Biology of Sex Differences (Nov 2024)

Reconsidering tools for measuring gender dimensions in biomedical research

  • Rosemary Morgan,
  • Anna Yin,
  • Anna Kalbarczyk,
  • Janna R. Shapiro,
  • Patrick J. Shea,
  • Helen Kuo,
  • Carmen H. Rodriguez,
  • Erica N. Rosser,
  • Andrew Pekosz,
  • Sean X. Leng,
  • Sabra L. Klein

DOI
https://doi.org/10.1186/s13293-024-00663-7
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 7

Abstract

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Abstract Sex and gender play important roles in contributing to disease and health outcomes and represent essential, but often overlooked, measures in biomedical research. The context-specific, multifaceted, and relational nature of gender norms, roles, and relations (i.e., gender dimensions) make their incorporation into biomedical research challenging. Gender scores—measures of gender dimensions—can help researchers incorporate gender into quantitative methodologies. These measures enable researchers to quantify the gendered dimensions of interest using data collected from survey respondents. To highlight the complexities of using gender scores within biomedical research, we used the application of the Bem Sex Role Inventory (BSRI) scale, a commonly used gender score, to explore gender differences in adverse events to the influenza vaccine among older adults (75+). Within this paper, we focus on the findings from our longitudinal gender score data collected over three influenza seasons (2019-20, 2020-21, and 2021-22), irrespective of adverse event data, to provide commentary on the reliability of gender scores, such as the BSRI, and the complexities of their application. Of the 162 total study participants included within the study, 69 were enrolled in all three consecutive seasons and 35 participants were enrolled in two consecutive seasons. The majority of participants had a different gender score in at least one of the years, demonstrating the nuances and fluidity of gender identity. Interpretations of BSRI data (or other gender score data) when measured against outcome data must, therefore, be time and context specific, as results are unlikely to be replicated across years.

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