» Articles » PMID: 30994099

Development and Initial Validation of a Frontline Health Worker MHealth Assessment Platform (MEDSINC) for Children 2-60 Months of Age

Abstract

Approximately 3 million children younger than 5 years living in low- and middle-income countries (LMICs) die each year from treatable clinical conditions such as pneumonia, dehydration secondary to diarrhea, and malaria. A majority of these deaths could be prevented with early clinical assessments and appropriate therapeutic intervention. In this study, we describe the development and initial validation testing of a mobile health (mHealth) platform, MEDSINC, designed for frontline health workers (FLWs) to perform clinical risk assessments of children aged 2-60 months. MEDSINC is a web browser-based clinical severity assessment, triage, treatment, and follow-up recommendation platform developed with physician-based Bayesian pattern recognition logic. Initial validation, usability, and acceptability testing were performed on 861 children aged between 2 and 60 months by 49 FLWs in Burkina Faso, Ecuador, and Bangladesh. MEDSINC-based clinical assessments by FLWs were independently and blindly correlated with clinical assessments by 22 local health-care professionals (LHPs). Results demonstrate that clinical assessments by FLWs using MEDSINC had a specificity correlation between 84% and 99% to LHPs, except for two outlier assessments (63% and 75%) at one study site, in which local survey prevalence data indicated that MEDSINC outperformed LHPs. In addition, MEDSINC triage recommendation distributions were highly correlated with those of LHPs, whereas usability and feasibility responses from LHP/FLW were collectively positive for ease of use, learning, and job performance. These results indicate that the MEDSINC platform could significantly increase pediatric health-care capacity in LMICs by improving FLWs' ability to accurately assess health status and triage of children, facilitating early life-saving therapeutic interventions.

Citing Articles

Adherence to integrated management of childhood illness (IMCI) guidelines by community health workers in Kano State, Nigeria through use of a clinical decision support (CDS) platform.

McLaughlin M, Metiboba L, Giwa A, Femi-Ojo O, Ravi N, Mahmoud N BMC Health Serv Res. 2024; 24(1):953.

PMID: 39164647 PMC: 11337650. DOI: 10.1186/s12913-024-11245-z.


Development and Validation of Manually Modified and Supervised Machine Learning Clinical Assessment Algorithms for Malaria in Nigerian Children.

McLaughlin M, Pelle K, Scarpino S, Giwa A, Mount-Finette E, Haidar N Front Artif Intell. 2022; 4:554017.

PMID: 35187469 PMC: 8851346. DOI: 10.3389/frai.2021.554017.


Performance of five pulse oximeters to detect hypoxaemia as an indicator of severe illness in children under five by frontline health workers in low resource settings - A prospective, multicentre, single-blinded, trial in Cambodia, Ethiopia, South....

Baker K, Petzold M, Mucunguzi A, Wharton-Smith A, Dantzer E, Habte T EClinicalMedicine. 2021; 38:101040.

PMID: 34368660 PMC: 8326731. DOI: 10.1016/j.eclinm.2021.101040.


The effects of mobile health on emergency care in low- and middle-income countries: A systematic review and narrative synthesis.

Winders W, Garbern S, Bills C, Relan P, Schultz M, Trehan I J Glob Health. 2021; 11:04023.

PMID: 33828846 PMC: 8021077. DOI: 10.7189/jogh.11.04023.


Community health worker-based mobile health (mHealth) approaches for improving management and caregiver knowledge of common childhood infections: A systematic review.

Mahmood H, McKinstry B, Luz S, Fairhurst K, Nasim S, Hazir T J Glob Health. 2021; 10(2):020438.

PMID: 33437462 PMC: 7774026. DOI: 10.7189/jogh.10.020438.


References
1.
Mitchell M, Hedt-Gauthier B, Msellemu D, Nkaka M, Lesh N . Using electronic technology to improve clinical care - results from a before-after cluster trial to evaluate assessment and classification of sick children according to Integrated Management of Childhood Illness (IMCI) protocol in Tanzania. BMC Med Inform Decis Mak. 2013; 13:95. PMC: 3766002. DOI: 10.1186/1472-6947-13-95. View

2.
Lee S, Nurmatov U, Nwaru B, Mukherjee M, Grant L, Pagliari C . Effectiveness of mHealth interventions for maternal, newborn and child health in low- and middle-income countries: Systematic review and meta-analysis. J Glob Health. 2015; 6(1):010401. PMC: 4643860. DOI: 10.7189/jogh.06.010401. View

3.
Gwet K . Computing inter-rater reliability and its variance in the presence of high agreement. Br J Math Stat Psychol. 2008; 61(Pt 1):29-48. DOI: 10.1348/000711006X126600. View

4.
Wongpakaran N, Wongpakaran T, Wedding D, Gwet K . A comparison of Cohen's Kappa and Gwet's AC1 when calculating inter-rater reliability coefficients: a study conducted with personality disorder samples. BMC Med Res Methodol. 2013; 13:61. PMC: 3643869. DOI: 10.1186/1471-2288-13-61. View

5.
Davalos M, Samuels K, Meyer A, Thammasitboon S, Sur M, Roy K . Finding Diagnostic Errors in Children Admitted to the PICU. Pediatr Crit Care Med. 2017; 18(3):265-271. DOI: 10.1097/PCC.0000000000001059. View