Predicting preterm births from electrohysterogram recordings via deep learning.
Uri GoldsztejnArye NehoraiPublished in: PloS one (2023)
About one in ten babies is born preterm, i.e., before completing 37 weeks of gestation, which can result in permanent neurologic deficit and is a leading cause of child mortality. Although imminent preterm labor can be detected, predicting preterm births more than one week in advance remains elusive. Here, we develop a deep learning method to predict preterm births directly from electrohysterogram (EHG) measurements of pregnant mothers recorded at around 31 weeks of gestation. We developed a prediction model, which includes a recurrent neural network, to predict preterm births using short-time Fourier transforms of EHG recordings and clinical information from two public datasets. We predicted preterm births with an area under the receiver-operating characteristic curve (AUC) of 0.78 (95% confidence interval: 0.76-0.80). Moreover, we found that the spectral patterns of the measurements were more predictive than the temporal patterns, suggesting that preterm births can be predicted from short EHG recordings in an automated process. We show that preterm births can be predicted for pregnant mothers around their 31st week of gestation, prompting beneficial treatments to reduce the incidence of preterm births and improve their outcomes.
Keyphrases
- gestational age
- preterm birth
- deep learning
- pregnant women
- healthcare
- machine learning
- magnetic resonance
- emergency department
- randomized controlled trial
- artificial intelligence
- skeletal muscle
- cardiovascular events
- weight loss
- convolutional neural network
- metabolic syndrome
- cardiovascular disease
- contrast enhanced
- dual energy