Abstract

Bias in clinical practice, in particular in relation to race and gender, is a persistent cause of healthcare disparities. We investigated the potential of a peer-network approach to reduce bias in medical treatment decisions within an experimental setting. We created “egalitarian” information exchange networks among practicing clinicians who provided recommendations for the clinical management of patient scenarios, presented via standardized patient videos of actors portraying patients with cardiac chest pain. The videos, which were standardized for relevant clinical factors, presented either a white male actor or Black female actor of similar age, wearing the same attire and in the same clinical setting, portraying a patient with clinically significant chest pain symptoms. We found significant disparities in the treatment recommendations given to the white male patient-actor and Black female patient-actor, which when translated into real clinical scenarios would result in the Black female patient being significantly more likely to receive unsafe undertreatment, rather than the guideline-recommended treatment. In the experimental control group, clinicians who were asked to independently reflect on the standardized patient videos did not show any significant reduction in bias. However, clinicians who exchanged real-time information in structured peer networks significantly improved their clinical accuracy and showed no bias in their final recommendations. The findings indicate that clinician network interventions might be used in healthcare settings to reduce significant disparities in patient treatment.

Highlights

  • Bias in clinical practice, in particular in relation to race and gender, is a persistent cause of healthcare disparities

  • Previous experimental work demonstrated that clinicians reviewing video-based vignettes of high-risk patients with chest pain disproportionately referred men compared to women, and white patients compared to Black patients for the guideline-recommended treatment, cardiac catheterization[1,7]

  • We hypothesize that creating structured information-exchange networks among clinicians will lead to improved clinical assessments that may be effective for reducing observed patterns of race and gender bias in clinical treatment recommendations[13,14]

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Summary

Introduction

In particular in relation to race and gender, is a persistent cause of healthcare disparities. We created “egalitarian” information exchange networks among practicing clinicians who provided recommendations for the clinical management of patient scenarios, presented via standardized patient videos of actors portraying patients with cardiac chest pain. Studies of bias reduction in partisan networks[15,16] have found that this process of collective learning in egalitarian networks can effectively reduce, and even eliminate longstanding political biases in the evaluation of novel information[16] We integrate this recent work on bias reduction in egalitarian information-exchange networks with theoretical research on medical reasoning[17,18,19], which has argued that improving the accuracy of clinicians’ diagnostic assessments should improve the quality of their treatment recommendations[19,20,21]. We hypothesize that creating structured information-exchange networks among clinicians will lead to improved clinical assessments that may be effective for reducing observed patterns of race and gender bias in clinical treatment recommendations[13,14].

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