Computerized Medical Imaging and Graphics
Volume 33, Issue 6 , Pages 431-441, September 2009

Automated brain tumor segmentation using spatial accuracy-weighted hidden Markov Random Field

  • Jingxin Nie

      Affiliations

    • Methodist Center for Biotechnology and Informatics, The Methodist Hospital Research Institute, Weill Cornell Medical College, and Department of Radiology, The Methodist Hospital, USA
    • School of Automation, Northwestern Polytechnical University, China
  • ,
  • Zhong Xue

      Affiliations

    • Methodist Center for Biotechnology and Informatics, The Methodist Hospital Research Institute, Weill Cornell Medical College, and Department of Radiology, The Methodist Hospital, USA
  • ,
  • Tianming Liu

      Affiliations

    • Methodist Center for Biotechnology and Informatics, The Methodist Hospital Research Institute, Weill Cornell Medical College, and Department of Radiology, The Methodist Hospital, USA
  • ,
  • Geoffrey S. Young

      Affiliations

    • Department of Radiology, Brigham and Women's Hospital, Harvard Medical School, USA
  • ,
  • Kian Setayesh

      Affiliations

    • Department of Radiology, Brigham and Women's Hospital, Harvard Medical School, USA
  • ,
  • Lei Guo

      Affiliations

    • School of Automation, Northwestern Polytechnical University, China
  • ,
  • Stephen T.C. Wong

      Affiliations

    • Methodist Center for Biotechnology and Informatics, The Methodist Hospital Research Institute, Weill Cornell Medical College, and Department of Radiology, The Methodist Hospital, USA
    • Corresponding Author InformationCorresponding author.

Received 17 November 2008; received in revised form 30 March 2009; accepted 3 April 2009.

Abstract 

A variety of algorithms have been proposed for brain tumor segmentation from multi-channel sequences, however, most of them require isotropic or pseudo-isotropic resolution of the MR images. Although co-registration and interpolation of low-resolution sequences, such as T2-weighted images, onto the space of the high-resolution image, such as T1-weighted image, can be performed prior to the segmentation, the results are usually limited by partial volume effects due to interpolation of low-resolution images. To improve the quality of tumor segmentation in clinical applications where low-resolution sequences are commonly used together with high-resolution images, we propose the algorithm based on Spatial accuracy-weighted Hidden Markov random field and Expectation maximization (SHE) approach for both automated tumor and enhanced-tumor segmentation. SHE incorporates the spatial interpolation accuracy of low-resolution images into the optimization procedure of the Hidden Markov Random Field (HMRF) to segment tumor using multi-channel MR images with different resolutions, e.g., high-resolution T1-weighted and low-resolution T2-weighted images. In experiments, we evaluated this algorithm using a set of simulated multi-channel brain MR images with known ground-truth tissue segmentation and also applied it to a dataset of MR images obtained during clinical trials of brain tumor chemotherapy. The results show that more accurate tumor segmentation results can be obtained by comparing with conventional multi-channel segmentation algorithms.

Keywords: MRI, Segmentation, Brain tumor

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PII: S0895-6111(09)00041-X

doi:10.1016/j.compmedimag.2009.04.006

Computerized Medical Imaging and Graphics
Volume 33, Issue 6 , Pages 431-441, September 2009