Quantitative error prediction of medical image registration using regression forests
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Published version
Author(s)
Sokooti, Hessam
Saygili, Gorkem
Glocker, Ben
Lelieveldt, Boudewijn PF
Staring, Marius
Type
Journal Article
Abstract
Predicting registration error can be useful for evaluation of registration procedures, which is important for the adoption of registration techniques in the clinic. In addition, quantitative error prediction can be helpful in improving the registration quality. The task of predicting registration error is demanding due to the lack of a ground truth in medical images. This paper proposes a new automatic method to predict the registration error in a quantitative manner, and is applied to chest CT scans. A random regression forest is utilized to predict the registration error locally. The forest is built with features related to the transformation model and features related to the dissimilarity after registration. The forest is trained and tested using manually annotated corresponding points between pairs of chest CT scans in two experiments: SPREAD (trained and tested on SPREAD) and inter-database (including three databases SPREAD, DIR-Lab-4DCT and DIR-Lab-COPDgene). The results show that the mean absolute errors of regression are 1.07 ± 1.86 and 1.76 ± 2.59 mm for the SPREAD and inter-database experiment, respectively. The overall accuracy of classification in three classes (correct, poor and wrong registration) is 90.7% and 75.4%, for SPREAD and inter-database respectively. The good performance of the proposed method enables important applications such as automatic quality control in large-scale image analysis.
Date Issued
2019-08-01
Date Acceptance
2019-05-10
Citation
Medical Image Analysis, 2019, 56, pp.110-121
ISSN
1361-8415
Publisher
Elsevier
Start Page
110
End Page
121
Journal / Book Title
Medical Image Analysis
Volume
56
Copyright Statement
© 2019 Elsevier Ltd. All rights reserved. This manuscript is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International Licence http://creativecommons.org/licenses/by-nc-nd/4.0/.
Identifier
https://www.ncbi.nlm.nih.gov/pubmed/31226661
PII: S1361-8415(18)30081-1
Subjects
Image registration
Registration accuracy
Regression forests
Uncertainty estimation
Publication Status
Published
Coverage Spatial
Netherlands
Date Publish Online
2019-05-11