Piecewise affine registration of biological images for volume reconstruction

被引:59
作者
Pitiot, A
Bardinet, E
Thompson, PM
Malandain, G
机构
[1] Mirada Solutions, Ltd., Oxford, OX1 2EP, Level 1
[2] EPIDAURE Laboratory, INRIA, Sophia Antipolis
[3] Laboratory of Neuro Imaging, UCLA School of Medicine, Los Angeles
[4] CNRS, UPR640-LENA, Paris
关键词
Clustering; Histology; MRI; Reconstruction; Registration;
D O I
10.1016/j.media.2005.03.008
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
This manuscript tackles the reconstruction of 3-D volumes via mono-modal registration of series of 2-D biological images (histological sections, autoradiographs, cryosections, etc.). The process of acquiring these images typically induces composite transformations that we model as a number of rigid or affine local transformations embedded in an elastic one. We propose a registration approach closely derived from this model. Given a pair of input images, we first compute a dense similarity field between them with a block matching algorithm. We use as a similarity measure an extension of the classical correlation coefficient that improves the consistency of the field. A hierarchical clustering algorithm then automatically partitions the field into a number of classes from which we extract independent pairs of sub-images. Our clustering algorithm relies on the Earth mover's distribution metric and is additionally guided by robust least-square estimation of the transformations associated with each cluster. Finally, the pairs of sub-images are, independently, affinely registered and a hybrid affine/non-linear interpolation scheme is used to compose the output registered image. We investigate the behavior of our approach on several batches of histological data and discuss its sensitivity to parameters and noise. © 2005 Elsevier B.V. All rights reserved.
引用
收藏
页码:465 / 483
页数:19
相关论文
共 35 条
[1]  
Ashburner J., Friston K.J., Nonlinear spatial normalization using basis functions, Human Brain Mapping, 7, 4, pp. 254-266, (1999)
[2]  
Backer E., Computer-assisted Reasoning in Cluster Analysis, (1995)
[3]  
Cohen F., Yang Z., Huang Z., Nissanov J., Automatic matching of homologous histological sections, IEEE Transaction on Biomedical Engineering, 45, 5, pp. 642-649, (1998)
[4]  
Davatzikos C., Spatial transformation and registration of brain images using elastically deformable models, Computer Vision and Image Understanding, 66, 2, pp. 207-222, (1997)
[5]  
Davies D.L., Bouldin D.W., A cluster separation measure, IEEE Transactions on Pattern Analysis and Machine Intelligence, 1, pp. 224-227, (1979)
[6]  
Deverell M., Salisbury J., Cookson M., Holman J., Dykes E., Whimster F., Three-dimensional reconstruction: methods of improving image registration and interpretation, Analytical Cellular Pathology, 5, 5, pp. 253-263, (1993)
[7]  
Feldmar J., Ayache N., Rigid, affine and locally affine registration of free-form surfaces, The International Journal of Computer Vision, 18, 2, (1996)
[8]  
Ford-Holevinski T., Castle M., Herman J., Watson S., Microcomputerbased three-dimensional reconstruction of in situ hybridization autoradiographs, Journal of Chemical Neuroanatomy, 4, 5, pp. 373-385, (1991)
[9]  
Gee J.C., Reivich M., Bajcsy R., Elastically deforming 3D atlas to match anatomical brain images, Journal of Computer Assisted Tomography, 17, 2, pp. 225-236, (1993)
[10]  
Goldszal A., Tretiak O., Liu D., Hand P., Multimodality multidimensional image analysis of cortical and subcortical plasticity in the rat brain, Annal of Biomedical Engineering, 24, 3, pp. 430-439, (1996)