期刊文献+

Automated brain tumor segmentation in magnetic resonance imaging based on sliding-window technique and symmetry analysis

Automated brain tumor segmentation in magnetic resonance imaging based on sliding-window technique and symmetry analysis
原文传递
导出
摘要 Background Brain tumor segmentation from magnetic resonance imaging (MRI) is an important step toward surgical planning,treatment planning,monitoring of therapy.However,manual tumor segmentation commonly used in clinic is time-consuming and challenging,and none of the existed automated methods are highly robust,reliable and efficient in clinic application.An accurate and automated tumor segmentation method has been developed for brain tumor segmentation that will provide reproducible and objective results close to manual segmentation results.Methods Based on the symmetry of human brain,we employed sliding-window technique and correlation coefficient to locate the tumor position.At first,the image to be segmented was normalized,rotated,denoised,and bisected.Subsequently,through vertical and horizontal sliding-windows technique in turn,that is,two windows in the left and the right part of brain image moving simultaneously pixel by pixel in two parts of brain image,along with calculating of correlation coefficient of two windows,two windows with minimal correlation coefficient were obtained,and the window with bigger average gray value is the location of tumor and the pixel with biggest gray value is the locating point of tumor.At last,the segmentation threshold was decided by the average gray value of the pixels in the square with center at the locating point and 10 pixels of side length,and threshold segmentation and morphological operations were used to acquire the final tumor region.Results The method was evaluated on 3D FSPGR brain MR images of 10 patients.As a result,the average ratio of correct location was 93.4% for 575 slices containing tumor,the average Dice similarity coefficient was 0.77 for one scan,and the average time spent on one scan was 40 seconds.Conclusions An fully automated,simple and efficient segmentation method for brain tumor is proposed and promising for future clinic use.Correlation coefficient is a new and effective feature for tumor location. Background Brain tumor segmentation from magnetic resonance imaging (MRI) is an important step toward surgical planning,treatment planning,monitoring of therapy.However,manual tumor segmentation commonly used in clinic is time-consuming and challenging,and none of the existed automated methods are highly robust,reliable and efficient in clinic application.An accurate and automated tumor segmentation method has been developed for brain tumor segmentation that will provide reproducible and objective results close to manual segmentation results.Methods Based on the symmetry of human brain,we employed sliding-window technique and correlation coefficient to locate the tumor position.At first,the image to be segmented was normalized,rotated,denoised,and bisected.Subsequently,through vertical and horizontal sliding-windows technique in turn,that is,two windows in the left and the right part of brain image moving simultaneously pixel by pixel in two parts of brain image,along with calculating of correlation coefficient of two windows,two windows with minimal correlation coefficient were obtained,and the window with bigger average gray value is the location of tumor and the pixel with biggest gray value is the locating point of tumor.At last,the segmentation threshold was decided by the average gray value of the pixels in the square with center at the locating point and 10 pixels of side length,and threshold segmentation and morphological operations were used to acquire the final tumor region.Results The method was evaluated on 3D FSPGR brain MR images of 10 patients.As a result,the average ratio of correct location was 93.4% for 575 slices containing tumor,the average Dice similarity coefficient was 0.77 for one scan,and the average time spent on one scan was 40 seconds.Conclusions An fully automated,simple and efficient segmentation method for brain tumor is proposed and promising for future clinic use.Correlation coefficient is a new and effective feature for tumor location.
出处 《Chinese Medical Journal》 SCIE CAS CSCD 2014年第3期462-468,共7页 中华医学杂志(英文版)
关键词 SEGMENTATION magnetic resonance imaging brain tumor sliding-window correlation coefficient segmentation magnetic resonance imaging brain tumor sliding-window correlation coefficient
  • 相关文献

参考文献1

二级参考文献33

  • 1Ross DA,Sandier HM,Baiter JM,Hayman JA,Archer PG,Auer DL.Imaging changes after stereotactic radiosurgery of primary and secondary malignant brain tumors.J Neurooncol 2002; 56:175-181.
  • 2Peterson AM,Meltzer CC,Evanson EJ,Flickinger JC,Kondziolka D.Imaging response of brain metastases after gamma knife stereotactic radiosurgery.Radiology 1999; 211:807-814.
  • 3Tung GA,Noren G,Rogg JM,Jackson IM.Imaging of pituitary adenomas after gamma knife stereotactic radiosurgery.AJR 2001; 177:919-924.
  • 4Provenzale JM,Mukundan S,Barboriak DP.Diffusion-weighted and perfusion MR imaging for brain tumor characterization and assessment of treatment response.Radiology 2006; 239:632-649.
  • 5Mehta MP,Tome WA,Olivera GH.Radiotherapy for brain tumors.Curr Oncol Rep 2000; 2:438-444.
  • 6Quigg M,Barbara NM.Stereotactic radiosurgery for treatment of epilepsy.Arch Neurol 2008; 65:177-183.
  • 7Nakamura H,Jokura H,Takahashi K,Boku N,Akabane A,Yoshimoto T.Serial follow-up MR imaging after gamma knife radiosurgery for vestibular schwannoma.AJNR Am J Neuroradiol 2000;21:1540-1546.
  • 8Bakardjiev Al,Barnes PD,Goumnerova LC,Black PM,Scott RM,Pomeroy SL,et al.Magnetic resonance imaging changes after stereotactic radiation therapy for childhood low grade astrocytoma.Cancer 1996; 78:864-873.
  • 9Hawighorst H,Essig M,Debus J,Knopp MV,Engenhart-Cabilic R,Sch(o)nberg,et al.Serial MR imaging of intracranial metastases after radiosurgery.Magn Reson Imaging 1997; 15:1121-1132.
  • 10Tomura N,Narita K,RT,Izumi J,Suzuki S,Anbai A,Otani T,et al.Diffusion changes in a tumor and peritumoral tissue after stereotactic irradiation for brain tumors:possible prediction of treatment response.J Comput Assist Tomogr 2006; 30:496-500.

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部