机器学习在糖尿病和心脏病临床支持中的不同模型性能和稳定性。

Ioannis Bilionis, Ricardo C Berrios, Luis Fernandez-Luque, Carlos Castillo
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摘要

机器学习(ML)算法对于支持生物医学信息学中的临床决策至关重要。然而,它们的预测性能在不同的人口群体中可能会有所不同,这通常是由于训练数据集中历史上边缘化人群的代表性不足。调查揭示了慢性疾病数据集及其衍生的ML模型中普遍存在与性别和年龄相关的不平等。因此,引入了一种新的分析框架,将系统的任意性与传统的度量(如准确性和数据复杂性)相结合。对25000多名慢性疾病患者的数据进行分析,发现与性别有关的轻微差异有利于男性的预测准确性,与年龄有关的显著差异有利于年轻患者的预测准确性。值得注意的是,老年患者在七个数据集中表现出不一致的预测准确性,这与较高的数据复杂性和较低的模型性能有关。这突出表明,仅训练数据的代表性并不能保证公平的结果,在将模型部署到临床环境之前,必须解决模型的随意性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disparate Model Performance and Stability in Machine Learning Clinical Support for Diabetes and Heart Diseases.

Machine Learning (ML) algorithms are vital for supporting clinical decision-making in biomedical informatics. However, their predictive performance can vary across demographic groups, often due to the underrepresentation of historically marginalized populations in training datasets. The investigation reveals widespread sex- and age-related inequities in chronic disease datasets and their derived ML models. Thus, a novel analytical framework is introduced, combining systematic arbitrariness with traditional metrics like accuracy and data complexity. The analysis of data from over 25,000 individuals with chronic diseases revealed mild sex-related disparities, favoring predictive accuracy for males, and significant age-related differences, with better accuracy for younger patients. Notably, older patients showed inconsistent predictive accuracy across seven datasets, linked to higher data complexity and lower model performance. This highlights that representativeness in training data alone does not guarantee equitable outcomes, and model arbitrariness must be addressed before deploying models in clinical settings.

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