MR Diffusion Tensor Imaging (DTI) and Neuropsychological Testing for Neuronal Connectivity in Alzheimer’s Disease (AD) Patients

نویسندگان

  • Jianhui Zhong
  • Hongyan Ni
  • Tong Zhu
  • Sven Ekholm
  • Voyko Kavcic
چکیده

We have used MR DTI to identify relevant brain structures involved in visuospatial processing, in an attempt to link perceptual and attentional impairments to WM changes in Alzheimer’s disease (AD) patients. Correlation of DTI measured parameters with results of several neuropsychological tests will be reported here. Several issues related to quantitation of DTI parameters in ROI analysis are addressed. In spite of only a small number of subjects were studied so far, we found not only that AD patients showed significant decrease of white matter (WM) integrity in corpus callosum (CC), most prominent at the posterior portion, but also found significant correlations between the DTI parameters and scores from several neuropsychological tests. Our preliminary results suggest that DTI help to improve the overall accuracy rate in distinguishing between early AD onset and age-related functional decline, and potentially may improve efficiency in differentiating between different types of dementia.

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تاریخ انتشار 2004