2022
DOI: 10.48550/arxiv.2203.08227
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Sex Trouble: Common pitfalls in incorporating sex/gender in medical machine learning and how to avoid them

Kendra Albert,
Maggie Delano

Abstract: False assumptions about sex and gender are deeply embedded in the medical system, including that they are binary, static, and concordant. Machine learning researchers must understand the nature of these assumptions in order to avoid perpetuating them. In this perspectives piece, we identify three common mistakes that researchers make when dealing with sex/gender data: "sex confusion", the failure to identity what sex in a dataset does or doesn't mean; "sex obsession", the belief that sex, specifically sex assi… Show more

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