Automating the Detection of IV Fluid Contamination Using Unsupervised Machine Learning
Nicholas C Spies,
Zita Hubler,
Vahid Azimi
et al.
Abstract:Background
Intravenous (IV) fluid contamination is a common cause of preanalytical error that can delay or misguide treatment decisions, leading to patient harm. Current approaches for detecting contamination rely on delta checks, which require a prior result, or manual technologist intervention, which is inefficient and vulnerable to human error. Supervised machine learning may provide a means to detect contamination, but its implementation is hindered by its reliance on expert-labeled train… Show more
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