The Sim4DFlow project achieved significant milestones throughout its duration, involving the collection of a comprehensive dataset comprising 694 image sets sourced from diverse outlets, including open-access databases and specific institutions. These sets, characterized by demographic and geometric features, played a crucial role in training a Machine Learning algorithm. Additionally, the project conducted 273 Computational Fluid Dynamics (CFD) simulations, yielding valuable insights into hemodynamic parameters.
The project's outcomes were disseminated through presentations at two international conferences, with abstracts published as follows:
[1] N. Aristokleous, K.G. Achilleos, M Hadjicharalambous, A.S. Anayiotos, C.S. Pattichis, V. Vavourakis, "Intracranial aneurysm predictions with the use of morphometric features in a Machine Learning approach," 27th Congress of the European Society of Biomechanics, June 26-29, 2022, Porto, Portugal.
[2] N. Aristokleous, K.G. Achilleos, C.S. Pattichis, V. Vavourakis, "Initial strides for intracranial aneurysm predictions with the use of morphometric features in a Machine Learning approach," 9th World Congress of Biomechanics, Taipei, Taiwan, 10-14 July 2022.
[3] N. Aristokleous, N. Prentza, D. Flouri, A. Kakas, C.S. Pattichi, V. Vavourakis, “Machine Learning Approach for Intracranial Aneurysm Prediction using Morphometric Features”, 29th Congress of the European Society of Biomechanics, June 30- July 3, 2024, Edinburgh, UK.
Furthermore, a peer-reviewed paper titled "Intracranial Aneurysm Rupture Risk Prediction Based on Morphometric Features," authored by N. Aristokleous, N. Prentza, C.S. Pattichis, and V. Vavourakis, has been prepared for submission for review in the Annals of Biomedical Engineering journal.
In parallel, the project team is currently in progress on another paper. This forthcoming paper aims to extend the scope by incorporating both morphometric and hemodynamic features for a more comprehensive analysis. A tentative title for this upcoming paper is "Integrated Morphometric and Hemodynamic Features for Enhanced Intracranial Aneurysm Rupture Risk Prediction." This work reflects the ongoing commitment to advancing the understanding of intracranial aneurysm dynamics and further contributing to the science in the field.