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Bias in clinical algorithms make health disparities worse

When doctors make diagnoses and recommend treatments for patients, they believe they are giving people of all races and ethnicities equal treatment. But because of bias that exists in many clinical algorithms, doctors are unintentionally giving people of color worse treatment, write the authors of a recent article in the New England Journal of Medicine.

A clinical algorithm is a fancy term for a flow chart that doctors use to help them diagnose patients and make treatment decisions based on patient risk (see the image below for an example of an algorithm).

A deprescribing algorithm for benzodiazepines and sleep aids. Source: https://www.deprescribingnetwork.ca/algorithms

In the NEJM piece, Dr. Darshali Vyas at Massachusetts General Hospital, Dr. Leo Eisenstein at NYU Langone Hospital, and Dr. David Jones at Harvard Medical School show how, through these clinical algorithms, race has been “subtly inserted” into the decisions that doctors make, often without them realizing.

Adjustments to algorithms based on race “risk baking inequity into the system.”

Here are some examples of how clinical algorithms incorporate race in ways that exacerbate health disparities, as outlined by Vyas et al.:

For most of these algorithms, there is no evidence to support including race in the algorithm. But even if race does correlate with clinical outcomes, does that mean it should be included? No, because differences in clinical outcomes based on racial group are usually due to social factors, not genetic ones.

“The racial differences found in large data sets most likely often reflect effects of racism,” the authors write. “In such cases, race adjustment would do nothing to address the cause of the disparity. Instead, if adjustments deter clinicians from offering clinical services to certain patients, they risk baking inequity into the system.”

Calling out and questioning racial adjustments in “evidence-based” clinical algorithms is an important step toward reducing health disparities.

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