Abstract
Background: Definite Alzheimer's disease (AD) requires neuropathological confirmation. Single-photon emission computed tomography (SPECT) may enhance diagnostic accuracy, but due to restricted sensitivity and specificity, the role of SPECT is largely limited with regard to this purpose.Methods: We propose a new method of SPECT data analysis. The method is based on a combination of parietal lobe selection (as regions-of-interest (ROI)), 3D fuzzy edge detection, and 3D watershed transformation. We applied the algorithm to three-dimensional SPECT images of human brains and compared the number of watershed regions inside the ROI between AD patients and controls. The Student's two-sample t-test was used for testing domain number equity in both groups.Results: AD patients had a significantly reduced number of watershed regions compared to controls (p < 0.01). A sensitivity of 94.1% and specificity of 80% was obtained with a threshold value of 57.11 for the watershed domain number. The narrowing of the SPECT analysis to parietal regions leads to a substantial increase in both sensitivity and specificity.Conclusions: Our non-invasive, relatively low-cost, and easy method can contribute to a more precise diagnosis of AD. © 2010 Rusina et al; licensee BioMed Central Ltd.
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CITATION STYLE
Rusina, R., Kukal, J., Bělíček, T., Buncová, M., & Matěj, R. (2010). Use of fuzzy edge single-photon emission computed tomography analysis in definite Alzheimer’s disease - a retrospective study. BMC Medical Imaging, 10. https://doi.org/10.1186/1471-2342-10-20
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