Abstract

Automatic and accurate segmentation of the prostate is still a challenging task due to intensity inhomogeneity and complicated deformation of MR images. To tackle these problems with multi-atlas segmentation, in this paper, we propose a new metric for image registration and new descriptor for label fusion. First, to reduce the amount of edges in entropic graph, a modified $\alpha $ -mutual information ( $\alpha $ -MI) based on fast minimal spanning tree (MST) is implemented for deformable registration. Second, localized $\alpha $ -MI allowing for the spatial information is proposed with the stochastic gradient optimization, and the feature space is encoded by a sparse auto-encoder. Finally, a multi-scale descriptor utilizing local self-similarity is integrated into the patch-based label fusion to obtain final segmentation. Experiments were performed on two subsets of totally 46 T2-weighted prostate MR images from 46 patients. Compared to $\alpha $ -MI based on ${k}$ -nearest neighbor graph, the registration time of $\alpha $ -MI based on fast MST can be reduced by almost half. The median Dice overlap of registration using localized $\alpha $ -MI on one subset is shown to improve significantly from 0.725 to 0.764 ( $p=1.14\times 10^{-5}$ ), compared to using $\alpha $ -MI without the spatial information. The median Dice overlap of prostate segmentation using the proposed method on 20 testing images of another subset is 0.871, and the median Hausdorff distance is 8.013 mm, which demonstrate a comparable accuracy to state-of-the-art methods.

Highlights

  • Magnetic Resonance (MR) imaging is increasingly used for the clinical workup of prostate cancer due to its better soft tissue contrast [1]

  • In this paper, we addressed the modification of deformable registration and label fusion to improve the segmentation of prostate MR

  • The graph-based α-mutual information (α-mutual information (MI)) measure was implemented by the construction of fast minimal spanning tree (MST)

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Summary

Introduction

Magnetic Resonance (MR) imaging is increasingly used for the clinical workup of prostate cancer due to its better soft tissue contrast [1]. Segmentation of the prostate gland can aid various tasks. To predict the pathological stage of prostate cancer, one may achieve volume estimation by accurate prostate boundaries. The prognosis of disease and treatment response may benefit from this estimation [2]. The information of prostate relative to adjacent organs is an important. The associate editor coordinating the review of this manuscript and approving it for publication was Bora Onat. Part of treatment planning in radiotherapy [3]. For computeraided detection of prostate cancer, the region of interest needs to be obtained on the preprocessing stage [4]

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