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Background And Objective: Preterm infants are characterized by immature cardiorespiratory systems and require continuous monitoring of physiological signals in neonatal intensive care units (NICUs) to assess their clinical condition and return alarms in critical situations. However, many alarms are false or clinically irrelevant, leading to alarm fatigue for nurses and clinicians. A particularly high false alarm rate is reported for central apneas (CAs), with precision as low as 0.35. This study proposes neural networks to improve CA detection by increasing precision.
Methods: We used a reference dataset of 10 preterm infants (951 annotated CAs across 480 h) and a hold-out dataset of 10 preterm infants characterized by fewer CAs (254 annotated CAs across 480 h). CA detection models were developed using features extracted from the electrocardiogram, chest impedance, and peripheral oxygen saturation, considering four consecutive 30-second moving windows with a 5-second time shift (four-window sets) as individual records. These were trained, optimized, and tested using different neural network architectures, hyperparameter tuning, and leave-one-patient-out cross-validation. Their evaluation was performed through different metrics, including precision, computed by considering all CAs and apneic events of different origins, and sensitivity for all CAs, CAs paired with bradycardia (heart rate, HR ≤ 80 bpm), and CAs paired with low HR (80 bpm < HR ≤ 100 bpm).
Results: The best-performing CA detection model, using convolutional neural networks (CNN), was trained and tested on the reference dataset. By retaining alarms detected in 5 four-window sets, it achieved a precision of 0.54 and a sensitivity of 0.75 for all CAs, 0.87 for CAs paired with bradycardia, and 0.88 for CAs paired with low HR, outperforming results found in previous studies and current clinical practice. Testing on the hold-out dataset showed a decrease in precision and sensitivity for all CAs, equal to 0.28 and 0.69, respectively. However, the sensitivity for CAs paired with bradycardia and with low HR remained high at 0.83 and 0.85.
Conclusions: Larger datasets with more diverse CA distributions are needed to enhance generalization. Neural networks demonstrated potential to improve CA detection and reduce false alarms in NICUs, supporting more accurate monitoring strategies for preterm infants.
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http://dx.doi.org/10.1016/j.cmpb.2025.109038 | DOI Listing |
Cureus
August 2025
Division of Neonatology, Center for Maternal-Neonatal Care, Nagoya University Hospital, Nagoya, JPN.
This case report describes the implementation of Family-Centered Care (FCC) and developmental occupational therapy (OT) for an extremely preterm infant born at 22 weeks and one day of gestation, weighing 448 g. The infant experienced multiple complications, including necrotizing enterocolitis, sepsis, intraventricular hemorrhage, and respiratory distress, requiring prolonged intensive care. Due to physiological fragility and immature neurobehavior, a structured rehabilitation approach was introduced, integrating OT and caregiver participation based on FCC principles.
View Article and Find Full Text PDFFront Pharmacol
August 2025
Department of Education and Support for Regional Medicine (General and Kampo Medicine), Tohoku University Hospital, Sendai, Japan.
Introduction: Traditional Japanese (Kampo) medicine containing kernel (KPK) is prescribed for treating menstrual- and pregnancy-related symptoms. However, no safety information is available regarding its use in pregnant women. In this study, we examined the associations of KPK prescriptions during the first trimester of pregnancy with preterm births and major congenital malformations (MCMs) in newborns.
View Article and Find Full Text PDFSport Sci Health
May 2025
Department of Population Medicine, College of Medicine, QU Health, Qatar University, P.O. Box: 2713, Doha, Qatar.
Background: Physical activity during pregnancy is thought to influence birth outcomes, but its association with it is not fully understood. We aimed to examine the association of sedentary behavior during pregnancy with preterm birth and infant adiposity measured at birth, 14 weeks, and one year of age.
Methods: In this cohort study, physical activity during pregnancy was assessed using the physical activity questionnaire.
J Educ Health Promot
July 2025
Nursing Research Center, Faculty of Nursing and Midwifery, Golestan University of Medical Sciences, Gorgan, Iran.
Background: Delivered between 34 and 36 weeks of gestation, late preterm neonates account for nearly 70% of all preterm births. While these neonates are often treated as if they were full term, they have different challenges and needs that pose significant caregiving challenges for their families. Therefore, this study aims to explore the needs of mothers in short-term care of late preterm neonates at home.
View Article and Find Full Text PDFJ Multidiscip Healthc
August 2025
Department of Pediatrics, Hebei General Hospital, Shijiazhuang, 050000, People's Republic of China.
Background: Retinopathy of prematurity (ROP) is rising in China alongside improved neonatal intensive care. Current screening, reliant on gestational age (GA) and birth weight (BW), faces challenges of resource constraints and infant burden. Postnatal weight gain rate (WGR) is a potential predictive marker, but robust data on its value, particularly for severe ROP, and validated thresholds within the Chinese population are lacking.
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