TY - JOUR
T1 - A framework for optimal kernel-based manifold embedding of medical image data
AU - Zimmer, Veronika A.
AU - Lekadir, Karim
AU - Hoogendoorn, Corné
AU - Frangi, Alejandro F.
AU - Piella, Gemma
N1 - Funding Information:
V. A. Zimmer is supported by grant FI-DGR 2013 (2013 FI_B00159) from Generalitat de Catalunya. K. Lekadir is supported by a Juan de la Cierva research fellowship from the Spanish Ministry of Science and Innovation.
Publisher Copyright:
© 2014 Elsevier Ltd.
PY - 2015/4/1
Y1 - 2015/4/1
N2 - Kernel-based dimensionality reduction is a widely used technique in medical image analysis. To fully unravel the underlying nonlinear manifold the selection of an adequate kernel function and of its free parameters is critical. In practice, however, the kernel function is generally chosen as Gaussian or polynomial and such standard kernels might not always be optimal for a given image dataset or application. In this paper, we present a study on the effect of the kernel functions in nonlinear manifold embedding of medical image data. To this end, we first carry out a literature review on existing advanced kernels developed in the statistics, machine learning, and signal processing communities. In addition, we implement kernel-based formulations of well-known nonlinear dimensional reduction techniques such as Isomap and Locally Linear Embedding, thus obtaining a unified framework for manifold embedding using kernels. Subsequently, we present a method to automatically choose a kernel function and its associated parameters from a pool of kernel candidates, with the aim to generate the most optimal manifold embeddings. Furthermore, we show how the calculated selection measures can be extended to take into account the spatial relationships in images, or used to combine several kernels to further improve the embedding results. Experiments are then carried out on various synthetic and phantom datasets for numerical assessment of the methods. Furthermore, the workflow is applied to real data that include brain manifolds and multispectral images to demonstrate the importance of the kernel selection in the analysis of high-dimensional medical images.
AB - Kernel-based dimensionality reduction is a widely used technique in medical image analysis. To fully unravel the underlying nonlinear manifold the selection of an adequate kernel function and of its free parameters is critical. In practice, however, the kernel function is generally chosen as Gaussian or polynomial and such standard kernels might not always be optimal for a given image dataset or application. In this paper, we present a study on the effect of the kernel functions in nonlinear manifold embedding of medical image data. To this end, we first carry out a literature review on existing advanced kernels developed in the statistics, machine learning, and signal processing communities. In addition, we implement kernel-based formulations of well-known nonlinear dimensional reduction techniques such as Isomap and Locally Linear Embedding, thus obtaining a unified framework for manifold embedding using kernels. Subsequently, we present a method to automatically choose a kernel function and its associated parameters from a pool of kernel candidates, with the aim to generate the most optimal manifold embeddings. Furthermore, we show how the calculated selection measures can be extended to take into account the spatial relationships in images, or used to combine several kernels to further improve the embedding results. Experiments are then carried out on various synthetic and phantom datasets for numerical assessment of the methods. Furthermore, the workflow is applied to real data that include brain manifolds and multispectral images to demonstrate the importance of the kernel selection in the analysis of high-dimensional medical images.
KW - kernel principal component analysis
KW - manifold embedding quality
KW - multilevel kernel combinations
KW - nonlinear dimensionality reduction
UR - https://www.scopus.com/pages/publications/84923357983
U2 - 10.1016/j.compmedimag.2014.06.001
DO - 10.1016/j.compmedimag.2014.06.001
M3 - Article
C2 - 25008538
AN - SCOPUS:84923357983
SN - 0895-6111
VL - 41
SP - 93
EP - 107
JO - Computerized Medical Imaging and Graphics
JF - Computerized Medical Imaging and Graphics
ER -