Evaluation of a novel elastic registration algorithm for spinal imaging data - a pilot clinical study
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Evaluation of a novel elastic registration algorithm for spinal imaging data - a pilot clinical study. / Rashad, Ashkan; Heiland, Max; Hiepe, Patrick; Nasirpour, Alireza; Rendenbach, Carsten; Keuchel, Jens; Regier, Marc; Al-Dam, Ahmed.
in: INT J MED ROBOT COMP, Jahrgang 15, Nr. 3, 06.2019, S. e1991.Publikationen: SCORING: Beitrag in Fachzeitschrift/Zeitung › SCORING: Zeitschriftenaufsatz › Forschung › Begutachtung
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TY - JOUR
T1 - Evaluation of a novel elastic registration algorithm for spinal imaging data - a pilot clinical study
AU - Rashad, Ashkan
AU - Heiland, Max
AU - Hiepe, Patrick
AU - Nasirpour, Alireza
AU - Rendenbach, Carsten
AU - Keuchel, Jens
AU - Regier, Marc
AU - Al-Dam, Ahmed
N1 - This article is protected by copyright. All rights reserved.
PY - 2019/6
Y1 - 2019/6
N2 - BACKGROUND: Rigid image coregistration is an established technique that allows spatial aligning. However, rigid fusion is prone to deformation of the imaged anatomies. In this work, a novel fully automated elastic image registration method is evaluated.METHODS: Cervical CT and MRI data of 10 patients were evaluated. The MRI was acquired with the patient in neutral, flexed, and rotated head position. Vertebrawise rigid fusions were performed to transfer bony landmarks for each vertebra from the CT to the MRI space serving as a reference.RESULTS: Elastic fusion of 3D MRI data showed the highest image registration accuracy (target registration error of 3.26 mm with 95% confidence). Further, an elastic fusion of 2D axial MRI data (<4.75 mm with 95% c.) was more reliable than for 2D sagittal sequences (<6.02 mm with 95% c.).CONCLUSIONS: The novel method enables elastic MRI-to-CT image coregistration for cervical indications with changes of the head position.
AB - BACKGROUND: Rigid image coregistration is an established technique that allows spatial aligning. However, rigid fusion is prone to deformation of the imaged anatomies. In this work, a novel fully automated elastic image registration method is evaluated.METHODS: Cervical CT and MRI data of 10 patients were evaluated. The MRI was acquired with the patient in neutral, flexed, and rotated head position. Vertebrawise rigid fusions were performed to transfer bony landmarks for each vertebra from the CT to the MRI space serving as a reference.RESULTS: Elastic fusion of 3D MRI data showed the highest image registration accuracy (target registration error of 3.26 mm with 95% confidence). Further, an elastic fusion of 2D axial MRI data (<4.75 mm with 95% c.) was more reliable than for 2D sagittal sequences (<6.02 mm with 95% c.).CONCLUSIONS: The novel method enables elastic MRI-to-CT image coregistration for cervical indications with changes of the head position.
KW - Journal Article
U2 - 10.1002/rcs.1991
DO - 10.1002/rcs.1991
M3 - SCORING: Journal article
C2 - 30758130
VL - 15
SP - e1991
JO - INT J MED ROBOT COMP
JF - INT J MED ROBOT COMP
SN - 1478-5951
IS - 3
ER -