Optimising mHealth helpdesk responsiveness in South Africa: towards automated message triage.

Published

Journal Article (Review)

In South Africa, a national-level helpdesk was established in August 2014 as a social accountability mechanism for improving governance, allowing recipients of public sector services to send complaints, compliments and questions directly to a team of National Department of Health (NDoH) staff members via text message. As demand increases, mechanisms to streamline and improve the helpdesk must be explored. This work aims to evaluate the need for and feasibility of automated message triage to improve helpdesk responsiveness to high-priority messages. Drawing from 65 768 messages submitted between October 2016 and July 2017, the quality of helpdesk message handling was evaluated via detailed inspection of (1) a random sample of 481 messages and (2) messages reporting mistreatment of women, as identified using expert-curated keywords. Automated triage was explored by training a naïve Bayes classifier to replicate message labels assigned by NDoH staff. Classifier performance was evaluated on 12 526 messages withheld from the training set. 90 of 481 (18.7%) NDoH responses were scored as suboptimal or incorrect, with median response time of 4.0 hours. 32 reports of facility-based mistreatment and 39 of partner and family violence were identified; NDoH response time and appropriateness for these messages were not superior to the random sample (P>0.05). The naïve Bayes classifier had average accuracy of 85.4%, with ≥98% specificity for infrequently appearing (<50%) labels. These results show that helpdesk handling of mistreatment of women could be improved. Keyword matching and naïve Bayes effectively identified uncommon messages of interest and could support automated triage to improve handling of high-priority messages.

Full Text

Duke Authors

Cited Authors

  • Engelhard, M; Copley, C; Watson, J; Pillay, Y; Barron, P; LeFevre, AE

Published Date

  • January 2018

Published In

Volume / Issue

  • 3 / Suppl 2

Start / End Page

  • e000567 -

PubMed ID

  • 29713508

Pubmed Central ID

  • 29713508

Electronic International Standard Serial Number (EISSN)

  • 2059-7908

International Standard Serial Number (ISSN)

  • 2059-7908

Digital Object Identifier (DOI)

  • 10.1136/bmjgh-2017-000567

Language

  • eng