The Gender of Biomedical Data: Challenges for Personalised and Precision Medicine

被引:3
|
作者
Pot, Mirjam [1 ]
Spahl, Wanda [1 ]
Prainsack, Barbara [1 ,2 ]
机构
[1] Univ Vienna, Dept Polit Sci, Vienna, Austria
[2] Kings Coll London, Dept Global Hlth & Social Med, London, England
关键词
personalised medicine; precision medicine; gender; big data; health information; digital health; bias; CLINICAL-TRIALS; CHRONIC PAIN; HEALTH; CARE; WOMEN; BARRIERS; BIAS; DISCRIMINATION; EXPERIENCES; POPULATION;
D O I
10.3366/soma.2019.0278
中图分类号
C [社会科学总论];
学科分类号
03 ; 0303 ;
摘要
Biomedical data, both in 'traditional', analogue forms as well as in the form of digital, 'big' data, are contingent social products. They reflect the categories and practices that structure our societies. We illustrate this by discussing gender biases in data stemming from clinical trials and electronic health records (EHR) and consider how biomedical data are prone to bias in different phases of data work, from data capture and representation to category building and analysis to using outputs. We argue that developments such as 'Personalised' and 'Precision Medicine' that have been made possible by 'big data' analyses could be seen as a shift away from the male 'standard patient' by trying to comprehensively and objectively represent many different aspects of patients' lives and bodies. At the same time, the very promises of comprehensiveness and objectivity are problematic: The data generated and collected, as well as the infrastructures and analytic tools used to do this, reflect the social realities - including the injustices and inequities - within which they were developed. The knowledge created on the basis of this 'evidence' can thus perpetuate existing biases. While we do not subscribe to a view of the world that considers truly objective, neutral, and - in this sense - 'unbiased' knowledge possible or even desirable, we suggest a number of ways in which gender bias in biomedical data should be made visible, reflected upon, and in certain instances acted upon.
引用
收藏
页码:170 / 187
页数:18
相关论文
共 50 条
  • [1] Is Precision Medicine different from Personalised Medicine? A Biomedical informatics perspective
    Lopez-Campos, Guillermo H.
    Lopez-Alonso, Victoria
    Martin-Sanchez, Fernando
    INTEGRATING INFORMATION TECHNOLOGY AND MANAGEMENT FOR QUALITY OF CARE, 2014, 202 : 20 - 23
  • [2] Personalised medicine challenges: quality of data
    Cruz-Correia R.
    Ferreira D.
    Bacelar G.
    Marques P.
    Maranhão P.
    International Journal of Data Science and Analytics, 2018, 6 (3) : 251 - 259
  • [3] Data, data everywhere: the challenges of personalised medicine
    Armstrong, Stephen
    BMJ-BRITISH MEDICAL JOURNAL, 2017, 359
  • [4] Biomedical Big Data Technologies, Applications, and Challenges for Precision Medicine: A Review
    Yang, Xue
    Huang, Kexin
    Yang, Dewei
    Zhao, Weiling
    Zhou, Xiaobo
    GLOBAL CHALLENGES, 2024, 8 (01)
  • [5] A Review of the Challenges of Using Biomedical Big Data for Economic Evaluations of Precision Medicine
    Fahr, Patrick
    Buchanan, James
    Wordsworth, Sarah
    APPLIED HEALTH ECONOMICS AND HEALTH POLICY, 2019, 17 (04) : 443 - 452
  • [6] A Review of the Challenges of Using Biomedical Big Data for Economic Evaluations of Precision Medicine
    Patrick Fahr
    James Buchanan
    Sarah Wordsworth
    Applied Health Economics and Health Policy, 2019, 17 : 443 - 452
  • [7] Precision Medicine and Personalised Healthcare in Psychiatry
    Tracy, Derek K.
    BRITISH JOURNAL OF PSYCHIATRY, 2022, 221 (01) : A27 - A27
  • [8] CAPTIVATION BY PRECISION MEDICINE Medicine is the ultimate personalised technology
    Fitzgerald, Rebecca C.
    Sasieni, Peter
    BMJ-BRITISH MEDICAL JOURNAL, 2017, 357
  • [9] Biomedical imaging informatics in the era of precision medicine: progress, challenges, and opportunities
    Hsu, William
    Markey, Mia K.
    Wang, May D.
    JOURNAL OF THE AMERICAN MEDICAL INFORMATICS ASSOCIATION, 2013, 20 (06) : 1010 - 1013
  • [10] Big data and precision medicine: challenges and strategies with healthcare data
    Kraus J.M.
    Lausser L.
    Kuhn P.
    Jobst F.
    Bock M.
    Halanke C.
    Hummel M.
    Heuschmann P.
    Kestler H.A.
    International Journal of Data Science and Analytics, 2018, 6 (3) : 241 - 249