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Eng.ª Biomédica Instituto Superior Técnico, Faculdade de Medicina de Lisboa Neuroimaging in Alzheimer’s Disease Diagnosis Mafalda Gonçalves, nº 62857 Mafalda Negrão, nº 62847 Mariana Vieira, nº 59149 Tutora: Prof.ª Margarida Silveira Marta Carvalho, nº 62838 2007/2008 Alzheimer’s disease • Degenerative, progressive and fatal central nervous system disease • Most common form of dementia • Difficulties communicating, learning and reasoning; Anatomic level: • Growth of the ventricles; • Metabolic and blood flow reductions in the parietotemporal cortex. Alzheimer’s diagnosis An early diagnosis is important to improve patient’s life. 3 types of examination: • Neuropsychological screening tests: Mini Mental State Examination; • Laboratory tests: Blood or urine; • Imaging medical exams: MRI, CT and ET(SPECT and PET). Automated analysis helps the expert in the diagnosis by clarifying information. Purpose: study the efficiency of SPECT automation in detecting AD. Medical Neuroimaging in AD MRI MRI image is the result of the magnetiztion of hydrogen atoms CT ET Creates the image by using a selection of individual small X-ray sensors and a computer. Based on the administration of a Tracer followed by the measurement of radioactive signal distributed in the brain. PET SPECT A “gamma” camera detects where the compound(signaled by the tracer) has gone. PET scanner detects the gamma rays produced by the collision of the positrons with the electrons. • By combining all of these methods it is posible to achieve a good diagnosis. Automated Analysis • Data Processing Techniques • Classifiers Allow the comparison of different images since they transform them to the same geometric space and intensity. A classifier uses a function to discriminate the images available into different classes. 1. • 2. 3. 4. 5. Voxel-Based SPECT and PET analysis Statistical Parametric Mapping (SPM) Three-Dimensional stereotactic surface projection(3D-SSP) Tomography z-Score Mapping Partial-Volume Correction (PVC) • • Linear and supervised: - an optimal linear classifier; Nearest Mean Classifier. Linear and nonsupervised: - Support Vector Machine. Nonlinear: - Artificial neural networks C Classifiers An Optimal Linear Classifier Nearest Mean Classifier • linear and supervised method • calculates the means of the feature vectors in the training set for the different classes. • Variable 1: average of voxels A, B, C, D and E minus the average of voxels F, G, H and I. • Variable 2: ratio of cerebellum to the average of voxels A, B, C, D and E. • Variable 3: average of voxels A, B, C, D and E. • equidistant hyperplane between the different classes means Support Vector Machine (SVM) • plane midway between bounding planes to separate the different classes. • little or no spatial information about the imaging problem The Continuous Linear SVM uses an adjacency matrix to represent the relation among the features according to a relation function. Artificial Neural Networks The OINN (the optimal interpolative neural network) is trained and tested by vectors composed of a patient’s regions of interest (ROIs). Conclusion Scientists have been studying different techniques to diagnose AD, developing methods that allow to discriminate Alzheimer’s Dementia controlled by an automated analyses of SPECT Volumes. Classifiers can provide a quantitatively automatic analysis of the SPECT volumes. • good choice of features (characterizes the different classes) • discrimination between classes an independent and a better diagnosis