Classification of Alzheimer's and MCI Patients from Semantically Parcelled PET Images: A Comparison between AV45 and FDG-PET.
Seyed Hossein NozadiSamuel Kadourynull The Alzheimer's Disease Neuroimaging InitiativePublished in: International journal of biomedical imaging (2018)
Early identification of dementia in the early or late stages of mild cognitive impairment (MCI) is crucial for a timely diagnosis and slowing down the progression of Alzheimer's disease (AD). Positron emission tomography (PET) is considered a highly powerful diagnostic biomarker, but few approaches investigated the efficacy of focusing on localized PET-active areas for classification purposes. In this work, we propose a pipeline using learned features from semantically labelled PET images to perform group classification. A deformable multimodal PET-MRI registration method is employed to fuse an annotated MNI template to each patient-specific PET scan, generating a fully labelled volume from which 10 common regions of interest used for AD diagnosis are extracted. The method was evaluated on 660 subjects from the ADNI database, yielding a classification accuracy of 91.2% for AD versus NC when using random forests combining features from cross-sectional and follow-up exams. A considerable improvement in the early versus late MCI classification accuracy was achieved using FDG-PET compared to the AV-45 compound, yielding a 72.5% rate. The pipeline demonstrates the potential of exploiting longitudinal multiregion PET features to improve cognitive assessment.
Keyphrases
- positron emission tomography
- computed tomography
- pet ct
- mild cognitive impairment
- pet imaging
- deep learning
- cognitive decline
- machine learning
- cross sectional
- magnetic resonance imaging
- emergency department
- optical coherence tomography
- end stage renal disease
- risk assessment
- chronic kidney disease
- ejection fraction
- convolutional neural network
- climate change
- pain management