Rapidly evolving technology, data and analytic landscapes are permeating many fields and professions. In public health, the need for data science skills including data literacy is particularly prominent given both the potential of novel data types and analysis methods to fill gaps in existing public health research and intervention practices, as well as the potential of such data or methods to perpetuate or augment health disparities. Through a review of public health courses and programs at the top 10 U.S. and globally ranked schools of public health, this article summarizes existing educational efforts in public health data science. These existing practices serve to inform efforts for broadening such curricula to further schools and populations. Data science ethics course offerings are also examined in context of assessing how population health principles can be blended into training across levels of data involvement to augment the traditional core of public health curricula. Parallel findings from domestic and international 'outside the classroom' training programs are also synthesized to advance approaches for increasing diversity in public health data science. Based on these program reviews and their synthesis, a four-point formula is distilled for furthering public health data science education efforts, toward development of a critical and inclusive mass of practitioners with fluency to leverage data to advance goals of public health and improve quality of life in the digital age.
翻译:在公共卫生领域,对包括数据扫盲在内的数据科学技能的需求特别突出,因为新的数据类型和分析方法有可能填补现有公共卫生研究和干预做法的差距,而且这类数据或方法有可能使健康差异永久化或扩大。通过审查美国和全球排名前10名的公共卫生学校的公共卫生课程和方案,本篇文章总结了公共卫生数据科学方面的现有教育努力。这些现行做法有助于为将这类课程扩大到更多的学校和人口的努力提供信息。数据科学伦理课程的提供也在评估如何将人口健康原则纳入各级数据参与培训以扩大传统的公共卫生课程核心内容的背景下加以审查。国内和国际“在课堂”培训方案的平行结果也得到综合,以推进提高公共卫生数据科学多样性的方法。根据这些方案的审查及其综合,为推进公共卫生数据科学教育工作,发展具有精密性和包容性的、数字质量的从业者群体,提高公共卫生数据的质量,提高公众生活质量。