitive determinants and use them in intervention development. This approach is based on visualization of confidence intervals for the means and correlation coefficients for all determinants simultaneously. This visualization facilitates comparison, which is necessary when making selections. By means of a case study on the determinants of using a high dose of MDMA (3,4-Methylenedioxymethamphetamine, commonly known as ecstasy), we illustrate this approach. We provide a freely available tool to facilitate the analyses needed in this approach.}, journal = {Frontiers in Public Health}, author = {Rik Crutzen and Gjalt-Jorn Ygram Peters and Judith Noijen}, year = {2017}, keywords = {methods, determinants, intervention development, Determinants, behavior change, Methods, beliefs, i, based estimation of relevance, Behavior change, Beliefs, confidence interval-, Confidence Interval- Based Estimation of Relevance, Intervention development}, pages = {165}, file = {Attachment:C\:\\Users\\gjalt\\Zotero\\storage\\93PB2DIP\\Crutzen et al. (2017) CIBER (FPH).pdf:application/pdf}, }
@Article{crutzen_lean_2023, title = {A lean method for selecting determinants when developing behavior change interventions}, volume = {11}, issn = {2164-2850}, url = {https://www.tandfonline.com/doi/full/10.1080/21642850.2023.2167719}, doi = {10.1080/21642850.2023.2167719}, language = {en}, number = {1}, urldate = {2023-03-04}, journal = {Health Psychology and Behavioral Medicine}, author = {Rik Crutzen and Gjalt-Jorn Ygram Peters}, month = {dec}, year = {2023}, pages = {2167719}, file = {Full Text:C\:\\Users\\gjalt\\Zotero\\storage\\3QRK4QNT\\Crutzen and Peters - 2023 - A lean method for selecting determinants when deve.pdf:application/pdf}, }
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.