A Machine Learning Approach to the Detection of Fetal Hypoxia during Labor and Delivery

Warrick, Philip A. (PeriGen, Inc.) | Hamilton, Emily F. (PeriGen, Inc.) | Kearney, Robert E. (McGill University) | Precup, Doina (McGill University)

AI Magazine 

Labor monitoring is crucial in modern health care, as it can be used to detect (and help avoid) significant problems with the fetus. In this article we focus on detecting hypoxia (or oxygen deprivation), a very serious condition that can arise from different pathologies and can lead to life-long disability and death. We present a novel approach to hypoxia detection based on recordings of the uterine pressure and fetal heart rate, which are obtained using standard labor monitoring devices. Then, we use the parameters of these models as attributes in a binary classification problem.