评估合成数据扩增以减少健康数据中的协变量偏差

IF 6.7 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Lamin Juwara, Alaa El-Hussuna, Khaled El Emam
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引用次数: 0

摘要

数据偏差是生物医学研究中的一个主要问题,尤其是在评估大规模观测数据集时。它导致标准回归模型中不精确的预测和不一致的估计。我们比较了常用的消除偏差方法(重采样、算法和事后方法)与合成数据扩增方法的性能,后者利用序列提升决策树来合成代表性不足的群体。这种方法被称为合成少数群体增强法(SMA)。通过模拟和分析逻辑回归工作负载上的真实健康数据集,在各种偏差情况(类型和严重程度)下对这些方法进行了评估。性能评估基于曲线下面积、校准(布赖尔评分)、参数估计精度、置信区间重叠和公平性。总体而言,在中低偏差(50% 或更低的缺失比例)情况下,SMA 得出的结果最接近地面实况。而在高偏差(80% 或以上的缺失比例)情况下,SMA 的优势并不明显,没有一种特定的方法始终优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An evaluation of synthetic data augmentation for mitigating covariate bias in health data
Data bias is a major concern in biomedical research, especially when evaluating large-scale observational datasets. It leads to imprecise predictions and inconsistent estimates in standard regression models. We compare the performance of commonly used bias-mitigating approaches (resampling, algorithmic, and post hoc approaches) against a synthetic data-augmentation method that utilizes sequential boosted decision trees to synthesize under-represented groups. The approach is called synthetic minority augmentation (SMA). Through simulations and analysis of real health datasets on a logistic regression workload, the approaches are evaluated across various bias scenarios (types and severity levels). Performance was assessed based on area under the curve, calibration (Brier score), precision of parameter estimates, confidence interval overlap, and fairness. Overall, SMA produces the closest results to the ground truth in low to medium bias (50% or less missing proportion). In high bias (80% or more missing proportion), the advantage of SMA is not obvious, with no specific method consistently outperforming others.
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来源期刊
Patterns
Patterns Decision Sciences-Decision Sciences (all)
CiteScore
10.60
自引率
4.60%
发文量
153
审稿时长
19 weeks
期刊介绍:
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