Publication | Open Access
Multimodal classification of Dementia using functional data, anatomical features and 3D invariant shape descriptors
11
Citations
12
References
2012
Year
Unknown Venue
NeuropsychologyEngineeringStatistical Shape AnalysisPet-mriBrain MappingInvariant Shape DescriptorsImage AnalysisAlzheimer's DiseasePattern RecognitionNeurologyRadiologyNeuroimaging ModalityMedical ImagingPrior Classification FrameworksNeuroimagingRehabilitationMultimodality ClassificationMild Cognitive ImpairmentMedical Image ComputingBrain ImagingMultimodal ClassificationAnatomical FeaturesNeuroimaging BiomarkersDementiaBiomedical ImagingFrontotemporal DementiaNeuroscienceMedicine
Multimodality classification of Alzheimer's disease (AD) and its prodromal stage, Mild Cognitive Impairment (MCI), is of interest to the medical community. We improve on prior classification frameworks by incorporating multiple features from MRI and PET data obtained with multiple radioligands, fluorodeoxyglucose (FDG) and Pittsburg compound B (PIB). We also introduce a new MRI feature, invariant shape descriptors based on 3D Zernike moments applied to the hippocampus region. Classification performance is evaluated on data from 17 healthy controls (CTR), 22 MCI, and 17 AD subjects. Zernike significantly outperforms volume, accuracy (Zernike to volume): CTR/AD (90.7% to 71.6%), CTR/MCI (76.2% to 60.0%), MCI/AD (84.3% to 65.5%). Zernike also provides comparable and complementary performance to PET. Optimal accuracy is achieved when Zernike and PET features are combined (accuracy, specificity, sensitivity), CTR/AD (98.8%, 99.5%, 98.1%), CTR/MCI (84.3%, 82.9%, 85.9%) and MCI/AD (93.3%, 93.6%, 93.3%).
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