Sample Selection Bias in Machine Learning for Healthcare
Vinod Kumar Chauhan, Lei Clifton, Achille Sala\"un, Huiqi Yvonne Lu, Kim Branson, Patrick Schwab, Gaurav Nigam, David A. Clifton

TL;DR
This paper investigates sample selection bias in healthcare machine learning, demonstrating its impact on performance and proposing new population identification methods that outperform existing bias correction techniques.
Contribution
It introduces a novel approach focusing on target population identification using T-Net and MT-Net, addressing sample selection bias more effectively than traditional methods.
Findings
Sample selection bias causes significant performance drops.
Proposed methods outperform existing bias correction techniques.
Techniques are robust across various dataset settings.
Abstract
While machine learning algorithms hold promise for personalised medicine, their clinical adoption remains limited, partly due to biases that can compromise the reliability of predictions. In this paper, we focus on sample selection bias (SSB), a specific type of bias where the study population is less representative of the target population, leading to biased and potentially harmful decisions. Despite being well-known in the literature, SSB remains scarcely studied in machine learning for healthcare. Moreover, the existing machine learning techniques try to correct the bias mostly by balancing distributions between the study and the target populations, which may result in a loss of predictive performance. To address these problems, our study illustrates the potential risks associated with SSB by examining SSB's impact on the performance of machine learning algorithms. Most importantly,…
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Taxonomy
TopicsArtificial Intelligence in Healthcare
MethodsFocus
