9 research outputs found
A Comprehensive Survey on Tools for Effective Alzheimerās Disease Detection
Neuroimaging is considered as a valuable technique to study the structure and function of the human brain. Rapid advancement in medical imaging technologies has contributed significantly towards the development of neuroimaging tools. These tools focus on extracting and enhancing the relevant information from brain images, which facilitates neuroimaging experts to make better and quick decision for diagnosing enormous number of patients without requiring manual interventions. This paper describes the general outline of such tools including image file formats, ability to handle data from multiple modalities, supported platforms, implemented language, advantages and disadvantages. This brief review of tools gives a clear outlook for researchers to utilize existing techniques to handle the image data obtained from different modalities and focus further for improving and developing advanced tools
Functional and structural MRI image analysis for brain glial tumors treatment
This Ph.D Thesis is the outcome of a close collaboration between the Center for Research in Image Analysis and Medical Informatics (CRAIIM) of the Insubria University and the Operative Unit of Neurosurgery, Neuroradiology and Health Physics of the University Hospital āCircolo Fondazione Macchiā, Varese.
The project aim is to investigate new methodologies by means of whose, develop an integrated framework able to enhance the use of Magnetic Resonance Images, in order to support clinical experts in the treatment of patients with brain Glial tumor.
Both the most common uses of MRI technology for non-invasive brain inspection were analyzed. From the Functional point of view, the goal has been to provide tools for an objective reliable and non-presumptive assessment of the brainās areas locations, to preserve them as much as possible at surgery.
From the Structural point of view, methodologies for fully automatic brain segmentation and recognition of the tumoral areas, for evaluating the tumor volume, the spatial distribution and to be able to infer correlation with other clinical data or trace growth trend, have been studied. Each of the proposed methods has been thoroughly assessed both qualitatively and quantitatively.
All the Medical Imaging and Pattern Recognition algorithmic solutions studied for this Ph.D. Thesis have been integrated in GliCInE: Glioma Computerized Inspection Environment, which is a MATLAB prototype of an integrated analysis environment that oļ¬ers, in addition to all the functionality speciļ¬cally described in this Thesis, a set of tools needed to manage Functional and Structural Magnetic Resonance Volumes and ancillary data related to the acquisition and the patient
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Quantitative texture analysis in MR imaging in the assessment of Alzheimerās disease
Alzheimerās disease (AD) is a progressive neurodegenerative disease which is clinically characterized by cognitive impairment and memory loss. Anatomically, AD initially affects specific structures within the Medial Temporal Lobe (MTL), which are essential for declarative memory. A definitive diagnosis of AD relies on post-mortem biopsy therefore, clinical assessment and cognitive tests are currently used. However, these tests are not sensitive to detect AD in an early stage.
The aim of this research was to investigate the usefulness of quantitative Magnetic Resonance Imaging (MRI) and specifically of texture features in the assessment of Mild Cognitive Impairment (MCI) which is the pre-dementia stage and AD. Firstly, two types of magnetic fields where investigated in order to examine whether, a stronger MR magnetic field would benefit quantitative imaging analysis derived from texture features. Secondly, texture features were extracted from the entorhinal cortex and evaluated in the diagnosis and prediction of MCI and AD. To the best of our knowledge this is the first research that investigated how the MR field strength affects texture features and used entorhinal cortex texture features on the assessment of AD.
The main results of this PhD showed that (1) texture features could provide more sensitive measures when they are extracted from stronger MRI magnetic field, such as 3T, compared to 1.5T. From a disease classification and prediction perspective, (2) entorhinal cortex texture features provide better classification between Normal Controls (NC), MCI and AD subjects, and (3) better prediction of the conversion from MCI to AD. In conclusion, this research has shown for the first time in the literature that entorhinal cortex texture features from MRI could contribute towards the early classification of AD