Abstract

BackgroundTo develop a non-invasive method for the prenatal prediction of neonatal respiratory morbidity (NRM) by a novel radiomics method based on imbalanced few-shot fetal lung ultrasound images.MethodsA total of 210 fetal lung ultrasound images were enrolled in this study, including 159 normal newborns and 51 NRM newborns. Fetal lungs were delineated as the region of interest (ROI), where radiomics features were designed and extracted. Integrating radiomics features selected and two clinical features, including gestational age and gestational diabetes mellitus, the prediction model was developed and evaluated. The modelling methods used were data augmentation, cost-sensitive learning, and ensemble learning. Furthermore, two methods, which embed data balancing into ensemble learning, were employed to address the problems of imbalance and few-shot simultaneously.ResultsOur model achieved sensitivity values of 0.82, specificity values of 0.84, balanced accuracy values of 0.83 and area under the curve values of 0.87 in the test set. The radiomics features extracted from the ROIs at different locations within the lung region achieved similar classification performance outcomes.ConclusionThe feature set we designed can efficiently and robustly describe fetal lungs for NRM prediction. RUSBoost shows excellent performance compared to state-of-the-art classifiers on the imbalanced few-shot dataset. The diagnostic efficacy of the model we developed is similar to that of several previous reports of amniocentesis and can serve as a non-invasive, precise evaluation tool for NRM prediction.

Highlights

  • To develop a non-invasive method for the prenatal prediction of neonatal respiratory morbidity (NRM) by a novel radiomics method based on imbalanced few-shot fetal lung ultrasound images

  • The purpose of this study was to develop a non-invasive method for the prenatal prediction of NRM based on the radiomics method with an imbalanced few-shot fetal lung ultrasound image dataset collected from Asian population

  • The metrics we introduced in this study are the balanced accuracy, the area under the receiver operating characteristic (ROC) curve (AUC), the sensitivity (SENS), the specificity (SPEC), the positive predictive value (PPV) and negative predictive value (NPV)

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Summary

Introduction

To develop a non-invasive method for the prenatal prediction of neonatal respiratory morbidity (NRM) by a novel radiomics method based on imbalanced few-shot fetal lung ultrasound images. Neonatal respiratory morbidity (NRM), mainly including respiratory distress syndrome (RDS) and transient tachypnea of the newborn (TTN), is a leading cause of morbidity and mortality in the preterm and early term [1]. The morbidity of NRM is correlated with fetal lung maturity [2]. Newborns with NRM are born with respiratory distress and even apnoea, which may lead to multiple complications, or even death. Jiao et al BMC Medical Imaging (2022) 22:2 are used to treat fetuses at high risk of NRM to promote fetal lung maturation and can significantly reduce morbidity and mortality. An accurate prenatal prediction of NRM is essential to avoid the overuse of glucocorticoids in normal fetuses

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