Cascaded deep convolutional encoder-decoder neural networks for efficient liver tumor segmentation

Med Hypotheses. 2020 Jan:134:109431. doi: 10.1016/j.mehy.2019.109431. Epub 2019 Oct 14.

Abstract

Liver and hepatic tumor segmentation remains a challenging problem in Computer Tomography (CT) images analysis due to its shape variation and vague boundary. The general hypothesis says that deep learning methods produce improved results on medical image segmentation. This paper formulates the segmentation of liver tumor in CT abdominal images as a classification problem, and then solves it using a cascaded classifier framework based on deep convolutional neural networks. Two deep encoder-decoder convolutional neural networks (EDCNN) were constructed and trained to cascade segments of both the liver and lesions in CT images with limited image quantity. In other words, an EDCNN segments the liver image as the input for the training of a second EDCNN. The second EDCNN then segments the tumor regions within the liver ROI regions as predicted by the first EDCNN. Segmenting the hepatic tumor inside the liver ROI also significantly reduces false-positives. The proposed model was then tested using a public dataset (3DIRCADb), and several metrics were used in order to quantitatively evaluate its performance. The proposed method produced an average DICE score of 95.22% for the test set of CT images. The proposed method was then compared with some of the existing methods. The experimental results demonstrated that the proposed EDCNN achieved improved performance in segmentation accuracy over some existing methods.

Keywords: Cascaded network; Convolutional neural network; Encoder-decoder network; Liver segmentation.

Publication types

  • Comparative Study

MeSH terms

  • Algorithms
  • Datasets as Topic
  • Deep Learning*
  • Diagnosis, Computer-Assisted / methods*
  • Early Detection of Cancer
  • Female
  • Humans
  • Image Processing, Computer-Assisted / methods*
  • Liver Neoplasms / diagnostic imaging*
  • Male
  • Preoperative Care
  • Software Design
  • Tomography, X-Ray Computed / methods*