Abstract

BackgroundSegmenting the hippocampal subfields accurately from brain magnetic resonance (MR) images is a challenging task in medical image analysis. Due to the small structural size and the morphological complexity of the hippocampal subfields, the traditional segmentation methods are hard to obtain the ideal segmentation result.MethodsIn this paper, we proposed a hippocampal subfields segmentation method using generative adversarial networks. The proposed method can achieve the pixel-level classification of brain MR images by building an UG-net model and an adversarial model and training the two models against each other alternately. UG-net extracts local information and retains the interrelationship features between pixels. Moreover, the adversarial training implements spatial consistency among the generated class labels and smoothens the edges of class labels on segmented region.ResultsThe evaluation has performed on the dataset obtained from center for imaging of neurodegenerative diseases (CIND) for CA1, CA2, DG, CA3, Head, Tail, SUB, ERC and PHG in hippocampal subfields, resulting in the dice similarity coefficient (DSC) of 0.919, 0.648, 0.903, 0.673, 0.929, 0.913, 0.906, 0.884 and 0.889 respectively. For the large subfields, such as Head and CA1 of hippocampus, the DSC was increased by 3.9% and 9.03% than state-of-the-art approaches, while for the smaller subfields, such as ERC and PHG, the segmentation accuracy was significantly increased 20.93% and 16.30% respectively.ConclusionThe results show the improvement in performance of the proposed method, compared with other methods, which include approaches based on multi-atlas, hierarchical multi-atlas, dictionary learning and sparse representation and CNN. In implementation, the proposed method provides better results in hippocampal subfields segmentation.

Highlights

  • Segmenting the hippocampal subfields accurately from brain magnetic resonance (MR) images is a challenging task in medical image analysis

  • Results we evaluate the proposed generative adversarial networks (GAN) method by using the MRI images of several subjects, which are different from the subjects for training the model

  • The experiment was performed by using UG-net and our method with GAN respectively

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Summary

Introduction

Segmenting the hippocampal subfields accurately from brain magnetic resonance (MR) images is a challenging task in medical image analysis. Patch-based methods [7, 8] based on multi-atlas segmentations, which identified local similarities between the atlases and the target image at certain patch level, effectively eliminated the registration errors caused by the registration between the atlases and target image. Atlas patches with high similarity might still matched to the wrong labels because image similarities over small image patch may lead to the local optima. To avoid being trapped into the local optima, sparse coding methods [9, 10] were proposed to ensure that several highly relevant atlas patches are selected to represent the target patch. Methods based on sparse coding and discriminative dictionary learning still have the disadvantage in selecting the best patches to reconstruct the target patch due to the limitation in discriminative ability of the model

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