Browsing by Author "Sigala, Fragiska (55393308900)"
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Publication A Machine Learning Model for the prediction of the progression of carotid arterial stenoses(2023) ;Siogkas, Panagiotis K. (36976596100) ;Pleouras, Dimitrios S. (57213604972) ;Tsakanikas, Vasilis D. (36718299600) ;Potsika, Vassiliki T. (55826618900) ;Tsiouris, Kostas M. (56252054300) ;Sakellarios, Antonis (36476633700) ;Karamouzi, Evdokia (58761408700) ;Lagiou, Foteini (58761633000) ;Charalampopoulos, George (17343466700) ;Galyfos, George (55658700300) ;Sigala, Fragiska (55393308900) ;Koncar, Igor (19337386500)Fotiadis, Dimitrios I. (55938920100)Atherosclerotic carotid plaque development results in a steady narrowing of the artery lumen, which may eventually trigger catastrophic plaque rupture leading to thromboembolism and stroke. The primary cause of ischemic stroke in the EU is carotid artery disease, which increases the demand for tools for risk stratification and patient management in carotid artery disease. Additionally, advancements in cardiovascular modeling over the past few years have made it possible to build accurate three-dimensional models of patient-specific primary carotid arteries. Computational models then incorporate the aforementioned 3D models to estimate either the development of atherosclerotic plaque or a number of flow-related parameters that are linked to risk assessment. This work presents an attempt to provide a carotid artery stenosis prognostic model, utilizing non-imaging and imaging data, as well as simulated hemodynamic data. The overall methodology was trained and tested on a dataset of 41 cases with 23 carotid arteries with stable stenosis and 18 carotids with increasing stenosis degree. The highest accuracy of 71% was achieved using a neural network classifier. The novel aspect of our work is the definition of the problem that is solved, as well as the amount of simulated data that are used as input for the prognostic model.Clinical Relevance - A prognostic model for the prediction of the trajectory of carotid artery atherosclerosis is proposed, which can support physicians in critical treatment decisions. © 2023 IEEE. - Some of the metrics are blocked by yourconsent settings
Publication A Machine Learning Model for the prediction of the progression of carotid arterial stenoses(2023) ;Siogkas, Panagiotis K. (36976596100) ;Pleouras, Dimitrios S. (57213604972) ;Tsakanikas, Vasilis D. (36718299600) ;Potsika, Vassiliki T. (55826618900) ;Tsiouris, Kostas M. (56252054300) ;Sakellarios, Antonis (36476633700) ;Karamouzi, Evdokia (58761408700) ;Lagiou, Foteini (58761633000) ;Charalampopoulos, George (17343466700) ;Galyfos, George (55658700300) ;Sigala, Fragiska (55393308900) ;Koncar, Igor (19337386500)Fotiadis, Dimitrios I. (55938920100)Atherosclerotic carotid plaque development results in a steady narrowing of the artery lumen, which may eventually trigger catastrophic plaque rupture leading to thromboembolism and stroke. The primary cause of ischemic stroke in the EU is carotid artery disease, which increases the demand for tools for risk stratification and patient management in carotid artery disease. Additionally, advancements in cardiovascular modeling over the past few years have made it possible to build accurate three-dimensional models of patient-specific primary carotid arteries. Computational models then incorporate the aforementioned 3D models to estimate either the development of atherosclerotic plaque or a number of flow-related parameters that are linked to risk assessment. This work presents an attempt to provide a carotid artery stenosis prognostic model, utilizing non-imaging and imaging data, as well as simulated hemodynamic data. The overall methodology was trained and tested on a dataset of 41 cases with 23 carotid arteries with stable stenosis and 18 carotids with increasing stenosis degree. The highest accuracy of 71% was achieved using a neural network classifier. The novel aspect of our work is the definition of the problem that is solved, as well as the amount of simulated data that are used as input for the prognostic model.Clinical Relevance - A prognostic model for the prediction of the trajectory of carotid artery atherosclerosis is proposed, which can support physicians in critical treatment decisions. © 2023 IEEE. - Some of the metrics are blocked by yourconsent settings
Publication Computational modeling of atherosclerotic plaque progression in carotid lesions with moderate degree of stenosis(2021) ;Mantzaris, Michalis D. (24478053800) ;Siogkas, Panagiotis K. (36976596100) ;Tsakanikas, Vassilis D. (36718299600) ;Potsika, Vassiliki T. (55826618900) ;Pleouras, Dimitrios S. (57213604972) ;Sakellarios, Antonis I. (36476633700) ;Karagiannis, Georgios (57509364400) ;Galyfos, George (55658700300) ;Sigala, Fragiska (55393308900) ;Liasis, Nikolaos (10440375500) ;Jovanovic, Marija (57194767566) ;Koncar, Igor B. (19337386500) ;Kallmayer, Michael (41861588900)Fotiadis, Dimitrios I. (55938920100)Carotid atherosclerotic plaque growth leads to the progressive luminal stenosis of the vessel, which may erode or rupture causing thromboembolism and cerebral infarction, manifested as stroke. Carotid atherosclerosis is considered the major cause of ischemic stroke in Europe and thus new imaging-based computational tools that can improve risk stratification and management of carotid artery disease patients are needed. In this work, we present a new computational approach for modeling atherosclerotic plaque progression in real patient-carotid lesions, with moderate to severe degree of stenosis (>50%). The model incorporates for the first time, the baseline 3D geometry of the plaque tissue components (e.g. Lipid Core) identified by MR imaging, in which the major biological processes of atherosclerosis are simulated in time. The simulated plaque tissue production results in the inward remodeling of the vessel wall promoting luminal stenosis which in turn predicts the region of the actual stenosis progression observed at the follow-up visit. The model aims to support clinical decision making, by identifying regions prone to plaque formation, predict carotid stenosis and plaque burden progression, and provide advice on the optimal time for patient follow-up screening. © 2021 IEEE. - Some of the metrics are blocked by yourconsent settings
Publication Computational modeling of atherosclerotic plaque progression in carotid lesions with moderate degree of stenosis(2021) ;Mantzaris, Michalis D. (24478053800) ;Siogkas, Panagiotis K. (36976596100) ;Tsakanikas, Vassilis D. (36718299600) ;Potsika, Vassiliki T. (55826618900) ;Pleouras, Dimitrios S. (57213604972) ;Sakellarios, Antonis I. (36476633700) ;Karagiannis, Georgios (57509364400) ;Galyfos, George (55658700300) ;Sigala, Fragiska (55393308900) ;Liasis, Nikolaos (10440375500) ;Jovanovic, Marija (57194767566) ;Koncar, Igor B. (19337386500) ;Kallmayer, Michael (41861588900)Fotiadis, Dimitrios I. (55938920100)Carotid atherosclerotic plaque growth leads to the progressive luminal stenosis of the vessel, which may erode or rupture causing thromboembolism and cerebral infarction, manifested as stroke. Carotid atherosclerosis is considered the major cause of ischemic stroke in Europe and thus new imaging-based computational tools that can improve risk stratification and management of carotid artery disease patients are needed. In this work, we present a new computational approach for modeling atherosclerotic plaque progression in real patient-carotid lesions, with moderate to severe degree of stenosis (>50%). The model incorporates for the first time, the baseline 3D geometry of the plaque tissue components (e.g. Lipid Core) identified by MR imaging, in which the major biological processes of atherosclerosis are simulated in time. The simulated plaque tissue production results in the inward remodeling of the vessel wall promoting luminal stenosis which in turn predicts the region of the actual stenosis progression observed at the follow-up visit. The model aims to support clinical decision making, by identifying regions prone to plaque formation, predict carotid stenosis and plaque burden progression, and provide advice on the optimal time for patient follow-up screening. © 2021 IEEE. - Some of the metrics are blocked by yourconsent settings
Publication DECODE-3DViz: Efficient WebGL-Based High-Fidelity Visualization of Large-Scale Images using Level of Detail and Data Chunk Streaming(2025) ;AboArab, Mohammed A. (58043588900) ;Potsika, Vassiliki T. (55826618900) ;Skalski, Andrzej (24170079200) ;Stanuch, Maciej (57205600925) ;Gkois, George (57224728064) ;Koncar, Igor (19337386500) ;Matejevic, David (57657574700) ;Theodorou, Alexis (57222760085) ;Vagena, Sylvia (58918944300) ;Sigala, Fragiska (55393308900)Fotiadis, Dimitrios I. (55938920100)The DECODE-3DViz pipeline represents a major advancement in the web-based visualization of large-scale medical imaging data, particularly for peripheral artery computed tomography images. This research addresses the critical challenges of rendering high-resolution volumetric datasets via WebGL technology. By integrating progressive chunk streaming and level of detail (LOD) algorithms, DECODE-3DViz optimizes the rendering process for real-time interaction and high-fidelity visualization. The system efficiently manages WebGL texture size constraints and browser memory limitations, ensuring smooth performance even with extensive datasets. A comparative evaluation against state-of-the-art visualization tools demonstrates DECODE-3DViz's superior performance, achieving up to a 98% reduction in rendering time compared with that of competitors and maintaining a high frame rate of up to 144 FPS. Furthermore, the system exhibits exceptional GPU memory efficiency, utilizing as little as 2.6 MB on desktops, which is significantly less than the over 100 MB required by other tools. User feedback, collected through a comprehensive questionnaire, revealed high satisfaction with the tool's performance, particularly in areas such as structure definition and diagnostic capability, with an average score of 4.3 out of 5. These enhancements enable detailed and accurate visualizations of the peripheral vasculature, improving diagnostic accuracy and supporting better clinical outcomes. The DECODE-3DViz tool is open source and can be accessed at https://github.com/mohammed-abo-arab/3D_WebGL_VolumeRendering.git. © The Author(s) 2025.
