|
|
differential diagnosis among alzheimer's disease, mild cognitive impairment, and normal subjects using resting-state fmri data extracted from multi-subject dictionary learning atlas: a deep learning-based study
|
|
|
|
|
نویسنده
|
alizadeh farzad ,homayoun hassan ,batouli amir hossein ,noroozian maryam ,sodaie forough ,salary hanieh ,kazerooni anahita ,saligheh rad hamidreza
|
منبع
|
frontiers in biomedical technologies - 2022 - دوره : 9 - شماره : 4 - صفحه:297 -306
|
چکیده
|
Purpose: a powerful imaging method for evaluating brain patches is resting-state functional magnetic resonance (rs-fmri) imaging, in which the subject is at rest. artificial neural networks (ann) are one of the several alzheimer's disease (ad) analysis and diagnosis methods used in this study. we investigate anns' ability to diagnose ad using rs-fmri data. materials and methods: the acquisition of functional and structural magnetic resonance imaging was applied for 15 ad, 17 mild cognitive impairment, and ten normal healthy participants. time series of blood oxygen level-dependent were extracted from the multi-subject dictionary learning brain atlas after pre-processing. this study develops a one-dimensional convolutional neural network (cnn) using extracted signals of the functional atlas for differential diagnosis of ad. results: applying the proposed method to rs-fmri signals for classifying three classes of alzheimer’s patients resulted in overall accuracy, f1-score, and precision of 0.685, 0.663, and 0.681, respectively. using 39 regions in the brain and proposing a quite simple network than most of the available deep learning-based methods are the main advantages of this model. conclusion: rs-fmri signal recognition based on a functional atlas with the application of a deep neural network has a pattern recognition capability that can make a differential diagnosis with an acceptable level of accuracy and precision. therefore, deep neural networks can be considered as a tool for the early diagnosis of ad.
|
کلیدواژه
|
alzheimer’s disease; resting-state functional magnetic resonance imaging; blood-oxygen-level-dependent signal; artificial neural network; deep learning
|
آدرس
|
tehran university of medical sciences, school of medicine, department of medical physics and biomedical engineering, quantitative mr imaging and spectroscopy group, iran, tehran university of medical sciences, research center for molecular and cellular imaging, quantitative magnetic resonance imaging and spectroscopy group, iran, tehran university of medical sciences, school of advanced technologies in medicine, department of neuroscience and addiction studies, iran, tehran university of medical sciences, cognitive neurology and neuropsychiatry division, department of psychiatry, iran, tehran university of medical sciences, school of medicine, research center for molecular and cellular imaging, department of medical physics and biomedical engineering, quantitative mr imaging and spectroscopy group, iran, tehran university of medical sciences, research center for molecular and cellular imaging, quantitative mr imaging and spectroscopy group, iran, university of pennsylvania, perelman school of medicine, department of radiology, usa, tehran university of medical sciences, research center for molecular and cellular imaging, school of medicine, department of medical physics and biomedical engineering, quantitative magnetic resonance imaging and spectroscopy group, iran
|
پست الکترونیکی
|
hamid.saligheh@gmail.com
|
|
|
|
|
|
|
|
|
|
|
|
Authors
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|