Frontiers in Neuroinformatics (Aug 2023)

Perfusion-weighted software written in Python for DSC-MRI analysis

  • Sabela Fernández-Rodicio,
  • Gonzalo Ferro-Costas,
  • Ana Sampedro-Viana,
  • Marcos Bazarra-Barreiros,
  • Alba Ferreirós,
  • Esteban López-Arias,
  • María Pérez-Mato,
  • Alberto Ouro,
  • Alberto Ouro,
  • José M. Pumar,
  • José M. Pumar,
  • Antonio J. Mosqueira,
  • Antonio J. Mosqueira,
  • María Luz Alonso-Alonso,
  • José Castillo,
  • Pablo Hervella,
  • Ramón Iglesias-Rey

DOI
https://doi.org/10.3389/fninf.2023.1202156
Journal volume & issue
Vol. 17

Abstract

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IntroductionDynamic susceptibility-weighted contrast-enhanced (DSC) perfusion studies in magnetic resonance imaging (MRI) provide valuable data for studying vascular cerebral pathophysiology in different rodent models of brain diseases (stroke, tumor grading, and neurodegenerative models). The extraction of these hemodynamic parameters via DSC-MRI is based on tracer kinetic modeling, which can be solved using deconvolution-based methods, among others. Most of the post-processing software used in preclinical studies is home-built and custom-designed. Its use being, in most cases, limited to the institution responsible for the development. In this study, we designed a tool that performs the hemodynamic quantification process quickly and in a reliable way for research purposes.MethodsThe DSC-MRI quantification tool, developed as a Python project, performs the basic mathematical steps to generate the parametric maps: cerebral blood flow (CBF), cerebral blood volume (CBV), mean transit time (MTT), signal recovery (SR), and percentage signal recovery (PSR). For the validation process, a data set composed of MRI rat brain scans was evaluated: i) healthy animals, ii) temporal blood–brain barrier (BBB) dysfunction, iii) cerebral chronic hypoperfusion (CCH), iv) ischemic stroke, and v) glioblastoma multiforme (GBM) models. The resulting perfusion parameters were then compared with data retrieved from the literature.ResultsA total of 30 animals were evaluated with our DSC-MRI quantification tool. In all the models, the hemodynamic parameters reported from the literature are reproduced and they are in the same range as our results. The Bland–Altman plot used to describe the agreement between our perfusion quantitative analyses and literature data regarding healthy rats, stroke, and GBM models, determined that the agreement for CBV and MTT is higher than for CBF.ConclusionAn open-source, Python-based DSC post-processing software package that performs key quantitative perfusion parameters has been developed. Regarding the different animal models used, the results obtained are consistent and in good agreement with the physiological patterns and values reported in the literature. Our development has been built in a modular framework to allow code customization or the addition of alternative algorithms not yet implemented.

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