Determination of the Risk of Rupture of Intracranial Aneurysms Through Numerical Simulation and Data Classification

ORAL

Abstract

Determining the risk of rupture of intracranial aneurysms is a great challenge. In recent years, hemodynamics parameters, such as shear stress and oscillatory shear index, have gained attention to predict aneurysm rupture. Numerical flow simulations in complex biological structures have also gained considerable attention. However, the primary challenge is the validation of the numerical procedures due to the complexity of measuring (velocity and shear stress) and testing the computed results. The main goal of the present work is to classify geometrical and hemodynamic parameters to predict the possible rupture of the aneurysm.

Numerical simulations were performed using realistic geometries. Aneurysms 3D models were reconstructed from CT scans, using the 3D-Slicer software to perform the numerical simulations and to 3D print the models for validation purposes. The blood was modelled as a Newtonian fluid with constant properties. As a first approximation, the arterial walls were rigid, and no-slip boundary condition was taken into account.

The 1R machine learning algorithm was used for classifying the geometrical and hemodynamic parameters. The analysis used the following hemodynamic parameters: wall pressure and wall shear stress, oscillatory shear index (OSI), residence time, gradient oscillatory number (GON), vorticity, q criterion, stokes number for particles and enstrophy to classify the aneurysm in combination with the traditional parameters.

The performed numerical simulations showed good agreement with the experiments (qualitatively). The first classification presents a reliability of 82.8%. This is the first achievement of the project.

*This work was supported by Consejo Nacional de Ciencia y Tecnologia (CONACYT) [grant: 728924 Alberto Brambila and grant: 427822 Gregorio Martínez], and the Research Project Grant CF-2019 6358 Ciencia de Frontera 2019.The authors gratefully acknowledge the computing time granted by LANCAD on the supercomputer150 Miztli at DGTIC UNAM. Project LANCAD-UNAM-DGTIC-404.This research used resources of the Oak Ridge Leadership Computing Facility, which is a DOE Office of Science User Facility supported under Contract DE-AC05-00OR22725.

Presenters

  • Carlos Escobar-Del Pozo

    • Universidad de Colima

Authors

  • Carlos Escobar-Del Pozo

    • Universidad de Colima
  • Alberto Brambila-Solórzano

    • Universidad Nacional Autónoma de México
  • Victor H Castillo-Topete

    • Universidad de Colima
  • Azael García Rebolledo

    • Universidad de Colima
  • Gregorio J Martínez-Sánchez

    • Universidad Nacional Autonoma de Mexico
    • Universidad Nacional Autónoma de México
  • Benjamín Hernández-Arreguín

    • Oak Ridge National Laboratory
  • Luis Ortiz-Rincón

    • Universidad de Colima
  • Pablo A Alcaraz-Valencia

    • Universidad de Colima