Accurate and actionable prediction of impending labor using deep learning on maternal physiological data
Amahealth Llc, Tucson AZ
Investigators
Abstract
Every pregnancy is assigned a âdue date.â However, this date is not an accurate or personalized guide for when labor will begin, or when the baby will be born. The âestimated due dateâ (EDD) represents forty completed weeks of pregnancy, calculated from the first day of the last menstrual period. Instead of being useful for predicting or planning, 40 weeks is an average duration of pregnancy across populations. Mothers and infants with a duration of pregnancy under 37 weeks or over 42 weeks are both at risk for birth complications, morbidity, or mortality. However, even across ânormalâ term gestation, uncertainty in planning for birth can arise from unexpected complications, cause added anxiety, and lead to greater use of costly intervention or hospitalization. For rural residents or for those with high-risk pregnancies who should not undergo labor, the risk of uncertainty can be overtly dangerous. Our team has developed a method to interpret physiological vital sign patterns during pregnancy to create an accurate prediction of when labor will start. The proposed 8-month study will enhance and improve our existing work, using artificial intelligence methods on data from non-invasive wearable sensors, making the prediction of labor more accurate. We will also operationalize a method to provide families or care providers with a time frame when labor is likely to occur in real-time. This tool will then be applied to a large validation trial of the method in pursuit of FDA-approval.
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