Evaluation of an improved tool for non-invasive prediction of neonatal respiratory morbidity based on fully automated fetal lung ultrasound analysis.
Xavier Paolo Burgos-ArtizzuÁlvaro Perez-MorenoDavid Coronado-GutierrezEduard GratacosMontse PalacioPublished in: Scientific reports (2019)
The objective of this study was to evaluate the performance of a new version of quantusFLM®, a software tool for prediction of neonatal respiratory morbidity (NRM) by ultrasound, which incorporates a fully automated fetal lung delineation based on Deep Learning techniques. A set of 790 fetal lung ultrasound images obtained at 24 + 0-38 + 6 weeks' gestation was evaluated. Perinatal outcomes and the occurrence of NRM were recorded. quantusFLM® version 3.0 was applied to all images to automatically delineate the fetal lung and predict NRM risk. The test was compared with the same technology but using a manual delineation of the fetal lung, and with a scenario where only gestational age was available. The software predicted NRM with a sensitivity, specificity, and positive and negative predictive value of 71.0%, 94.7%, 67.9%, and 95.4%, respectively, with an accuracy of 91.5%. The accuracy for predicting NRM obtained with the same texture analysis but using a manual delineation of the lung was 90.3%, and using only gestational age was 75.6%. To sum up, automated and non-invasive software predicted NRM with a performance similar to that reported for tests based on amniotic fluid analysis and much greater than that of gestational age alone.
Keyphrases
- gestational age
- deep learning
- birth weight
- preterm birth
- machine learning
- magnetic resonance imaging
- convolutional neural network
- artificial intelligence
- type diabetes
- pregnant women
- ultrasound guided
- computed tomography
- adipose tissue
- mesenchymal stem cells
- preterm infants
- bone marrow
- weight loss
- insulin resistance
- contrast enhanced ultrasound
- glycemic control