Although prediction models for delirium, a commonly occurring condition during general hospitalization or post-surgery, have not gained huge popularity, their algorithmic bias evaluation is crucial due to the existing association between social determinants of health and delirium risk. In this context, using MIMIC-III and another academic hospital dataset, we present some initial experimental evidence showing how sociodemographic features such as sex and race can impact the model performance across subgroups. With this work, our intent is to initiate a discussion about the intersectionality effects of old age, race and socioeconomic factors on the early-stage detection and prevention of delirium using ML.
翻译:虽然在普通住院或外科手术期间常见的痢疾的预测模型尚未获得极大流行,但由于健康和痢疾风险的社会决定因素之间存在联系,它们的算法偏差评价至关重要,在这方面,我们利用MIMIC-III和另一个学术医院数据集,提出一些初步实验性证据,表明性别和种族等社会人口特征如何影响模型在各分组的性能。通过这项工作,我们打算开始讨论老年、种族和社会经济因素对利用ML早期发现和预防痢疾的交叉性影响。