Literature DB >> 29502031

Multiscale deep neural network based analysis of FDG-PET images for the early diagnosis of Alzheimer's disease.

Donghuan Lu1, Karteek Popuri1, Gavin Weiguang Ding1, Rakesh Balachandar1, Mirza Faisal Beg2.   

Abstract

Alzheimer's disease (AD) is one of the most common neurodegenerative diseases with a commonly seen prodromal mild cognitive impairment (MCI) phase where memory loss is the main complaint progressively worsening with behavior issues and poor self-care. However, not all individuals clinically diagnosed with MCI progress to AD. A fraction of subjects with MCI either progress to non-AD dementia or remain stable at the MCI stage without progressing to dementia. Although a curative treatment of AD is currently unavailable, it is extremely important to correctly identify the individuals in the MCI phase that will go on to develop AD so that they may benefit from a curative treatment when one becomes available in the near future. At the same time, it would be highly desirable to also correctly identify those in the MCI phase that do not have AD pathology so they may be spared from unnecessary pharmocologic interventions that, at best, may provide them no benefit, and at worse, could further harm them with adverse side-effects. Additionally, it may be easier and simpler to identify the cause of the cognitive impairment in these non-AD cases, and hence proper identification of prodromal AD will be of benefit to these individuals as well. Fluorodeoxy glucose positron emission tomography (FDG-PET) captures the metabolic activity of the brain, and this imaging modality has been reported to identify changes related to AD prior to the onset of structural changes. Prior work on designing classifier using FDG-PET imaging has been promising. Since deep-learning has recently emerged as a powerful tool to mine features and use them for accurate labeling of the group membership of given images, we propose a novel deep-learning framework using FDG-PET metabolism imaging to identify subjects at the MCI stage with presymptomatic AD and discriminate them from other subjects with MCI (non-AD / non-progressive). Our multiscale deep neural network obtained 82.51% accuracy of classification just using measures from a single modality (FDG-PET metabolism data) outperforming other comparable FDG-PET classifiers published in the recent literature.
Copyright © 2018 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Alzheimer’s disease; Early diagnosis; Metabolism FDG-PET; Multiscale deep neural network learning

Mesh:

Substances:

Year:  2018        PMID: 29502031     DOI: 10.1016/j.media.2018.02.002

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  26 in total

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Review 7.  Single and Combined Neuroimaging Techniques for Alzheimer's Disease Detection.

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8.  Blinded Clinical Evaluation for Dementia of Alzheimer's Type Classification Using FDG-PET: A Comparison Between Feature-Engineered and Non-Feature-Engineered Machine Learning Methods.

Authors:  Da Ma; Evangeline Yee; Jane K Stocks; Lisanne M Jenkins; Karteek Popuri; Guillaume Chausse; Lei Wang; Stephan Probst; Mirza Faisal Beg
Journal:  J Alzheimers Dis       Date:  2021       Impact factor: 4.472

9.  Attention-Guided Hybrid Network for Dementia Diagnosis With Structural MR Images.

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10.  Predicting Conversion from MCI to AD Combining Multi-Modality Data and Based on Molecular Subtype.

Authors:  Hai-Tao Li; Shao-Xun Yuan; Jian-Sheng Wu; Yu Gu; Xiao Sun
Journal:  Brain Sci       Date:  2021-05-21
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