| Literature DB >> 35641949 |
Sara Botero-Mesa1,2, Flavio Codeço Coelho3,4, Kenechukwu Nwosu5,3, Bertil Wicht3,6, Akarsh Venkatasubramanian3,7,8, Olena Wagner5,3, Camille Valera5,3, Benedict Nguimbis3,9, Daniel Câmara3,10,11, Izabel Reis3,10,11, Lucas Bianchi3,12, Morteza Mahdiani3, Papy Ansobi Onsimbie3,13, Papa Amadou Niang Diallo3,14, Léa Jacques3,15, Artur Manuel Muloliwa3,16, Moussa Bougma3,17, Leckson Mukavhi3,18, Adit Kaneria3,19, Ram Peruvemba3,20, Ajay Gupta3,20, Isotta Triulzi3,21, Ananthu James3,22, Verena Carrara5,3,23, Wingston Ngambi5,3,24, Zahra Habibi5,3, Michael Tedros Adhanom5,3, Sabina Rodriguez Velásquez5,3, Paolo Sestito5,3, Timokleia Kousil5,3, Loza Biru5,3, Daniela Vivacqua3,25, Jyoti Dalal3, Anatole Mian26, Maroussia Roelens5,3, Erol Orel5,3, Cristina Barroso Hofer3,27, Fatihiyya Wangara5,3,28, Franck Mboussou29, Tamayi Mlanda29, Arish Bukhari29, Theresa Min-Hyung Lee29, Roland Ngom29, Beat Stoll5,30, Cleophas Chimbetete3,31, Jessica Abbate3,32,33, Benido Impouma5,29, Olivia Keiser5,3.
Abstract
Emerging infectious diseases are a growing threat in sub-Saharan African countries, but the human and technical capacity to quickly respond to outbreaks remains limited. Here, we describe the experience and lessons learned from a joint project with the WHO Regional Office for Africa (WHO AFRO) to support the sub-Saharan African COVID-19 response.In June 2020, WHO AFRO contracted a number of consultants to reinforce the COVID-19 response in member states by providing actionable epidemiological analysis. Given the urgency of the situation and the magnitude of work required, we recruited a worldwide network of field experts, academics and students in the areas of public health, data science and social science to support the effort. Most analyses were performed on a merged line list of COVID-19 cases using a reverse engineering model (line listing built using data extracted from national situation reports shared by countries with the Regional Office for Africa as per the IHR (2005) obligations). The data analysis platform The Renku Project ( https://renkulab.io ) provided secure data storage and permitted collaborative coding.Over a period of 6 months, 63 contributors from 32 nations (including 17 African countries) participated in the project. A total of 45 in-depth country-specific epidemiological reports and data quality reports were prepared for 28 countries. Spatial transmission and mortality risk indices were developed for 23 countries. Text and video-based training modules were developed to integrate and mentor new members. The team also began to develop EpiGraph Hub, a web application that automates the generation of reports similar to those we created, and includes more advanced data analyses features (e.g. mathematical models, geospatial analyses) to deliver real-time, actionable results to decision-makers.Within a short period, we implemented a global collaborative approach to health data management and analyses to advance national responses to health emergencies and outbreaks. The interdisciplinary team, the hands-on training and mentoring, and the participation of local researchers were key to the success of this initiative.Entities:
Keywords: COVID-19; Data management; Health emergency; Outbreak; Pandemic; Sub-Saharan Africa
Mesh:
Year: 2022 PMID: 35641949 PMCID: PMC9152815 DOI: 10.1186/s12889-022-13327-1
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 4.135
Fig. 1Residence countries of members of the GRAPH Network. Legend: The multidisciplinary research network consists of 63 collaborators in 32 countries. Source: “File:BlankMap-World.svg.” Wikimedia Commons, the free media repository. 15 Jul 2021, 00:12 UTC. 27 Jul 2021, 12:51 https://commons.wikimedia.org/w/index.php?title=File:BlankMap-World.svg&oldid=575140996
GRAPH Network’s teams
| Team | Description |
|---|---|
15 postgraduate students, 3 universities, 15 nationalities | |
18 postgraduate students from 9 universities, 30 data scientists and programming specialists, 24 nationalities. | |
| The team of five experts from Uganda and a US-based partner institution worked on mortality and transmission risk index calculation. | |
The association Actions en Santé Publique and the head of the division of Infectious Diseases and Mathematical Modelling of the University of Geneva provided the general guidance, political representation and ultimate decision making. The coordination was supported by a project manager and three senior analysts. |
Fig. 2visual outline of the network’s workflow. Legend: The analysts’ output was provided in an Rmd-PDF, with the analysis code and high-resolution figures saved in a separate folder. This process was adapted and standardized for each country and was designed to be automated as much as possible (although some adaptations were needed for every new linelist as the formats changed frequently). Reporters (qualitative analysts) contextualized epidemiological data based on country-specific COVID-19 status whilst utilizing a standardized template
Fig. 3The EpigraphHub workflow. Legend: The EpiGraphHub application automates the production of epidemiological reports in multiple modalities
Lessons learned by the GRAPH network on data management
| Data management dimension | Lessons Learned. |
|---|---|
− Quality control at the data cleaning step is primordial to preventing downstream problems. − Quantitative evaluation and constructive feedback to data providers improves data quality. | |
− Data files should systematically be archived, and file names standardized, searchable, and dated. − Analysts need to be trained to foresee data infrastructure issues, such as how to avoid problems with large data file formats. − Clear separation between original data, cleaned data and analytical results is key for reproducibility. | |
− Data utilisation approaches must involve and be agreed to by the data provider − Studies must be designed with clear reasoning for how it serves the community from which the data originate. | |
| − Dissemination of data and/or results of analyses requires large levels of mutual trust and meaningful collaboration between the Network and the data providers. | |
− Data analysis and interpretation must be tailored to the context of each country or region’s specific situation. − Source code versioning and review are key tools for the development of correct and well documented code. |
Lessons learned by the GRAPH network on data governance
− Effective, equitable and participatory health is established through strong bonds of trust with partner countries. − Countries must be encouraged to ensure individuals are owners of their own health data. Health data needs to be a global public good, and its use in the public sphere should always consider the key role of national public health institutions. − Safety and security of data storage platforms must be prioritised to ensure respectful protection of confidential health data. − Crucial gaps around data ownership must be clarified to democratise health data: individuals must own their health data that they contribute. − The implementation of epidemiological surveillance data management tools should actively involve partner countries in all stages of the process to ensure sustainability over time, and data management autonomy. |