Boylan Sally, Kiosia Agklinta, Retford Matthew, Marques Larissa Pruner, Bueno Flávia Thedim Costa, Islam Md Saimul, Wozencraft Anne
Health Data Research UK (HDR UK), HDR Global Programme, London, United Kingdom.
Division of Diabetes, Endocrinology and Metabolism, Imperial College London, London, United Kingdom.
Front Public Health. 2025 Mar 28;13:1523873. doi: 10.3389/fpubh.2025.1523873. eCollection 2025.
Data science approaches have been pivotal in addressing public health challenges. However, there has been limited focus on identifying essential data science skills for health researchers, gaps in capacity building provision, barriers to access, and potential solutions.
This review aims to identify essential data science skills for health researchers and key stakeholders in Africa, Asia, and Latin America and the Caribbean (LAC), as well as to explore gaps and barriers in data science capacity building and share potential solutions, including any regional variations.
An online survey was conducted in English, French, Spanish and Portuguese, gathering both quantitative and qualitative responses. Descriptive analysis was performed in R V4.3, and a thematic workshop approach facilitated qualitative analysis.
From 262 responses from individuals across 54 low- and middle-income countries (LMICs), representing various institutions and roles, we summarised essential data science skills globally and by region. Thematic analysis revealed key gaps and barriers in capacity building, including limited training resources, lack of mentoring, challenges with data quality, infrastructure and privacy issues, and the absence of a conducive research environment.
Respondents' consensus on essential data science skills suggests the need for a standardised framework for capacity building, adaptable to regional contexts. Greater investment, coupled with expanded collaboration and networking, would help address gaps and barriers, fostering a robust data science ecosystem and advancing insights into global health challenges.
数据科学方法在应对公共卫生挑战方面发挥了关键作用。然而,对于确定卫生研究人员所需的基本数据科学技能、能力建设提供方面的差距、获取障碍以及潜在解决方案的关注有限。
本综述旨在确定非洲、亚洲、拉丁美洲和加勒比地区(LAC)的卫生研究人员和关键利益相关者所需的基本数据科学技能,并探讨数据科学能力建设中的差距和障碍,分享潜在解决方案,包括任何区域差异。
以英语、法语、西班牙语和葡萄牙语进行了一项在线调查,收集定量和定性回复。在R V4.3中进行描述性分析,并采用主题研讨会方法促进定性分析。
从来自54个低收入和中等收入国家(LMICs)的262份个人回复中,这些回复代表了各种机构和角色,我们总结了全球和各区域所需的基本数据科学技能。主题分析揭示了能力建设中的关键差距和障碍,包括培训资源有限、缺乏指导、数据质量、基础设施和隐私问题方面的挑战,以及缺乏有利的研究环境。
受访者对基本数据科学技能的共识表明需要一个适应区域情况的能力建设标准化框架。加大投资,再加上扩大合作与网络,将有助于解决差距和障碍,培育强大的数据科学生态系统,并推动对全球卫生挑战的深入了解。