Benefiting from the digitization of healthcare data and the development of computing power, machine learning methods are increasingly used in the healthcare domain. Fairness problems have been identified in machine learning for healthcare, resulting in an unfair allocation of limited healthcare resources or excessive health risks for certain groups. Therefore, addressing the fairness problems has recently attracted increasing attention from the healthcare community. However, the intersection of machine learning for healthcare and fairness in machine learning remains understudied. In this review, we build the bridge by exposing fairness problems, summarizing possible biases, sorting out mitigation methods and pointing out challenges along with opportunities for the future.
翻译:从保健数据数字化和计算机能力开发中受益的机器学习方法越来越多地用于保健领域,在保健机器学习中发现公平问题,导致某些群体保健资源有限或健康风险过大,因此,解决公平问题最近引起保健界越来越多的关注,然而,保健和机器学习公平方面的机器学习的交叉问题仍然没有得到充分研究。 在本次审查中,我们通过揭示公平问题、总结可能的偏见、分清缓解方法、指出未来机遇以及挑战来搭建桥梁。