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A novel dementia diagnosis strategy on arterial spin labeling magnetic resonance images via pixel-wise partial volume correction and ranking

A novel dementia diagnosis strategy on arterial spin labeling magnetic resonance images via pixel-wise partial volume correction and ranking

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HUANG, Wei, Peng ZHANG, Minmin SHEN, 2016. A novel dementia diagnosis strategy on arterial spin labeling magnetic resonance images via pixel-wise partial volume correction and ranking. In: Multimedia Tools and Applications. 75(4), pp. 2067-2090. ISSN 1380-7501. eISSN 1573-7721. Available under: doi: 10.1007/s11042-014-2395-2

@article{Huang2016-02novel-30213, title={A novel dementia diagnosis strategy on arterial spin labeling magnetic resonance images via pixel-wise partial volume correction and ranking}, year={2016}, doi={10.1007/s11042-014-2395-2}, number={4}, volume={75}, issn={1380-7501}, journal={Multimedia Tools and Applications}, pages={2067--2090}, author={Huang, Wei and Zhang, Peng and Shen, Minmin} }

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