Cargando…

Diffusion-based microstructure models in brain tumours: Fitting in presence of a model-microstructure mismatch

Diffusion-based biophysical models have been used in several recent works to study the microenvironment of brain tumours. While the pathophysiological interpretation of the parameters of these models remains unclear, their use as signal representations may yield useful biomarkers for monitoring the...

Descripción completa

Detalles Bibliográficos
Autores principales: Villani, Umberto, Silvestri, Erica, Castellaro, Marco, Schiavi, Simona, Anglani, Mariagiulia, Facchini, Silvia, Monai, Elena, D'Avella, Domenico, Della Puppa, Alessandro, Cecchin, Diego, Corbetta, Maurizio, Bertoldo, Alessandra
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8881729/
https://www.ncbi.nlm.nih.gov/pubmed/35220105
http://dx.doi.org/10.1016/j.nicl.2022.102968
_version_ 1784659538725568512
author Villani, Umberto
Silvestri, Erica
Castellaro, Marco
Schiavi, Simona
Anglani, Mariagiulia
Facchini, Silvia
Monai, Elena
D'Avella, Domenico
Della Puppa, Alessandro
Cecchin, Diego
Corbetta, Maurizio
Bertoldo, Alessandra
author_facet Villani, Umberto
Silvestri, Erica
Castellaro, Marco
Schiavi, Simona
Anglani, Mariagiulia
Facchini, Silvia
Monai, Elena
D'Avella, Domenico
Della Puppa, Alessandro
Cecchin, Diego
Corbetta, Maurizio
Bertoldo, Alessandra
author_sort Villani, Umberto
collection PubMed
description Diffusion-based biophysical models have been used in several recent works to study the microenvironment of brain tumours. While the pathophysiological interpretation of the parameters of these models remains unclear, their use as signal representations may yield useful biomarkers for monitoring the treatment and the progression of this complex and heterogeneous disease. Up to now, however, no study was devoted to assessing the mathematical stability of these approaches in cancerous brain regions. To this end, we analyzed in 11 brain tumour patients the fitting results of two microstructure models (Neurite Orientation Dispersion and Density Imaging and the Spherical Mean Technique) and of a signal representation (Diffusion Kurtosis Imaging) to compare the reliability of their parameter estimates in the healthy brain and in the tumoral lesion. The framework of our between-tissue analysis included the computation of 1) the residual sum of squares as a goodness-of-fit measure 2) the standard deviation of the models’ derived metrics and 3) models’ sensitivity functions to analyze the suitability of the employed protocol for parameter estimation in the different microenvironments. Our results revealed no issues concerning the fitting of the models in the tumoral lesion, with similar goodness of fit and parameter precisions occurring in normal appearing and pathological tissues. Lastly, with the aim of highlight possible biomarkers, in our analysis we briefly discuss the correlation between the metrics of the three techniques, identifying groups of indices which are significantly collinear in all tissues and thus provide no additional information when jointly used in data-driven analyses.
format Online
Article
Text
id pubmed-8881729
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-88817292022-03-02 Diffusion-based microstructure models in brain tumours: Fitting in presence of a model-microstructure mismatch Villani, Umberto Silvestri, Erica Castellaro, Marco Schiavi, Simona Anglani, Mariagiulia Facchini, Silvia Monai, Elena D'Avella, Domenico Della Puppa, Alessandro Cecchin, Diego Corbetta, Maurizio Bertoldo, Alessandra Neuroimage Clin Regular Article Diffusion-based biophysical models have been used in several recent works to study the microenvironment of brain tumours. While the pathophysiological interpretation of the parameters of these models remains unclear, their use as signal representations may yield useful biomarkers for monitoring the treatment and the progression of this complex and heterogeneous disease. Up to now, however, no study was devoted to assessing the mathematical stability of these approaches in cancerous brain regions. To this end, we analyzed in 11 brain tumour patients the fitting results of two microstructure models (Neurite Orientation Dispersion and Density Imaging and the Spherical Mean Technique) and of a signal representation (Diffusion Kurtosis Imaging) to compare the reliability of their parameter estimates in the healthy brain and in the tumoral lesion. The framework of our between-tissue analysis included the computation of 1) the residual sum of squares as a goodness-of-fit measure 2) the standard deviation of the models’ derived metrics and 3) models’ sensitivity functions to analyze the suitability of the employed protocol for parameter estimation in the different microenvironments. Our results revealed no issues concerning the fitting of the models in the tumoral lesion, with similar goodness of fit and parameter precisions occurring in normal appearing and pathological tissues. Lastly, with the aim of highlight possible biomarkers, in our analysis we briefly discuss the correlation between the metrics of the three techniques, identifying groups of indices which are significantly collinear in all tissues and thus provide no additional information when jointly used in data-driven analyses. Elsevier 2022-02-18 /pmc/articles/PMC8881729/ /pubmed/35220105 http://dx.doi.org/10.1016/j.nicl.2022.102968 Text en © 2022 The Authors. Published by Elsevier Inc. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Regular Article
Villani, Umberto
Silvestri, Erica
Castellaro, Marco
Schiavi, Simona
Anglani, Mariagiulia
Facchini, Silvia
Monai, Elena
D'Avella, Domenico
Della Puppa, Alessandro
Cecchin, Diego
Corbetta, Maurizio
Bertoldo, Alessandra
Diffusion-based microstructure models in brain tumours: Fitting in presence of a model-microstructure mismatch
title Diffusion-based microstructure models in brain tumours: Fitting in presence of a model-microstructure mismatch
title_full Diffusion-based microstructure models in brain tumours: Fitting in presence of a model-microstructure mismatch
title_fullStr Diffusion-based microstructure models in brain tumours: Fitting in presence of a model-microstructure mismatch
title_full_unstemmed Diffusion-based microstructure models in brain tumours: Fitting in presence of a model-microstructure mismatch
title_short Diffusion-based microstructure models in brain tumours: Fitting in presence of a model-microstructure mismatch
title_sort diffusion-based microstructure models in brain tumours: fitting in presence of a model-microstructure mismatch
topic Regular Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8881729/
https://www.ncbi.nlm.nih.gov/pubmed/35220105
http://dx.doi.org/10.1016/j.nicl.2022.102968
work_keys_str_mv AT villaniumberto diffusionbasedmicrostructuremodelsinbraintumoursfittinginpresenceofamodelmicrostructuremismatch
AT silvestrierica diffusionbasedmicrostructuremodelsinbraintumoursfittinginpresenceofamodelmicrostructuremismatch
AT castellaromarco diffusionbasedmicrostructuremodelsinbraintumoursfittinginpresenceofamodelmicrostructuremismatch
AT schiavisimona diffusionbasedmicrostructuremodelsinbraintumoursfittinginpresenceofamodelmicrostructuremismatch
AT anglanimariagiulia diffusionbasedmicrostructuremodelsinbraintumoursfittinginpresenceofamodelmicrostructuremismatch
AT facchinisilvia diffusionbasedmicrostructuremodelsinbraintumoursfittinginpresenceofamodelmicrostructuremismatch
AT monaielena diffusionbasedmicrostructuremodelsinbraintumoursfittinginpresenceofamodelmicrostructuremismatch
AT davelladomenico diffusionbasedmicrostructuremodelsinbraintumoursfittinginpresenceofamodelmicrostructuremismatch
AT dellapuppaalessandro diffusionbasedmicrostructuremodelsinbraintumoursfittinginpresenceofamodelmicrostructuremismatch
AT cecchindiego diffusionbasedmicrostructuremodelsinbraintumoursfittinginpresenceofamodelmicrostructuremismatch
AT corbettamaurizio diffusionbasedmicrostructuremodelsinbraintumoursfittinginpresenceofamodelmicrostructuremismatch
AT bertoldoalessandra diffusionbasedmicrostructuremodelsinbraintumoursfittinginpresenceofamodelmicrostructuremismatch