The limited availability of specialized image databases (particularly in hospitals, where tools vary between providers) makes it difficult to train deep learning models. This paper presents a few-shot learning methodology that uses a pre-trained ResNet integrated with an encoder as a backbone to encode conditional shape information for the classification of neonatal resuscitation equipment from less than 100 natural images. The model is also strengthened by incorporating a reliability score, which enriches the prediction with an estimation of classification reliability. The model, whose performance is cross-validated, reached a median accuracy performance of over 99% (and a lower limit of 73.4% for the least accurate model/fold) using only 87 meta-training images. During the test phase on complex natural images, performance was slightly degraded due to a sub-optimal segmentation strategy (FastSAM) required to maintain the real-time inference phase (median accuracy 87.25%). This methodology proves to be excellent for applying complex classification models to contexts (such as neonatal resuscitation) that are not available in public databases. Improvements to the automatic segmentation strategy prior to the extraction of conditional information will allow a natural application in simulation and hospital settings.
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http://dx.doi.org/10.3390/jimaging10070167 | DOI Listing |
PLoS One
January 2025
Centre for Translational Medicine, Semmelweis University, Budapest, Hungary.
Background: Minimizing the duration of mechanical ventilation is one of the most important therapeutic goals during the care of preterm infants at neonatal intensive care units (NICUs). The rate of extubation failure among preterm infants is between 16% and 40% worldwide. Numerous studies have been conducted on the assessment of extubation suitability, the optimal choice of respiratory support around extubation, and the effectiveness of medical interventions.
View Article and Find Full Text PDFJAAD Case Rep
January 2025
Department of Resuscitation and Neonatal Medicine, Farhat Hached University Hospital, Sousse, Tunisia.
Background: Simulation offers an opportunity to practice neonatal resuscitation and test clinical systems to improve safety. The authors used simulation-based clinical systems testing (SbCST) with a Healthcare Failure Mode and Effect Analysis (HFMEA) rubric to categorize and quantify latent safety threats (LSTs) during in situ training in eight rural delivery hospitals. The research team hypothesized that most LSTs would be common across hospitals.
View Article and Find Full Text PDFResuscitation
January 2025
Prehospital Center Region Zealand, Ringstedgade 61, 13th floor, 4700 Naestved, Denmark.
Aim: This study aimed to investigate the associations between hypothermia and mortality or poor neurological outcome in a nationwide cohort of drowning patients with out-of-hospital cardiac arrest (OHCA).
Methods: This nationwide, registry-based cohort study reported in-hospital data on drowning patients with OHCA following the Utstein Style For Drowning. Drowning patients with OHCA were identified in the Danish Cardiac Arrest Registry from 2016 to 2021.
Eur J Pediatr
January 2025
Medical Research Group of Egypt, Negida Academy, Arlington, MA, USA.
Delayed cord clamping (DCC) has been widely adopted in both term and preterm infants to improve neonatal outcomes by increasing blood volume and supporting oxygenation. However, the optimal cord management for intrauterine growth-restricted (IUGR) infants is unclear. To systematically review and meta-analyze the effects of DCC compared to early cord clamping (ECC) in IUGR infants.
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