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mHealth Series: Factors influencing sample size calculations for mHealth–based studies – A mixed methods study in rural China

BACKGROUND: An important issue for mHealth evaluation is the lack of information for sample size calculations. OBJECTIVE: To explore factors that influence sample size calculations for mHealth–based studies and to suggest strategies for increasing the participation rate. METHODS: We explored factors...

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Autores principales: van Velthoven, Michelle Helena, Li, Ye, Wang, Wei, Du, Xiaozhen, Chen, Li, Wu, Qiong, Majeed, Azeem, Zhang, Yanfeng, Car, Josip
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Edinburgh University Global Health Society 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3868817/
https://www.ncbi.nlm.nih.gov/pubmed/24363922
http://dx.doi.org/10.7189/jogh.03.020404
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author van Velthoven, Michelle Helena
Li, Ye
Wang, Wei
Du, Xiaozhen
Chen, Li
Wu, Qiong
Majeed, Azeem
Zhang, Yanfeng
Car, Josip
author_facet van Velthoven, Michelle Helena
Li, Ye
Wang, Wei
Du, Xiaozhen
Chen, Li
Wu, Qiong
Majeed, Azeem
Zhang, Yanfeng
Car, Josip
author_sort van Velthoven, Michelle Helena
collection PubMed
description BACKGROUND: An important issue for mHealth evaluation is the lack of information for sample size calculations. OBJECTIVE: To explore factors that influence sample size calculations for mHealth–based studies and to suggest strategies for increasing the participation rate. METHODS: We explored factors influencing recruitment and follow–up of participants (caregivers of children) in an mHealth text messaging data collection cross–over study. With help of village doctors, we recruited 1026 (25%) caregivers of children under five out of the 4170 registered. To explore factors influencing recruitment and provide recommendations for improving recruitment, we conducted semi–structured interviews with village doctors. Of the 1014 included participants, 662 (65%) responded to the first question about willingness to participate, 538 (53%) responded to the first survey question and 356 (35%) completed the text message survey. To explore factors influencing follow–up and provide recommendations for improving follow–up, we conducted interviews with participants. We added views from the researchers who were involved in the study to contextualize the findings. RESULTS: We found several factors influencing recruitment related to the following themes: experiences with recruitment, village doctors’ work, village doctors’ motivations, caregivers’ characteristics, caregivers’ motivations. Village doctors gave several recommendations for ways to recruit more caregivers and we added our views to these. We found the following factors influencing follow–up: mobile phone usage, ability to use mobile phone, problems with mobile phone, checking mobile phone, available time, paying back text message costs, study incentives, subjective norm, culture, trust, perceived usefulness of process, perceived usefulness of outcome, perceived ease of use, attitude, behavioural intention to use, and actual use. From our perspective, factors influencing follow–up were: different caregivers participating in face–to–face and text message survey, sending text messages manually, participants responding incorrectly, and technical issues. Participants provided several recommendations for improving follow–up and we added our views to these. CONCLUSIONS: This is the first study to evaluate factors influencing recruitment and follow–up of participants in an mHealth study in a middle–income setting. More work is needed to assess effectiveness of our suggested strategies. This work would improve evaluation of mHealth interventions.
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spelling pubmed-38688172013-12-20 mHealth Series: Factors influencing sample size calculations for mHealth–based studies – A mixed methods study in rural China van Velthoven, Michelle Helena Li, Ye Wang, Wei Du, Xiaozhen Chen, Li Wu, Qiong Majeed, Azeem Zhang, Yanfeng Car, Josip J Glob Health Article BACKGROUND: An important issue for mHealth evaluation is the lack of information for sample size calculations. OBJECTIVE: To explore factors that influence sample size calculations for mHealth–based studies and to suggest strategies for increasing the participation rate. METHODS: We explored factors influencing recruitment and follow–up of participants (caregivers of children) in an mHealth text messaging data collection cross–over study. With help of village doctors, we recruited 1026 (25%) caregivers of children under five out of the 4170 registered. To explore factors influencing recruitment and provide recommendations for improving recruitment, we conducted semi–structured interviews with village doctors. Of the 1014 included participants, 662 (65%) responded to the first question about willingness to participate, 538 (53%) responded to the first survey question and 356 (35%) completed the text message survey. To explore factors influencing follow–up and provide recommendations for improving follow–up, we conducted interviews with participants. We added views from the researchers who were involved in the study to contextualize the findings. RESULTS: We found several factors influencing recruitment related to the following themes: experiences with recruitment, village doctors’ work, village doctors’ motivations, caregivers’ characteristics, caregivers’ motivations. Village doctors gave several recommendations for ways to recruit more caregivers and we added our views to these. We found the following factors influencing follow–up: mobile phone usage, ability to use mobile phone, problems with mobile phone, checking mobile phone, available time, paying back text message costs, study incentives, subjective norm, culture, trust, perceived usefulness of process, perceived usefulness of outcome, perceived ease of use, attitude, behavioural intention to use, and actual use. From our perspective, factors influencing follow–up were: different caregivers participating in face–to–face and text message survey, sending text messages manually, participants responding incorrectly, and technical issues. Participants provided several recommendations for improving follow–up and we added our views to these. CONCLUSIONS: This is the first study to evaluate factors influencing recruitment and follow–up of participants in an mHealth study in a middle–income setting. More work is needed to assess effectiveness of our suggested strategies. This work would improve evaluation of mHealth interventions. Edinburgh University Global Health Society 2013-12 /pmc/articles/PMC3868817/ /pubmed/24363922 http://dx.doi.org/10.7189/jogh.03.020404 Text en Copyright © 2013 by the Journal of Global Health. All rights reserved. http://creativecommons.org/licenses/by/2.5/ This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Article
van Velthoven, Michelle Helena
Li, Ye
Wang, Wei
Du, Xiaozhen
Chen, Li
Wu, Qiong
Majeed, Azeem
Zhang, Yanfeng
Car, Josip
mHealth Series: Factors influencing sample size calculations for mHealth–based studies – A mixed methods study in rural China
title mHealth Series: Factors influencing sample size calculations for mHealth–based studies – A mixed methods study in rural China
title_full mHealth Series: Factors influencing sample size calculations for mHealth–based studies – A mixed methods study in rural China
title_fullStr mHealth Series: Factors influencing sample size calculations for mHealth–based studies – A mixed methods study in rural China
title_full_unstemmed mHealth Series: Factors influencing sample size calculations for mHealth–based studies – A mixed methods study in rural China
title_short mHealth Series: Factors influencing sample size calculations for mHealth–based studies – A mixed methods study in rural China
title_sort mhealth series: factors influencing sample size calculations for mhealth–based studies – a mixed methods study in rural china
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3868817/
https://www.ncbi.nlm.nih.gov/pubmed/24363922
http://dx.doi.org/10.7189/jogh.03.020404
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