Shaina Mackin, Vincent J. Major, Rumi Chunara, Remle Newton-Dame
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引用次数: 0
摘要
当预测模型的表现在不同的社会人口阶层之间有显著差异时,就会出现算法偏差,从而加剧了系统性的医疗保健差距。纽约市健康+医院(NYC Health + Hospitals)是一个城市安全网系统,它评估了电子病历中两个二元分类模型的偏倚:一个预测哮喘急性就诊,一个预测意外再入院。我们使用平等机会差异(EOD)(一种比较假阴性率的指标)评估了不同种族/民族、性别、语言和保险的亚组表现差异。使用阈值调整来缓解最偏倚的类别(哮喘的种族/族裔,再入院的保险),调整子组阈值以最小化EOD,拒绝选项分类,按子组重新分类接近阈值的分数。成功缓解的定义为:1)绝对子组爆炸发生率降低5个百分点;2)准确性降低10%;3)警报率变化20%。阈值调整符合这些标准;拒绝选项分类没有。我们介绍了一份补充手册,概述了我们缓解低资源偏见的方法。
Identifying and mitigating algorithmic bias in the safety net
Algorithmic bias occurs when predictive model performance varies meaningfully across sociodemographic classes, exacerbating systemic healthcare disparities. NYC Health + Hospitals, an urban safety net system, assessed bias in two binary classification models in our electronic medical record: one predicting acute visits for asthma and one predicting unplanned readmissions. We evaluated differences in subgroup performance across race/ethnicity, sex, language, and insurance using equal opportunity difference (EOD), a metric comparing false negative rates. The most biased classes (race/ethnicity for asthma, insurance for readmission) were targeted for mitigation using threshold adjustment, which adjusts subgroup thresholds to minimize EOD, and reject option classification, which re-classifies scores near the threshold by subgroup. Successful mitigation was defined as 1) absolute subgroup EODs <5 percentage points, 2) accuracy reduction <10%, and 3) alert rate change <20%. Threshold adjustment met these criteria; reject option classification did not. We introduce a Supplementary Playbook outlining our approach for low-resource bias mitigation.
期刊介绍:
npj Digital Medicine is an online open-access journal that focuses on publishing peer-reviewed research in the field of digital medicine. The journal covers various aspects of digital medicine, including the application and implementation of digital and mobile technologies in clinical settings, virtual healthcare, and the use of artificial intelligence and informatics.
The primary goal of the journal is to support innovation and the advancement of healthcare through the integration of new digital and mobile technologies. When determining if a manuscript is suitable for publication, the journal considers four important criteria: novelty, clinical relevance, scientific rigor, and digital innovation.