Evaluating the Impact of Pulse Oximetry Bias in Machine Learning under Counterfactual Thinking
In\^es Martins, Jo\~ao Matos, Tiago Gon\c{c}alves, Leo A. Celi, A. Ian, Wong, Jaime S. Cardoso

TL;DR
This study quantifies how bias in pulse oximetry affects machine learning models in healthcare, revealing that biased measurements lead to decreased predictive accuracy and potential clinical risks.
Contribution
It introduces a counterfactual experimental framework to assess the impact of pulse oximetry bias on ML model performance in clinical outcome prediction.
Findings
Models using biased SpO2 measurements perform worse than those using SaO2.
Overestimation of oxygen saturation reduces mortality prediction recall.
Pulse oximetry bias causes more false negatives in adverse outcome predictions.
Abstract
Algorithmic bias in healthcare mirrors existing data biases. However, the factors driving unfairness are not always known. Medical devices capture significant amounts of data but are prone to errors; for instance, pulse oximeters overestimate the arterial oxygen saturation of darker-skinned individuals, leading to worse outcomes. The impact of this bias in machine learning (ML) models remains unclear. This study addresses the technical challenges of quantifying the impact of medical device bias in downstream ML. Our experiments compare a "perfect world", without pulse oximetry bias, using SaO2 (blood-gas), to the "actual world", with biased measurements, using SpO2 (pulse oximetry). Under this counterfactual design, two models are trained with identical data, features, and settings, except for the method of measuring oxygen saturation: models using SaO2 are a "control" and models using…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Non-Invasive Vital Sign Monitoring · Fault Detection and Control Systems
