Journal of Statistics and Data Science Education (Jun 2024)

Increasing Interest in Data Literacy: The Quantitative Public Health Data Literacy Training Program

  • Jinal Shah,
  • Jemar R. Bather,
  • Yuyu Chen,
  • Sumedh Kaul,
  • Janice Johnson Dias,
  • Melody S. Goodman

DOI
https://doi.org/10.1080/26939169.2024.2351559

Abstract

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Due to the COVID-19 pandemic, the presentation of public health data to lay audiences has increased without most people having the knowledge to understand what these statistics mean. Recognizing that minoritized populations are deeply impacted by the pandemic and wanting to improve the racial representation in biostatistics we developed a training program aimed at increasing the data literacy of high school and college students from minoritized groups. The program introduced the basics of public health, data literacy, statistical software, descriptive statistics, and data ethics. The instructors taught eight synchronous sessions consisting of lectures and experiential group exercises. Five of the sessions were also offered asynchronously. Of the 209 students, 76% were college students; 90% identified as Black, Asian, or Latino/a/x; and the average age was 21 years. In synchronous sessions, 56% of students attended all sessions. All course sessions were rated as good/excellent by most ([Formula: see text]) students. The program recruited, engaged, and retained a large cohort ([Formula: see text]) of underrepresented students in biostatistics/data science for a virtual data literacy training. The program demonstrates the feasibility of developing and implementing public health training programs designed to increase racial and gender diversity in the field.

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