International Journal of Biomedical Imaging (Jan 2010)

Wavelet-Based Image Registration and Segmentation Framework for the Quantitative Evaluation of Hydrocephalus

  • Fan Luo,
  • Jeanette W. Evans,
  • Norma C. Linney,
  • Matthias H. Schmidt,
  • Peter H. Gregson

DOI
https://doi.org/10.1155/2010/248393
Journal volume & issue
Vol. 2010

Abstract

Read online

Hydrocephalus, characterized by increased fluid in the cerebral ventricles, is traditionally evaluated by a visual assessment of serial CT scans. The complex shape of the ventricular system makes accurate visual comparison of CT scans difficult. The current research developed a quantitative method to measure the change in cerebral ventricular volume over time. Key elements of the developed framework are: adaptive image registration based on mutual information and wavelet multiresolution analysis; adaptive segmentation with novel feature extraction based on the Dual-Tree Complex Wavelet Transform; volume calculation. The framework, when tested on physical phantoms, had an error of 2.3%. When validated on clinical cases, results showed that cases deemed to be normal/stable had a calculated volume change less than 5%. Those with progressive/treated hydrocephalus had a calculated change greater than 20%. These findings indicate that the framework is reasonable and has potential for development as a tool in the evaluation of hydrocephalus.