An Efficient Framework for Accurate Arterial Input Selection in DSC-MRI of Glioma Brain Tumors

Introduction: Automatic and accurate arterial input function (AIF) selection has an essential role for quantification of cerebral perfusion hemodynamic parameters using dynamic susceptibility contrast magnetic resonance imaging (DSC-MRI). The purpose of this study is to develop an optimal automati...

Full description

Bibliographic Details
Main Authors: Rahimzadeh H., Fathi Kazerooni A., Deevband M. R., Saligheh Rad H.
Format: Article
Language:English
Published: Shiraz University of Medical Sciences 2019-02-01
Series:Journal of Biomedical Physics and Engineering
Subjects:
Online Access:http://jbpe.ir/Journal_OJS/JBPE/index.php/jbpe/article/view/899/472
id doaj-ab1a323394b14d4890d926079f0ef015
record_format Article
spelling doaj-ab1a323394b14d4890d926079f0ef0152020-11-24T20:57:18ZengShiraz University of Medical SciencesJournal of Biomedical Physics and Engineering2251-72002251-72002019-02-01916980An Efficient Framework for Accurate Arterial Input Selection in DSC-MRI of Glioma Brain TumorsRahimzadeh H.0Fathi Kazerooni A.1Deevband M. R.2Saligheh Rad H.3Quantitative Medical Imaging Systems Group, Research Center for Molecular and Cellular Imaging, Tehran University of Medical Sciences, Tehran, IranQuantitative Medical Imaging Systems Group, Research Center for Molecular and Cellular Imaging, Tehran University of Medical Sciences, Tehran, IranDepartment of Bioengineering and Medical Physics, Shahid Beheshti University of Medical Sciences, Tehran, IranDepartment of Biomedical Engineering and Medical Physics, School of Medicine, Tehran University of Medical Sciences, Tehran, IranIntroduction: Automatic and accurate arterial input function (AIF) selection has an essential role for quantification of cerebral perfusion hemodynamic parameters using dynamic susceptibility contrast magnetic resonance imaging (DSC-MRI). The purpose of this study is to develop an optimal automatic method for arterial input function determination in DSC-MRI of glioma brain tumors by using a new preprocessing method. Material and Methods: For this study, DSC-MR images of 43 patients with glioma brain tumors were retrieved retrospectively. Our proposed AIF selection framework consisted an effcient pre-processing step, through which non-arterial curves such as tumorous, tissue, noisy and partial-volume affected curves were excluded, followed by AIF selection through agglomerative hierarchical (AH) clustering method. The performance of automatic AIF clustering was compared with manual AIF selection performed by an experienced radiologist, based on curve shape parameters, i.e. maximum peak (MP), full-width-at-half-maximum (FWHM), M (=MP/ (TTP × FWHM)) and root mean square error (RMSE). Results: Mean values of AIFs shape parameters were compared with those derived from manually selected AIFs by two-tailed paired t-test. The results showed statistically insignificant differences in MP, FWHM, and M parameters and lower RMSE, approving the resemblance of the selected AIF with the gold standard. The intraclass correlation coefficient and coefficients of variation percent showed a better agreement between manual AIF and our proposed AIF selection than previously proposed methods. Conclusion: The results of current work suggest that by using efficient preprocessing steps, the accuracy of automatic AIF selection could be improved and this method appears promising for efficient and accurate clinical applications.http://jbpe.ir/Journal_OJS/JBPE/index.php/jbpe/article/view/899/472PerfusionDynamic Susceptibility Contrast Enhanced MRIArterial Input FunctionCluster Analysis
collection DOAJ
language English
format Article
sources DOAJ
author Rahimzadeh H.
Fathi Kazerooni A.
Deevband M. R.
Saligheh Rad H.
spellingShingle Rahimzadeh H.
Fathi Kazerooni A.
Deevband M. R.
Saligheh Rad H.
An Efficient Framework for Accurate Arterial Input Selection in DSC-MRI of Glioma Brain Tumors
Journal of Biomedical Physics and Engineering
Perfusion
Dynamic Susceptibility Contrast Enhanced MRI
Arterial Input Function
Cluster Analysis
author_facet Rahimzadeh H.
Fathi Kazerooni A.
Deevband M. R.
Saligheh Rad H.
author_sort Rahimzadeh H.
title An Efficient Framework for Accurate Arterial Input Selection in DSC-MRI of Glioma Brain Tumors
title_short An Efficient Framework for Accurate Arterial Input Selection in DSC-MRI of Glioma Brain Tumors
title_full An Efficient Framework for Accurate Arterial Input Selection in DSC-MRI of Glioma Brain Tumors
title_fullStr An Efficient Framework for Accurate Arterial Input Selection in DSC-MRI of Glioma Brain Tumors
title_full_unstemmed An Efficient Framework for Accurate Arterial Input Selection in DSC-MRI of Glioma Brain Tumors
title_sort efficient framework for accurate arterial input selection in dsc-mri of glioma brain tumors
publisher Shiraz University of Medical Sciences
series Journal of Biomedical Physics and Engineering
issn 2251-7200
2251-7200
publishDate 2019-02-01
description Introduction: Automatic and accurate arterial input function (AIF) selection has an essential role for quantification of cerebral perfusion hemodynamic parameters using dynamic susceptibility contrast magnetic resonance imaging (DSC-MRI). The purpose of this study is to develop an optimal automatic method for arterial input function determination in DSC-MRI of glioma brain tumors by using a new preprocessing method. Material and Methods: For this study, DSC-MR images of 43 patients with glioma brain tumors were retrieved retrospectively. Our proposed AIF selection framework consisted an effcient pre-processing step, through which non-arterial curves such as tumorous, tissue, noisy and partial-volume affected curves were excluded, followed by AIF selection through agglomerative hierarchical (AH) clustering method. The performance of automatic AIF clustering was compared with manual AIF selection performed by an experienced radiologist, based on curve shape parameters, i.e. maximum peak (MP), full-width-at-half-maximum (FWHM), M (=MP/ (TTP × FWHM)) and root mean square error (RMSE). Results: Mean values of AIFs shape parameters were compared with those derived from manually selected AIFs by two-tailed paired t-test. The results showed statistically insignificant differences in MP, FWHM, and M parameters and lower RMSE, approving the resemblance of the selected AIF with the gold standard. The intraclass correlation coefficient and coefficients of variation percent showed a better agreement between manual AIF and our proposed AIF selection than previously proposed methods. Conclusion: The results of current work suggest that by using efficient preprocessing steps, the accuracy of automatic AIF selection could be improved and this method appears promising for efficient and accurate clinical applications.
topic Perfusion
Dynamic Susceptibility Contrast Enhanced MRI
Arterial Input Function
Cluster Analysis
url http://jbpe.ir/Journal_OJS/JBPE/index.php/jbpe/article/view/899/472
work_keys_str_mv AT rahimzadehh anefficientframeworkforaccuratearterialinputselectionindscmriofgliomabraintumors
AT fathikazeroonia anefficientframeworkforaccuratearterialinputselectionindscmriofgliomabraintumors
AT deevbandmr anefficientframeworkforaccuratearterialinputselectionindscmriofgliomabraintumors
AT salighehradh anefficientframeworkforaccuratearterialinputselectionindscmriofgliomabraintumors
AT rahimzadehh efficientframeworkforaccuratearterialinputselectionindscmriofgliomabraintumors
AT fathikazeroonia efficientframeworkforaccuratearterialinputselectionindscmriofgliomabraintumors
AT deevbandmr efficientframeworkforaccuratearterialinputselectionindscmriofgliomabraintumors
AT salighehradh efficientframeworkforaccuratearterialinputselectionindscmriofgliomabraintumors
_version_ 1716788102676086784