Publications by authors named "A Rickart"

Survival rates for extremely low birth weight (ELBW) infants have improved over the recent years, yet morbidity remains high. This review explores respiratory management strategies for this unique cohort and how it may impact their long-term outcomes. Although there is a preference towards non-invasive respiratory support in less immature infants, ELBW infants often require invasive ventilation.

View Article and Find Full Text PDF
Article Synopsis
  • * Most units use different criteria for diagnosis, and 79% refer patients to specialized services, highlighting discrepancies in practices.
  • * The review discusses challenges in early diagnosis, management strategies for airway obstruction, and reveals ongoing uncertainty about the best treatment approaches for RS.
View Article and Find Full Text PDF
Article Synopsis
  • * The researchers utilized a dataset of 3D head shapes, enhanced using a new data augmentation method, to train the SD-VAE model, which allows for detailed analysis of both overall head shapes and specific anatomical regions.
  • * The findings enable syndrome classification and help to predict outcomes of craniofacial surgeries, thus improving diagnostic techniques and surgical planning, with the code shared on GitHub for further research.
View Article and Find Full Text PDF
Article Synopsis
  • Advancements in AI, specifically the Swap Disentangled Variational Autoencoder (SD-VAE), allow for objective assessment of changes in head shape and facial morphology following craniofacial surgery.
  • The study analyzed data from 56 patients with Apert and Crouzon syndromes who underwent midfacial procedures, comparing their post-surgery shape changes to a healthy population using 3D mesh analysis.
  • The findings suggest that AI can improve the evaluation of surgical outcomes by quantifying regional and global shape changes, ultimately enhancing decision-making in surgical practices.
View Article and Find Full Text PDF
Article Synopsis
  • The study focuses on using AI to assist in diagnosing syndromic craniosynostoses like Apert, Crouzon, Muenke, Pfeiffer, and Saethre Chotzen syndromes from facial photographs.
  • Researchers analyzed 2,228 photos from 541 patients over 44 years, aiming to identify features that distinguish these syndromes from non-syndromic cases.
  • The AI model successfully diagnosed 70.2% of cases with a significant correlation between certain genotypes and milder disease phenotypes in Crouzon-Pfeiffer syndrome, suggesting new diagnostic avenues.
View Article and Find Full Text PDF