학술논문

Shining Light on Dark Skin: Pulse Oximetry Correction Models
Document Type
Conference
Source
2023 IEEE 7th Portuguese Meeting on Bioengineering (ENBENG) Bioengineering (ENBENG), 2023 IEEE 7th Portuguese Meeting on. :211-214 Jun, 2023
Subject
Bioengineering
Pulse oximeter
Oxygen
Medical devices
Sociology
MIMICs
Machine learning
Skin
Pulse Oximetry
Arterial Oxygen Saturation
Health Equity
Racial and Ethnic Bias
Machine Learning
Language
ISSN
2771-487X
Abstract
Pulse oximeters are medical devices used to assess peripheral arterial oxygen saturation ($SpO_{2}$) noninvasively. In contrast, the “gold standard” requires arterial blood to be drawn to measure the arterial oxygen saturation ($SaO_{2}$). Devices currently on the market measure $SpO_{2}$ with lower accuracy in populations with darker skin tones. Pulse oximetry inaccuracies can yield episodes of hidden hypoxemia (HH), with $SpO_{2} \geq 88\%$, but $SaO_{2}< 88\%$. HH can result in less treatment and increased mortality. Despite being flawed, pulse oximeters remain ubiquitously used; debiasing models could alleviate the downstream repercussions of HH. To our knowledge, this is the first study to propose such models. Experiments were conducted using the MIMIC-IV dataset. The cohort includes patients admitted to the Intensive Care Unit with paired ($SaO_{2}, SpO_{2}$) measurements captured within 10min of each other. We built a XGBoost regression predicting $SaO_{2}$ from $SpO_{2}$, patient demographics, physiological data, and treatment information. We used an asymmetric mean squared error as the loss function to minimize falsely elevated predicted values. The model achieved $R^{2}= 67.6\%$ among Black patients; frequency of HH episodes was partially mitigated. Respiratory function was most predictive of $SaO_{2}$; race-ethnicity was not a top predictor. This single-center study shows that $SpO_{2}$ corrections can be achieved with Machine Learning. In future, model validation will be performed on additional patient cohorts featuring diverse settings.