Quantification of aortic pulse wave velocity from a population based cohort: a fully automatic method

Abstract Background Aortic pulse wave velocity (PWV) is an indicator of aortic stiffness and is used as a predictor of adverse cardiovascular events. PWV can be non-invasively assessed using magnetic resonance imaging (MRI). PWV computation requires two components, the length of the aortic arch and...

Full description

Bibliographic Details
Main Authors: Rahil Shahzad, Arun Shankar, Raquel Amier, Robin Nijveldt, Jos J. M. Westenberg, Albert de Roos, Boudewijn P. F. Lelieveldt, Rob J. van der Geest, on behalf of the Heart Brain Connection study group
Format: Article
Language:English
Published: BMC 2019-05-01
Series:Journal of Cardiovascular Magnetic Resonance
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12968-019-0530-y
id doaj-5161ba9d6626466195a6facafa2241b7
record_format Article
spelling doaj-5161ba9d6626466195a6facafa2241b72020-11-25T03:01:32ZengBMCJournal of Cardiovascular Magnetic Resonance1532-429X2019-05-0121111410.1186/s12968-019-0530-yQuantification of aortic pulse wave velocity from a population based cohort: a fully automatic methodRahil Shahzad0Arun Shankar1Raquel Amier2Robin Nijveldt3Jos J. M. Westenberg4Albert de Roos5Boudewijn P. F. Lelieveldt6Rob J. van der Geest7on behalf of the Heart Brain Connection study groupDepartment of Radiology, Leiden University Medical CenterDepartment of Radiology, Leiden University Medical CenterDepartment of Cardiology, VU University Medical CenterDepartment of Cardiology, VU University Medical CenterDepartment of Radiology, Leiden University Medical CenterDepartment of Radiology, Leiden University Medical CenterDepartment of Radiology, Leiden University Medical CenterDepartment of Radiology, Leiden University Medical CenterAbstract Background Aortic pulse wave velocity (PWV) is an indicator of aortic stiffness and is used as a predictor of adverse cardiovascular events. PWV can be non-invasively assessed using magnetic resonance imaging (MRI). PWV computation requires two components, the length of the aortic arch and the time taken for the systolic pressure wave to travel through the aortic arch. The aortic length is calculated using a multi-slice 3D scan and the transit time is computed using a 2D velocity encoded MRI (VE) scan. In this study we present and evaluate an automatic method to quantify the aortic pulse wave velocity using a large population-based cohort. Methods For this study 212 subjects were retrospectively selected from a large multi-center heart-brain connection cohort. For each subject a multi-slice 3D scan of the aorta was acquired in an oblique-sagittal plane and a 2D VE scan acquired in a transverse plane cutting through the proximal ascending and descending aorta. PWV was calculated in three stages: (i) a multi-atlas-based segmentation method was developed to segment the aortic arch from the multi-slice 3D scan and subsequently estimate the length of the proximal aorta, (ii) an algorithm that delineates the proximal ascending and descending aorta from the time-resolved 2D VE scan and subsequently obtains the velocity-time flow curves was also developed, and (iii) automatic methods that can compute the transit time from the velocity-time flow curves were implemented and investigated. Finally the PWV was obtained by combining the aortic length and the transit time. Results Quantitative evaluation with respect to the length of the aortic arch as well as the computed PWV were performend by comparing the results of the novel automatic method to those obtained manually. The mean absolute difference in aortic length obtained automatically as compared to those obtained manually was 3.3 ± 2.8 mm (p < 0.05), the manual inter-observer variability on a subset of 45 scans was 3.4 ± 3.4 mm (p = 0.49). Bland-Altman analysis between the automataic method and the manual methods showed a bias of 0.0 (-5.0,5.0) m/s for the foot-to-foot approach, -0.1 (-1.2, 1.1) and -0.2 (-2.6, 2.1) m/s for the half-max and the cross-correlation methods, respectively. Conclusion We proposed and evaluated a fully automatic method to calculate the PWV on a large set of multi-center MRI scans. It was observed that the overall results obtained had very good agreement with manual analysis. Our proposed automatic method would be very beneficial for large population based studies, where manual analysis requires a lot of manpower.http://link.springer.com/article/10.1186/s12968-019-0530-yPulse wave velocityVelocity encoded MRIImage registrationCenterline estimationMulti-atlas-based segmentation
collection DOAJ
language English
format Article
sources DOAJ
author Rahil Shahzad
Arun Shankar
Raquel Amier
Robin Nijveldt
Jos J. M. Westenberg
Albert de Roos
Boudewijn P. F. Lelieveldt
Rob J. van der Geest
on behalf of the Heart Brain Connection study group
spellingShingle Rahil Shahzad
Arun Shankar
Raquel Amier
Robin Nijveldt
Jos J. M. Westenberg
Albert de Roos
Boudewijn P. F. Lelieveldt
Rob J. van der Geest
on behalf of the Heart Brain Connection study group
Quantification of aortic pulse wave velocity from a population based cohort: a fully automatic method
Journal of Cardiovascular Magnetic Resonance
Pulse wave velocity
Velocity encoded MRI
Image registration
Centerline estimation
Multi-atlas-based segmentation
author_facet Rahil Shahzad
Arun Shankar
Raquel Amier
Robin Nijveldt
Jos J. M. Westenberg
Albert de Roos
Boudewijn P. F. Lelieveldt
Rob J. van der Geest
on behalf of the Heart Brain Connection study group
author_sort Rahil Shahzad
title Quantification of aortic pulse wave velocity from a population based cohort: a fully automatic method
title_short Quantification of aortic pulse wave velocity from a population based cohort: a fully automatic method
title_full Quantification of aortic pulse wave velocity from a population based cohort: a fully automatic method
title_fullStr Quantification of aortic pulse wave velocity from a population based cohort: a fully automatic method
title_full_unstemmed Quantification of aortic pulse wave velocity from a population based cohort: a fully automatic method
title_sort quantification of aortic pulse wave velocity from a population based cohort: a fully automatic method
publisher BMC
series Journal of Cardiovascular Magnetic Resonance
issn 1532-429X
publishDate 2019-05-01
description Abstract Background Aortic pulse wave velocity (PWV) is an indicator of aortic stiffness and is used as a predictor of adverse cardiovascular events. PWV can be non-invasively assessed using magnetic resonance imaging (MRI). PWV computation requires two components, the length of the aortic arch and the time taken for the systolic pressure wave to travel through the aortic arch. The aortic length is calculated using a multi-slice 3D scan and the transit time is computed using a 2D velocity encoded MRI (VE) scan. In this study we present and evaluate an automatic method to quantify the aortic pulse wave velocity using a large population-based cohort. Methods For this study 212 subjects were retrospectively selected from a large multi-center heart-brain connection cohort. For each subject a multi-slice 3D scan of the aorta was acquired in an oblique-sagittal plane and a 2D VE scan acquired in a transverse plane cutting through the proximal ascending and descending aorta. PWV was calculated in three stages: (i) a multi-atlas-based segmentation method was developed to segment the aortic arch from the multi-slice 3D scan and subsequently estimate the length of the proximal aorta, (ii) an algorithm that delineates the proximal ascending and descending aorta from the time-resolved 2D VE scan and subsequently obtains the velocity-time flow curves was also developed, and (iii) automatic methods that can compute the transit time from the velocity-time flow curves were implemented and investigated. Finally the PWV was obtained by combining the aortic length and the transit time. Results Quantitative evaluation with respect to the length of the aortic arch as well as the computed PWV were performend by comparing the results of the novel automatic method to those obtained manually. The mean absolute difference in aortic length obtained automatically as compared to those obtained manually was 3.3 ± 2.8 mm (p < 0.05), the manual inter-observer variability on a subset of 45 scans was 3.4 ± 3.4 mm (p = 0.49). Bland-Altman analysis between the automataic method and the manual methods showed a bias of 0.0 (-5.0,5.0) m/s for the foot-to-foot approach, -0.1 (-1.2, 1.1) and -0.2 (-2.6, 2.1) m/s for the half-max and the cross-correlation methods, respectively. Conclusion We proposed and evaluated a fully automatic method to calculate the PWV on a large set of multi-center MRI scans. It was observed that the overall results obtained had very good agreement with manual analysis. Our proposed automatic method would be very beneficial for large population based studies, where manual analysis requires a lot of manpower.
topic Pulse wave velocity
Velocity encoded MRI
Image registration
Centerline estimation
Multi-atlas-based segmentation
url http://link.springer.com/article/10.1186/s12968-019-0530-y
work_keys_str_mv AT rahilshahzad quantificationofaorticpulsewavevelocityfromapopulationbasedcohortafullyautomaticmethod
AT arunshankar quantificationofaorticpulsewavevelocityfromapopulationbasedcohortafullyautomaticmethod
AT raquelamier quantificationofaorticpulsewavevelocityfromapopulationbasedcohortafullyautomaticmethod
AT robinnijveldt quantificationofaorticpulsewavevelocityfromapopulationbasedcohortafullyautomaticmethod
AT josjmwestenberg quantificationofaorticpulsewavevelocityfromapopulationbasedcohortafullyautomaticmethod
AT albertderoos quantificationofaorticpulsewavevelocityfromapopulationbasedcohortafullyautomaticmethod
AT boudewijnpflelieveldt quantificationofaorticpulsewavevelocityfromapopulationbasedcohortafullyautomaticmethod
AT robjvandergeest quantificationofaorticpulsewavevelocityfromapopulationbasedcohortafullyautomaticmethod
AT onbehalfoftheheartbrainconnectionstudygroup quantificationofaorticpulsewavevelocityfromapopulationbasedcohortafullyautomaticmethod
_version_ 1724693361162452992