4.7 Article

A deep learning model integrating FCNNs and CRFs for brain tumor segmentation

Journal

MEDICAL IMAGE ANALYSIS
Volume 43, Issue -, Pages 98-111

Publisher

ELSEVIER
DOI: 10.1016/j.media.2017.10.002

Keywords

Brain tumor segmentation; Fully convolutional neural networks; Conditional random fields; Deep learning

Funding

  1. National High Technology Research and Development Program of China [2015AA020504]
  2. National Natural Science Foundation of China [61572499, 61421004, 61473296]
  3. NIH [EB022573, CA189523]
  4. NATIONAL CANCER INSTITUTE [U24CA189523] Funding Source: NIH RePORTER
  5. NATIONAL INSTITUTE OF BIOMEDICAL IMAGING AND BIOENGINEERING [R01EB022573] Funding Source: NIH RePORTER
  6. NATIONAL INSTITUTE ON ALCOHOL ABUSE AND ALCOHOLISM [R01AA020504] Funding Source: NIH RePORTER

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Accurate and reliable brain tumor segmentation is a critical component in cancer diagnosis, treatment planning, and treatment outcome evaluation. Build upon successful deep learning techniques, a novel brain tumor segmentation method is developed by integrating fully convolutional neural networks (FC-NNs) and Conditional Random Fields (CRFs) in a unified framework to obtain segmentation results with appearance and spatial consistency. We train a deep learning based segmentation model using 2D image patches and image slices in following steps: 1) training FCNNs using image patches; 2) training CRFs as Recurrent Neural Networks (CRF-RNN) using image slices with parameters of FCNNs fixed; and 3) fine-tuning the FCNNs and the CRF-RNN using image slices. Particularly, we train 3 segmentation models using 2D image patches and slices obtained in axial, coronal and sagittal views respectively, and combine them to segment brain tumors using a voting based fusion strategy. Our method could segment brain images slice-by-slice, much faster than those based on image patches. We have evaluated our method based on imaging data provided by the Multimodal Brain Tumor Image Segmentation Challenge (BRATS) 2013, BRATS 2015 and BRATS 2016. The experimental results have demonstrated that our method could build a segmentation model with Flair, T1c, and T2 scans and achieve competitive performance as those built with Flair, T1, T1c, and T2 scans. (C) 2017 Elsevier B.V. All rights reserved.

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