| Literature DB >> 28336504 |
Ibukun-Oluwa Omolade Adepoju1,2, Bregje Joanna Antonia Albersen1, Vincent De Brouwere2, Jos van Roosmalen1,3, Marjolein Zweekhorst1.
Abstract
BACKGROUND: In a bid to deliver quality health services in resource-poor settings, mobile health (mHealth) is increasingly being adopted. The role of mHealth in facilitating evidence-based clinical decision-making through data collection, decision algorithms, and evidence-based guidelines, for example, is established in resource-rich settings. However, the extent to which mobile clinical decision support systems (mCDSS) have been adopted specifically in resource-poor settings such as Africa and the lessons learned about their use in such settings are yet to be established.Entities:
Keywords: clinical decision-making; decision support systems, clinical; mHealth; sub-Saharan Africa
Year: 2017 PMID: 28336504 PMCID: PMC5383806 DOI: 10.2196/mhealth.7185
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Figure 1Stepwise flow of study selection.
Overview of included studies.
| Name of intervention | Authors (Year) | Number | Study design | Country | Health domain | Target group | Type of mCDSSa |
| m4Changeb | McNabb et al (2015) [ | 1 | Quantitative pre-post study | Nigeria | Maternal health | Community health | Decision algorithms for |
| DESIRE (Decision | Vedanthan et al (2015) [ | 1 | Qualitative | Kenya | Hypertension | Nurses and | Electronic records system coupled with algorithm-based decision support with alerts and reminders. |
| CommCare | Svoronos et al (2010) [ | 1 | Qualitative and descriptive | Tanzania | Maternal health | Community health workers | Decision support protocols with reminders and |
| mPneumonia | Ginsburg et al (2015) [ | 1 | Mixed methods usability and feasibility | Ghana | Childhood | Lesser trained health care | Algorithms for managing childhood illnesses |
| Bacis (Basic Antenatal Care Information | Horner et al (2013) [ | 1 | Before and after cohort study | South Africa | Maternal health | Nurses | Electronic patient |
| TB Tech | Catalani et al (2014) [ | 1 | Mixed methods human-centered design | Kenya | Tuberculosis and HIV | Clinicians | Electronic patient records used to generate |
| txt2MEDLINE | Armstrong et al (2012) [ | 1 | Pre-post utility evaluation | Botswana | Different | Clinicians of varying cadres | Two-way short messaging service (SMS) of clinical guidelines with MEDLINE query function. |
| ALMANACH (New | Shao et al (2015a, 2015b) [ | 2 | Controlled | Tanzania | Childhood | Clinicians | Diagnostic and treatment |
| eIMCI (electronic | Mitchell et al (2012, 2013); | 3 | Mixed methods before-after cluster trial | Tanzania | Childhood | Health care | Electronic protocols for the Integrated Management of Childhood Illnesses (IMCI) for stepwise examination, diagnosis, and management. |
| Text Messaging of Malaria Guidelines | Jones et al (2012); | 3 | Cluster | Kenya | Malaria | Health | One-way text messaging on malaria management, |
| QUALMAT (Quality of Maternal and Prenatal Care) | Blank et al (2013); | 7 | Mixed methods quasi- | Tanzania; Ghana; Burkina Faso | Maternal and prenatal health | Health | Electronic decision support algorithm with data |
amCDSS: mobile clinical decision support system.
bAlthough the m4Change study also used the CommCare app, we decided to treat them as independent studies because the interventions were only similar on a technical level and not part of an integrated multicountry study.