A Method for Detecting Interstructural Atrophy Correlation in Mri Brain Images
ثبت نشده
چکیده
Distinguishing neurodegenerative diseased patients (e.g., suffering from Alzheimer‟s Disease (AD)) from healthy individuals with the aid of MRI images is one of the challenges that need to be addressed in the field of Computational Anatomy (CA). A crucial feature in the analysis is the rate of atrophy of brain structures like the hippocampus or the ventricles. Until recently, analysis of atrophy rate has been restricted mainly to „localized atrophy‟, i.e. atrophy within one brain structure. Distinguishing correlations of local atrophy rates between different brain structures could possibly provide additional information about the disease process. Therefore, in this paper, we introduce four correlation parameters to measure and analyze correlations of atrophy rate between hippocampus and ventricles. We combine these parameters with three local atrophy rate parameters into a sevendimensional vector, and use various vector classification methods to see if the methods can distinguish AD patients from normal (NL) subjects in 31 longitudinal MRI baseline images and their follow-ups from the ADNI database. We obtain a good agreement between our classification results and the ground truth data. The analysis is facilitated with the aid of a specially designed graphical user interface.
منابع مشابه
Hippocampal Atrophy Studying in Alzheimer's Disease Diagnosis Using Brain MRI Images
Background and Aim: For effective treatment of Alzheimer's disease (AD), it is important to accurately diagnosis of AD and its earlier stage, Mild Cognitive Impairment (MCI). One of the most important approaches of early detection of AD is to measure atrophy, which uses various kinds of brain scans, such as MRI. The main objective of the current research was to provide a computerized diagnostic...
متن کاملA Two-Dimensional Convolutional Neural Network for Brain Tumor Detection From MRI
Aims: Cancerous brain tumors are among the most dangerous diseases that lower the quality of life of people for many years. Their detection in the early stages paves the way for the proper treatment. The present study aimed to present a two-dimensional Convolutional Neural Network (CNN) for detecting brain tumors under Magnetic Resonance Imaging (MRI) using the deep learning method. Methods & ...
متن کاملEvaluation of Multifidus Muscle Atrophy in MRI Images of Patients with Spinal Pain and its Related Factors
Background and Objective: Multifidus muscle which is one of the para-spinal muscles plays a key role in strengthening the spine and acts as inhibitory feedback in pain control. The present study aimed to evaluate the rate of multifidus muscle atrophy in Magnetic Resonance Imaging(MRI) images of patients with spinal pain. Materials and Methods: In this cross-sectional study, 600 MRI images of ...
متن کاملP9: Cervical Spinal Cord Extraction in Patients with Multiple Sclerosis Using Magnetic Resonance Imaging for Measuring Cross-Sectional Area
Multiple sclerosis (MS) refers to the lesions that accumulate in the brain and spinal cord. Magnetic resonance imaging (MRI) is the most sensitive and versatile modality used to show changes in the tissues over time. There has been significant interest in evaluating the relationship between the brain atrophy and disease progression rather than the spinal cord atrophy. The cervical spinal cord h...
متن کاملA Novel Fuzzy-C Means Image Segmentation Model for MRI Brain Tumor Diagnosis
Accurate segmentation of brain tumor plays a key role in the diagnosis of brain tumor. Preset and precise diagnosis of Magnetic Resonance Imaging (MRI) brain tumor is enormously significant for medical analysis. During the last years many methods have been proposed. In this research, a novel fuzzy approach has been proposed to classify a given MRI brain image as normal or cancer label and the i...
متن کامل