Please use this identifier to cite or link to this item: https://scidar.kg.ac.rs/handle/123456789/23154
Title: Deep insight: Harnessing convolutional neural networks for precise classification of neurosonographic findings in premature infants
Authors: Zivojinovic, Suzana
Prodanovic, Tijana
Cekovic Djordjevic, Jelena
Savic, Dragana
Simovic, Aleksandra
Petrovic Savic, Suzana
Papovic, Nela
Issue Date: 2026
Abstract: Perinatal asphyxia, particularly when combined with the underdevelopment of organ systems, is a major contributor to permanent neurological harm or death in premature infant. In neonatology, our attention is directed towards tailoring prognosis, preventing issues, and customizing treatment for neonates with H-I brain lesions. This approach entails employing non-intrusive diagnostic techniques, monitoring clinical indicators, and analyzing transfontanelle neurosonographic images with specialized software. To objectively gauge the extent of brain damage, we devised an algorithm using a convolutional neural network (CNN) built with MATLAB. The model was trained on images obtained from pre-term infants, and its performance was evaluated on unseen samples not included in the training set. The CNN achieved an accuracy exceeding 80% on these unseen samples from the database. This study aims to significantly enhance our comprehension of perinatal asphyxia's pathophysiology and enhance the precision of its evaluation. Additionally, the MATLAB-generated model holds promise for guiding informed decision-making in future medical diagnostic and treatment processes.
URI: https://scidar.kg.ac.rs/handle/123456789/23154
Type: conferenceObject
Appears in Collections:Faculty of Engineering, Kragujevac

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