COOKIES USE
We use necessary system cookies for the correct functioning of the website and optional Google Analytics cookies to obtain visit statistics.
 +info

Cookies config

  • Necessary

    The necessary cookies are absolutely essential for the website to work properly. This category only includes cookies that guarantee basic website security and functionality. These cookies do not store any personal information.

    NameProveedorPropiedadFinalidadCaducidad+info
    _GRECAPTCHAgoogle.comOwnprovide antispam protection with the reCaptcha service6 months
    cc_cookie_acceptfidmag.orgOwnUsada per confirmar que l'usuari ha confirmat / refusat les cookies (i quins tipus accepta)1 any
    WEB_SESSIONfidmag.orgOwnCookie técnica: cookie de sessió PHP. Guarda l'id de sessió d'usuari.al acabar la sessió

  • Analisys

    Analytical cookies are used to understand how visitors interact with the website. These cookies help to provide information on meters, the name of visitors, the percentage of bounces, the font of the traffic, etc.

    NameProveedorPropiedadFinalidadCaducidad+info
    _gaGoogle AnalyticsFrom third partiesCookie d'anàlisi o mesurament: Identifica els usuaris i proporciona informació sobre com els usuaris troben la pàgina web i com la utilitzen per a realització d'Informes estadístics2 anys
    _gat_gtag_UA_141706552_1Google AnalyticsFrom third partiesCookie d'anàlisi o mesurament: Tracking per part de google per google analytics1 minut
    _gidGoogle AnalyticsFrom third partiesCookie d'anàlisi o mesurament: S'usa per limitar el percentatge de sol·licituds24 hores

ConfigureReject allAccept
Back to results
FI
3.261
2020 Frontiers in Neuroinformatics
Robust Monte-Carlo Simulations in Diffusion-MRI: Effect of the Substrate Complexity and Parameter Choice on the Reproducibility of Results.
Rafael-Patino J, Romascano D, Ramirez-Manzanares A, Canales-Rodríguez EJ, Girard G, Thiran JP

Limited service to collaborators of the network of Sisters Hospitalarias Centers. You will receive a message in your email with a link to download this article.

Abstract

Monte-Carlo Diffusion Simulations (MCDS) have been used extensively as a ground truth tool for the validation of microstructure models for Diffusion-Weighted MRI. However, methodological pitfalls in the design of the biomimicking geometrical configurations and the simulation parameters can lead to approximation biases. Such pitfalls affect the reliability of the estimated signal, as well as its validity and reproducibility as ground truth data. In this work, we first present a set of experiments in order to study three critical pitfalls encountered in the design of MCDS in the literature, namely, the number of simulated particles and time steps, simplifications in the intra-axonal substrate representation, and the impact of the substrate's size on the signal stemming from the extra-axonal space. The results obtained show important changes in the simulated signals and the recovered microstructure features when changes in those parameters are introduced. Thereupon, driven by our findings from the first studies, we outline a general framework able to generate complex substrates. We show the framework's capability to overcome the aforementioned simplifications by generating a complex crossing substrate, which preserves the volume in the crossing area and achieves a high packing density. The results presented in this work, along with the simulator developed, pave the way toward more realistic and reproducible Monte-Carlo simulations for Diffusion-Weighted MRI.
We are part of
HH Província España
Contact us

Avda. Jordà, 8, 08035 Barcelona
Contact phone: 935 480 105
E-mail: fundacio@fidmag.org
Online contact 

           

 

Reconocimientos a la calidad y la excelencia
Última modificación: 02/05/2024