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📄 Abstract
Abstract: Identifying and measuring biases associated with sensitive attributes is a
crucial consideration in healthcare to prevent treatment disparities. One
prominent issue is inaccurate pulse oximeter readings, which tend to
overestimate oxygen saturation for dark-skinned patients and misrepresent
supplemental oxygen needs. Most existing research has revealed statistical
disparities linking device measurement errors to patient outcomes in intensive
care units (ICUs) without causal formalization. This study causally
investigates how racial discrepancies in oximetry measurements affect invasive
ventilation in ICU settings. We employ a causal inference-based approach using
path-specific effects to isolate the impact of bias by race on clinical
decision-making. To estimate these effects, we leverage a doubly robust
estimator, propose its self-normalized variant for improved sample efficiency,
and provide novel finite-sample guarantees. Our methodology is validated on
semi-synthetic data and applied to two large real-world health datasets:
MIMIC-IV and eICU. Contrary to prior work, our analysis reveals minimal impact
of racial discrepancies on invasive ventilation rates. However, path-specific
effects mediated by oxygen saturation disparity are more pronounced on
ventilation duration, and the severity differs by dataset. Our work provides a
novel pipeline for investigating potential disparities in clinical
decision-making and, more importantly, highlights the necessity of causal
methods to robustly assess fairness in healthcare.
Authors (5)
Kevin Zhang
Yonghan Jung
Divyat Mahajan
Karthikeyan Shanmugam
Shalmali Joshi
Key Contributions
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