Skip to main content
Top
Published in: BMC Medical Informatics and Decision Making 1/2018

Open Access 01-12-2018 | Research article

A model for predicting utilization of mHealth interventions in low-resource settings: case of maternal and newborn care in Kenya

Authors: Stephen Mburu, Robert Oboko

Published in: BMC Medical Informatics and Decision Making | Issue 1/2018

Login to get access

Abstract

Background

In low-resource settings, there are numerous socioeconomic challenges such as poverty, inadequate facilities, shortage of skilled health workers, illiteracy and cultural barriers that contribute to high maternal and newborn deaths. To address these challenges, there are several mHealth projects particularly in Sub-Sahara Africa seeking to exploit opportunities provided by over 90% rate of mobile penetration. However, most of these interventions have failed to justify their value proposition to inspire utilization in low-resource settings.

Methods

This study proposes a theoretical model named Technology, Individual, Process-Fit (TIPFit) suitable for user-centred evaluation of intervention designs to predict utilization of mHealth products in low-resource settings. To investigate the predictive power of TIPFit model, we operationalized its latent constructs into variables used to predict utilization of an mHealth prototype called mamacare. The study employed single-group repeated measures quasi-experiment in which a random sample of 79 antenatal and postnatal patients were recruited from a rural hospital. During the study conducted between May and October 2014, the treatment involved sending and receiving SMS alerts on vital signs, appointments, safe delivery, danger signs, nutrition, preventive care and adherence to medication.

Results

Measurements taken during the study were cleaned and coded for analysis using statistical models like Partial Least Squares (PLS), Repeated Measures Analysis of Variance (RM-ANOVA), and Bonferroni tests. After analyzing 73 pretest responses, the model predicted 80.2% fit, and 63.9% likelihood of utilization. However, results obtained from initial post-test taken after three months demonstrated 69.1% fit, and utilization of 50.5%. The variation between prediction and the actual outcome necessitated improvement of mamacare based on feedback obtained from users. Three months later, we conducted the second post-test that recorded further drop in fit from 69.1 to 60.3% but utilization marginally improved from 50.5 to 53.7%.

Conclusions

Despite variations between the pretest and post-test outcomes, the study demonstrates that predictive approach to user-centred design offers greater flexibility in aligning design attributes of an mHealth intervention to fulfill user needs and expectations. These findings provide a unique contribution for decision makers because it is possible to prioritize investments among competing digital health projects.
Appendix
Available only for authorised users
Literature
1.
go back to reference Njoroge M, et al. Assessing the feasibility of eHealth and mHealth: a systematic review and analysis of initiatives implemented in Kenya. Medical Informatics and Decision Making. 2017;10(90):1–11. Njoroge M, et al. Assessing the feasibility of eHealth and mHealth: a systematic review and analysis of initiatives implemented in Kenya. Medical Informatics and Decision Making. 2017;10(90):1–11.
2.
go back to reference Omachonu VK, Einspruch NG. Innovation in healthcare delivery systems: a conceptual framework. The Innovation Journal: The Public Sector Innovation Journal. 2010;15(2):1–20. Omachonu VK, Einspruch NG. Innovation in healthcare delivery systems: a conceptual framework. The Innovation Journal: The Public Sector Innovation Journal. 2010;15(2):1–20.
3.
go back to reference Breen G, Matusitz J. An evolutionary examination of telemedicine: a health and computer-mediated communication. Perspective Soc Work Public Health. 2010;25:59–71.CrossRefPubMed Breen G, Matusitz J. An evolutionary examination of telemedicine: a health and computer-mediated communication. Perspective Soc Work Public Health. 2010;25:59–71.CrossRefPubMed
4.
go back to reference WHO: mHealth New horizons for health through mobile technologies: second global survey on eHealth 2011. WHO: mHealth New horizons for health through mobile technologies: second global survey on eHealth 2011.
5.
go back to reference Mechael P, et al. Barriers and gaps affecting mHealth in low and middle income countries: Policy White Paper. Columbia: Academic: Center for Global Health and economic development earth institute; 2010. Mechael P, et al. Barriers and gaps affecting mHealth in low and middle income countries: Policy White Paper. Columbia: Academic: Center for Global Health and economic development earth institute; 2010.
6.
go back to reference Yu P, Wu MX, Yu H, Xiao GQ. The challenges for the adoption of m-health. Shanghai: IEEE Int. Conf. on Service Operations and Logistics and Informatics; 2006. p. 181–6. Yu P, Wu MX, Yu H, Xiao GQ. The challenges for the adoption of m-health. Shanghai: IEEE Int. Conf. on Service Operations and Logistics and Informatics; 2006. p. 181–6.
7.
go back to reference International Telecommunication Union (ITU): Mobile eHealth for developing countries. ITU-telecommunication development bureau 2010. International Telecommunication Union (ITU): Mobile eHealth for developing countries. ITU-telecommunication development bureau 2010.
8.
go back to reference WHO, ITU. eHealth and innovation in women’s and children’s health: a baseline review: based on the findings of the 2013 survey of CoIA countries by the WHO global observatory for eHealth. Geneva; 2014. WHO, ITU. eHealth and innovation in women’s and children’s health: a baseline review: based on the findings of the 2013 survey of CoIA countries by the WHO global observatory for eHealth. Geneva; 2014.
9.
go back to reference Breen G, Wan TTH, Ortiz J. Information technology adoption in rural health clinics: a theoretical analysis. Journal of Information Technology Impact. 2010;10(1):1–14. Breen G, Wan TTH, Ortiz J. Information technology adoption in rural health clinics: a theoretical analysis. Journal of Information Technology Impact. 2010;10(1):1–14.
10.
go back to reference Huang, et al. Effects of and satisfaction with short message service reminders for patient medication adherence: a randomized controlled study. BMC Med Inform Decis Mak. 2013;13:127.CrossRefPubMedPubMedCentral Huang, et al. Effects of and satisfaction with short message service reminders for patient medication adherence: a randomized controlled study. BMC Med Inform Decis Mak. 2013;13:127.CrossRefPubMedPubMedCentral
11.
go back to reference Mburu S. Application of structural equation modelling to predict acceptance and use of mHealth interventions at the design stage. Journal of Health Informatics in Developing Countries. 2017;11:1–17.CrossRef Mburu S. Application of structural equation modelling to predict acceptance and use of mHealth interventions at the design stage. Journal of Health Informatics in Developing Countries. 2017;11:1–17.CrossRef
12.
go back to reference Omary Z, Lupiana D, Mtenzi F, Wu B. Analysis of the challenges affecting E-healthcare adoption in developing countries: a case of Tanzania. International Journal of Information Studies. 2010;2:38–50. Omary Z, Lupiana D, Mtenzi F, Wu B. Analysis of the challenges affecting E-healthcare adoption in developing countries: a case of Tanzania. International Journal of Information Studies. 2010;2:38–50.
13.
go back to reference Mburu S, Franz E, Springer T. A conceptual framework for designing mHealth solutions for developing countries. In: in MobileHealth Proceedings of the 3rd ACM MobiHoc workshop on Pervasive wireless healthcare; 2013. p. 31–6.CrossRef Mburu S, Franz E, Springer T. A conceptual framework for designing mHealth solutions for developing countries. In: in MobileHealth Proceedings of the 3rd ACM MobiHoc workshop on Pervasive wireless healthcare; 2013. p. 31–6.CrossRef
14.
go back to reference Davis FD, Venkatesh V. Toward pre-prototype user acceptance testing of new information systems: implications for software Project Management. IEEE Trans on Engineering Management. 2004;51:31–46.CrossRef Davis FD, Venkatesh V. Toward pre-prototype user acceptance testing of new information systems: implications for software Project Management. IEEE Trans on Engineering Management. 2004;51:31–46.CrossRef
15.
go back to reference Bhattacherjee A, Premkumar G. Understanding changes in belief and attitude toward information technology usage: a theoretical model and longitudinal test. MIS Q. 2004;28(2):229–54.CrossRef Bhattacherjee A, Premkumar G. Understanding changes in belief and attitude toward information technology usage: a theoretical model and longitudinal test. MIS Q. 2004;28(2):229–54.CrossRef
16.
go back to reference Ajzen I. The theory of planned behavior. Organ Behav Hum Decis Process. 1999;50:179–211.CrossRef Ajzen I. The theory of planned behavior. Organ Behav Hum Decis Process. 1999;50:179–211.CrossRef
17.
go back to reference Davis FD. Perceived usefulness, perceived ease of use, and user acceptance of information technology. MIS Q. 1989;13:319–40.CrossRef Davis FD. Perceived usefulness, perceived ease of use, and user acceptance of information technology. MIS Q. 1989;13:319–40.CrossRef
18.
go back to reference Overby EM. Process virtualization theory and the impact of information technology. Organ Sci. 2008;19:277–91.CrossRef Overby EM. Process virtualization theory and the impact of information technology. Organ Sci. 2008;19:277–91.CrossRef
19.
go back to reference Goodhue DL, Thompson RL. Task-technology fit and individual performance. MIS Q. 1995;19:213–36.CrossRef Goodhue DL, Thompson RL. Task-technology fit and individual performance. MIS Q. 1995;19:213–36.CrossRef
20.
go back to reference Compeau DR, Higgins CR. Computer self-efficacy: development of measure and initial test. MIS Q. 1995;19:189–211.CrossRef Compeau DR, Higgins CR. Computer self-efficacy: development of measure and initial test. MIS Q. 1995;19:189–211.CrossRef
21.
go back to reference Strong DM, Dishaw MT, Bandy DB. Extending task technology fit with computer self-efficacy. The DATA BASE for Advances in Information Systems. 2006;37(2 & 3):96–107.CrossRef Strong DM, Dishaw MT, Bandy DB. Extending task technology fit with computer self-efficacy. The DATA BASE for Advances in Information Systems. 2006;37(2 & 3):96–107.CrossRef
22.
go back to reference Overby EM, Konsynski B. Task-technology fit and process virtualization theory: an integrated model and empirical test. Res Pap. 2010:10–96. Overby EM, Konsynski B. Task-technology fit and process virtualization theory: an integrated model and empirical test. Res Pap. 2010:10–96.
23.
go back to reference United Nations. Progress towards the sustainable development goals. Economic and Social Council. 2016:5–7. United Nations. Progress towards the sustainable development goals. Economic and Social Council. 2016:5–7.
24.
25.
go back to reference Hevner AR, March ST, Park J, Ram S. Design science in information systems research. MIS Q. 2004;28:75–105.CrossRef Hevner AR, March ST, Park J, Ram S. Design science in information systems research. MIS Q. 2004;28:75–105.CrossRef
26.
go back to reference Armitage CJ, Conner M. Efficacy of the theory of planned behaviour: a meta-analytic review. Br J Soc Psychol. 2001;40:471–99.CrossRefPubMed Armitage CJ, Conner M. Efficacy of the theory of planned behaviour: a meta-analytic review. Br J Soc Psychol. 2001;40:471–99.CrossRefPubMed
27.
go back to reference Hagger MS, Chatzisarantis NLD, Biddle SJH. A meta-analytic review of theories of reasoned action and planned behavior in physical activity: predictive validity and contribution of additional variables. J Sport Exerc Psychol. 2002;24:3–32.CrossRef Hagger MS, Chatzisarantis NLD, Biddle SJH. A meta-analytic review of theories of reasoned action and planned behavior in physical activity: predictive validity and contribution of additional variables. J Sport Exerc Psychol. 2002;24:3–32.CrossRef
28.
go back to reference Overby EN, Slaughter SA, Konsynski B. The design, use, and consequences of virtual processes. Information Systems Research, INFORMS. 2010;21:700–10.CrossRef Overby EN, Slaughter SA, Konsynski B. The design, use, and consequences of virtual processes. Information Systems Research, INFORMS. 2010;21:700–10.CrossRef
29.
go back to reference Oluoch T, Katana A, Ssempijja V, et al. Electronic medical record systems are associated with appropriate placement of HIV patients on antiretroviral therapy in rural health facilities in Kenya: a retrospective pre-post study. J Am Med Inform Assoc. 2014;21:1009–14.CrossRefPubMedPubMedCentral Oluoch T, Katana A, Ssempijja V, et al. Electronic medical record systems are associated with appropriate placement of HIV patients on antiretroviral therapy in rural health facilities in Kenya: a retrospective pre-post study. J Am Med Inform Assoc. 2014;21:1009–14.CrossRefPubMedPubMedCentral
30.
go back to reference Ammenwerth E, Iller C, Mahler C. IT-adoption and the interaction of task, technology and individuals: a fit framework and case study. BMC Med Inform Decis Mak. 2006;6(3):1–13. Ammenwerth E, Iller C, Mahler C. IT-adoption and the interaction of task, technology and individuals: a fit framework and case study. BMC Med Inform Decis Mak. 2006;6(3):1–13.
31.
go back to reference Yusof MM, Kuljis J, Papazafeiropoulou A, Stergioulas LK. An evaluation framework for health information systems: human, organization and technology fit factors (HOT-fit). Int J Med Inform. 2008;77:386–98.CrossRefPubMed Yusof MM, Kuljis J, Papazafeiropoulou A, Stergioulas LK. An evaluation framework for health information systems: human, organization and technology fit factors (HOT-fit). Int J Med Inform. 2008;77:386–98.CrossRefPubMed
32.
go back to reference Becker MH, Maiman LA, Kirscht JP, Haefner DP, Drachman RH. The health belief model and prediction of dietary compliance: a field experiment. J Health Soc Behav. 1977;18:348–66.CrossRefPubMed Becker MH, Maiman LA, Kirscht JP, Haefner DP, Drachman RH. The health belief model and prediction of dietary compliance: a field experiment. J Health Soc Behav. 1977;18:348–66.CrossRefPubMed
33.
go back to reference Henseler J, Ringle CM, Sinkovics RR. The use of partial least squares in international marketing. New Challenges to International Marketing, Advances in Int Marketing. 2009;20:277–319. Henseler J, Ringle CM, Sinkovics RR. The use of partial least squares in international marketing. New Challenges to International Marketing, Advances in Int Marketing. 2009;20:277–319.
34.
go back to reference Fornell C, Larcker DF. Evaluating structural equation models with unobservable variables and measurement error. J Mark Res. 1981;18:39–50.CrossRef Fornell C, Larcker DF. Evaluating structural equation models with unobservable variables and measurement error. J Mark Res. 1981;18:39–50.CrossRef
35.
go back to reference Bagozzi RP, Yi Y. On the evaluation of structural equation models. Acad Market Sci J Acad Mark Sci. 1998;16:74–94.CrossRef Bagozzi RP, Yi Y. On the evaluation of structural equation models. Acad Market Sci J Acad Mark Sci. 1998;16:74–94.CrossRef
36.
go back to reference Wong KK. Partial least squares structural equation modeling (PLS-SEM) techniques using SmartPLS, Marketing Bulletin. Technical Note. 2013:1. Wong KK. Partial least squares structural equation modeling (PLS-SEM) techniques using SmartPLS, Marketing Bulletin. Technical Note. 2013:1.
37.
go back to reference Goodhue DL, et al. PLS, Small Sample Size, and Statistical Power. Proceedings of the 39th Int. Conf. on System Sciences, Hawaii: MIS Research; 2006. p. 1–10. Goodhue DL, et al. PLS, Small Sample Size, and Statistical Power. Proceedings of the 39th Int. Conf. on System Sciences, Hawaii: MIS Research; 2006. p. 1–10.
38.
go back to reference Chin WW, Newsted PR. Structural Equation Modelling analysis with Small Samples using Partial Least Squares, Statistical Strategies for Small Sample Research, Sage Publications; 1999. p. 307–41. Chin WW, Newsted PR. Structural Equation Modelling analysis with Small Samples using Partial Least Squares, Statistical Strategies for Small Sample Research, Sage Publications; 1999. p. 307–41.
39.
go back to reference Cohen J. Quantitative methods in psychology: a power primer. American Psychological Association Bulletin. 1992;112:155–9.CrossRef Cohen J. Quantitative methods in psychology: a power primer. American Psychological Association Bulletin. 1992;112:155–9.CrossRef
40.
go back to reference DeLone WH, McLean ER. The DeLone and Mclean model of information system success: a ten-year update. J Manag Inf Syst. 2003;19(4):9–30.CrossRef DeLone WH, McLean ER. The DeLone and Mclean model of information system success: a ten-year update. J Manag Inf Syst. 2003;19(4):9–30.CrossRef
Metadata
Title
A model for predicting utilization of mHealth interventions in low-resource settings: case of maternal and newborn care in Kenya
Authors
Stephen Mburu
Robert Oboko
Publication date
01-12-2018
Publisher
BioMed Central
Published in
BMC Medical Informatics and Decision Making / Issue 1/2018
Electronic ISSN: 1472-6947
DOI
https://doi.org/10.1186/s12911-018-0649-z

Other articles of this Issue 1/2018

BMC Medical Informatics and Decision Making 1/2018 Go to the issue