Racial underrepresentation in dermatological datasets leads to biased machine learning models and inequitable healthcare.

Journal of biomed research Pub Date : 2022-01-01
Giona Kleinberg, Michael J Diaz, Sai Batchu, Brandon Lucke-Wold
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Abstract

Objective: Clinical applications of machine learning are promising as a tool to improve patient outcomes through assisting diagnoses, treatment, and analyzing risk factors for screening. Possible clinical applications are especially prominent in dermatology as many diseases and conditions present visually. This allows a machine learning model to analyze and diagnose conditions using patient images and data from electronic health records (EHRs) after training on clinical datasets but could also introduce bias. Despite promising applications, artificial intelligence has the capacity to exacerbate existing demographic disparities in healthcare if models are trained on biased datasets.

Methods: Through systematic literature review of available literature, we highlight the extent of bias present in clinical datasets as well as the implications it could have on healthcare if not addressed.

Results: We find the implications are worsened in dermatological models. Despite the severity and complexity of melanoma and other dermatological diseases as well as differing disease presentations based on skin-color, many imaging datasets underrepresent certain demographic groups causing machine learning models to train on images of primarily fair-skinned individuals leaving minorities behind.

Conclusion: In order to address this disparity, research first needs to be done investigating the extent of the bias present and the implications it may have on equitable healthcare.

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皮肤病数据集中的种族代表性不足会导致机器学习模型的偏差和医疗保健的不公平。
目的:机器学习在临床上的应用前景广阔,它是一种通过辅助诊断、治疗和分析筛查风险因素来改善患者治疗效果的工具。可能的临床应用在皮肤科尤为突出,因为许多疾病和病症都是通过视觉呈现的。这样,机器学习模型就可以在临床数据集上进行训练后,利用患者图像和电子健康记录(EHR)中的数据来分析和诊断病情,但也可能带来偏差。尽管人工智能的应用前景广阔,但如果模型是在有偏见的数据集上训练出来的,就有可能加剧医疗保健领域现有的人口差异:方法:通过对现有文献进行系统的文献综述,我们强调了临床数据集中存在的偏差程度,以及如果不加以解决,可能对医疗保健产生的影响:结果:我们发现在皮肤病模型中,这种影响更加严重。尽管黑色素瘤和其他皮肤病的严重性和复杂性以及基于肤色的疾病表现各不相同,但许多成像数据集对某些人口群体的代表性不足,导致机器学习模型主要在皮肤白皙的人的图像上进行训练,而将少数群体排除在外:为了解决这一差异,首先需要开展研究,调查存在偏差的程度及其可能对公平医疗产生的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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