| Literature DB >> 35006088 |
Ahmed Shaikh1, Abhishek Bhatia2,3, Ghanshyam Yadav4, Shashwat Hora5, Chung Won6, Mark Shankar7, Aaron Heerboth3, Prakash Vemulapalli8, Paresh Navalkar9, Kunal Oswal10, Clay Heaton3, Sujata Saunik11,12, Tarun Khanna13, Satchit Balsari3,14,15.
Abstract
In the wake of the COVID-19 pandemic, digital health tools have been deployed by governments around the world to advance clinical and population health objectives. Few interventions have been successful or have achieved sustainability or scale. In India, government agencies are proposing sweeping changes to India's digital health architecture. Underpinning these initiatives is the assumption that mobile health solutions will find near universal acceptance and uptake, though the observed reticence of clinicians to use electronic health records suggests otherwise. In this practice article, we describe our experience with implementing a digital surveillance tool at a large mass gathering, attended by nearly 30 million people. Deployed with limited resources and in a dynamic chaotic setting, the adherence to human-centered design principles resulted in near universal adoption and high end-user satisfaction. Through this use case, we share generalizable lessons in the importance of contextual relevance, stakeholder participation, customizability, and rapid iteration, while designing digital health tools for individuals or populations. ©Ahmed Shaikh, Abhishek Bhatia, Ghanshyam Yadav, Shashwat Hora, Chung Won, Mark Shankar, Aaron Heerboth, Prakash Vemulapalli, Paresh Navalkar, Kunal Oswal, Clay Heaton, Sujata Saunik, Tarun Khanna, Satchit Balsari. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 10.01.2022.Entities:
Keywords: design; digital health; human centered design; intervention; mHealth; syndromic surveillance
Mesh:
Year: 2022 PMID: 35006088 PMCID: PMC8787658 DOI: 10.2196/27952
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Workflow at the 2015 Kumbh Mela clinics prior to the intervention. OPD: outpatient department.
Figure 2Understanding the layout, context, and disease surveillance needs from public health officials at the start of the Mela.
Figure 3An initial mockup of the proposed EMcounter tool, minimizing data entry requirements for providers at the Mela while reducing errors in reporting for real-time epidemiological surveillance.
Figure 4The OPD paper with structured sections and tailored response options, abbreviated from the free-text OPD sheet provided preintervention to providers at the Mela. OPD: outpatient department.
Figure 5A pre-Mela site visit revealing that some clinics would be held in spaces with thick stone walls, precluding cellular service for real-time reporting of collected data.
Figure 6The EMCounter kit provided to each clinical team with labeled tablets, power supply, instructions for troubleshooting, and contact information of designated support team members.
Figure 7Core team member Dr John Won introduces the 2015 digital surveillance effort.
Figure 8A volunteer medical student from the troubleshooting team visits a tent clinic at the Mela as part of daily in-person check-ins to maintain data quality and debug any issues with the tool.
Figure 9Core team members Dr Ahmed Shaikh and Dr Shashwat Hora interpret the real-time epidemiological data presented on dashboards, along with public health officials in Nashik.
Comparison of EMcounter at the Kumbh Mela, implemented in 2015, with the World Health Organization’s Digital Implementation Investment Guide Checklist, released in 2020.
| World Health Organization’s Digital Implementation Investment Guide | Correlation | Comment |
| Design with the user | High | Co-created with end users |
| Understand the existing ecosystem | High | Embedded team members |
| Design for scale | High | Light back-end and low-footprint technology used |
| Build for sustainability | Low | Poor buy-in from some stakeholders; lack of interoperability standards would hamper integration |
| Be data driven | High | Statistically sound analytics |
| Use open standards, open data, open source, and open innovation | Medium | Interoperability standards not adopted |
| Reuse and improve | High | Built on innovations in a prior Mela |
| Address privacy and security | High | Data anonymized at source |
| Be collaborative | High | Multidisciplinary international team |