Please use this identifier to cite or link to this item: https://scidar.kg.ac.rs/handle/123456789/23042
Title: Convolutional Neural Network for Atherosclerotic Plaque Multiclass Semantic Image Segmentation in Transverse Ultrasound Images of Carotid Artery
Authors: Dašić, Lazar
Pavić, Ognjen
Blagojevic, Andjela
Geroski, Tijana
Filipovic, Nenad
Issue Date: 2023
Abstract: Arterial stenosis is one of the most common diseases and if it is not discovered in time and adequately treated, it may have critical consequences, such as a debilitating stroke and even death. This is the reason why early detec-tion is a number one priority. This disease occurs as a result of plaque deposition within the coronary vessel. The process of manually annotating plaque compo-nents is both resource and time consuming, therefore, an automatic and accurate segmentation tool is necessary. The goal of this research is to create a model that sufficiently identifies and segments atherosclerotic plaque components such as fibrous and calcified tissue and lipid core, by using Convolutional Neural Net-work (CNN) on transverse ultrasound imaging data of carotid artery. U-net model was trained with dataset of 60 ultrasound samples, collected and annotated by medical experts during TAXINOMISIS project, and achieved 96.94% and 57.38% Jaccard similarity coefficient (JSC) for segmentation of background and fibrous classes, respectively. On the contrary, model had difficulties with seg-mentation of lipid and calcified plaque components due to dataset being imbal-anced and small, which is shown with respective JSC values of 19.05% and 32.68%. Future research will focus on expanding current dataset with additional annotated ultrasound samples, with the goal of improving segmentation of lipid and calcified plaque components.
URI: https://scidar.kg.ac.rs/handle/123456789/23042
Type: conferenceObject
DOI: 10.1007/978-3-031-50755-7_10
Appears in Collections:Faculty of Engineering, Kragujevac

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