Elsevier

NeuroImage: Clinical

Volume 15, 2017, Pages 633-643
NeuroImage: Clinical

Fully automatic acute ischemic lesion segmentation in DWI using convolutional neural networks

https://doi.org/10.1016/j.nicl.2017.06.016Get rights and content
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Highlights

  • A novel framework based on deep CNNs to segment the acute ischemic lesions in DWI.

  • It is the first fully automatic method developed for this problem.

  • The algorithm is validated on a large real clinical dataset.

  • It achieves very good results, which is 0.67 in terms of the Dice coefficient in average.

Abstract

Stroke is an acute cerebral vascular disease, which is likely to cause long-term disabilities and death. Acute ischemic lesions occur in most stroke patients. These lesions are treatable under accurate diagnosis and treatments. Although diffusion-weighted MR imaging (DWI) is sensitive to these lesions, localizing and quantifying them manually is costly and challenging for clinicians. In this paper, we propose a novel framework to automatically segment stroke lesions in DWI. Our framework consists of two convolutional neural networks (CNNs): one is an ensemble of two DeconvNets (Noh et al., 2015), which is the EDD Net; the second CNN is the multi-scale convolutional label evaluation net (MUSCLE Net), which aims to evaluate the lesions detected by the EDD Net in order to remove potential false positives. To the best of our knowledge, it is the first attempt to solve this problem and using both CNNs achieves very good results. Furthermore, we study the network architectures and key configurations in detail to ensure the best performance. It is validated on a large dataset comprising clinical acquired DW images from 741 subjects. A mean accuracy of Dice coefficient obtained is 0.67 in total. The mean Dice scores based on subjects with only small and large lesions are 0.61 and 0.83, respectively. The lesion detection rate achieved is 0.94.

Keywords

Acute ischemic lesion segmentation
DWI
Deep learning
Convolutional neural networks

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