Academic Radiology
Volume 13, Issue 6 , Pages 752-758, June 2006

Quantitative Analysis of Brain Asymmetry by Using the Divergence Measure: Normal-Pathological Brain Discrimination

  • Ihar Volkau, PhD

      Affiliations

    • Agency for Science, Technology and Research (A*STAR), Biomedical Imaging Lab, 30 Blopolis Road, 07-01, Matrix, Singapore, 138671, Singapore
    • Corresponding Author InformationAddress correspondence to: I.V.
  • ,
  • Bhanu Prakash, KN, PhD

      Affiliations

    • Agency for Science, Technology and Research (A*STAR), Biomedical Imaging Lab, 30 Blopolis Road, 07-01, Matrix, Singapore, 138671, Singapore
  • ,
  • Anand Ananthasubramaniam, ME

      Affiliations

    • Agency for Science, Technology and Research (A*STAR), Biomedical Imaging Lab, 30 Blopolis Road, 07-01, Matrix, Singapore, 138671, Singapore
  • ,
  • Varsha Gupta, PhD

      Affiliations

    • Agency for Science, Technology and Research (A*STAR), Biomedical Imaging Lab, 30 Blopolis Road, 07-01, Matrix, Singapore, 138671, Singapore
  • ,
  • Aamer Aziz, PhD, MD

      Affiliations

    • Regional Imaging, PO Box 5576, Wagga Wagga NSW, Australia, 2650.
  • ,
  • Wieslaw L. Nowinski, PhD, DSc

      Affiliations

    • Agency for Science, Technology and Research (A*STAR), Biomedical Imaging Lab, 30 Blopolis Road, 07-01, Matrix, Singapore, 138671, Singapore

Received 20 June 2005; accepted 17 January 2006.

Rationale and Objectives

The human brain demonstrates approximate bilateral symmetry of anatomy, function, neurochemical activity, and electrophysiology. This symmetry reflected in radiological images may be affected by pathology. Hence quantitative analysis of brain symmetry may enable the normal and pathological brain discrimination. We propose a method based on the Jeffreys divergence measure (J-divergence), which attempts to quantify “approximate symmetry” and also aids to classify the brain as bilaterally symmetrical/asymmetrical (normal/abnormal).

Materials and Methods

The dataset included studies of 101 patients (59 without detectable pathologies and 42 with different abnormalities). First, the midsagittal plane is computed for the volume data that divides the head into two hemispheres. The J-divergence is calculated from the density functions of intensities of both the hemispheres. Statistical analysis was conducted to find the best distribution for normal/abnormal datasets.

Results

Statistical tests showed that the lognormal distribution best characterizes the values of the J-divergence for both normal and abnormal cases, and the threshold value for the Jeffreys divergence measure to classify the brains with and without detectable pathologies is T = 0.007. The threshold value had a sensitivity of 88.1% and specificity of 90.9%.

Conclusion

The proposed method is fast and simple to compute. The high sensitivity and specificity indicate the results are encouraging. This method can be used for the initial analysis of data, detection of pathology, classification of dataset as presumably normal/abnormal, and localization of abnormality.

Key Words:  Brain asymmetry , Jeffreys divergence measure , abnormality detection

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PII: S1076-6332(06)00051-1

doi:10.1016/j.acra.2006.01.043

Academic Radiology
Volume 13, Issue 6 , Pages 752-758, June 2006