Literature DB >> 33551735

Deep Learning-Based Classification and Voxel-Based Visualization of Frontotemporal Dementia and Alzheimer's Disease.

Jingjing Hu1,2, Zhao Qing3, Renyuan Liu3, Xin Zhang3, Pin Lv3, Maoxue Wang3, Yang Wang3, Kelei He1,4, Yang Gao1,2, Bing Zhang1,2,3,4.   

Abstract

Frontotemporal dementia (FTD) and Alzheimer's disease (AD) have overlapping symptoms, and accurate differential diagnosis is important for targeted intervention and treatment. Previous studies suggest that the deep learning (DL) techniques have the potential to solve the differential diagnosis problem of FTD, AD and normal controls (NCs), but its performance is still unclear. In addition, existing DL-assisted diagnostic studies still rely on hypothesis-based expert-level preprocessing. On the one hand, it imposes high requirements on clinicians and data themselves; On the other hand, it hinders the backtracking of classification results to the original image data, resulting in the classification results cannot be interpreted intuitively. In the current study, a large cohort of 3D T1-weighted structural magnetic resonance imaging (MRI) volumes (n = 4,099) was collected from two publicly available databases, i.e., the ADNI and the NIFD. We trained a DL-based network directly based on raw T1 images to classify FTD, AD and corresponding NCs. And we evaluated the convergence speed, differential diagnosis ability, robustness and generalizability under nine scenarios. The proposed network yielded an accuracy of 91.83% based on the most common T1-weighted sequence [magnetization-prepared rapid acquisition with gradient echo (MPRAGE)]. The knowledge learned by the DL network through multiple classification tasks can also be used to solve subproblems, and the knowledge is generalizable and not limited to a specified dataset. Furthermore, we applied a gradient visualization algorithm based on guided backpropagation to calculate the contribution graph, which tells us intuitively why the DL-based networks make each decision. The regions making valuable contributions to FTD were more widespread in the right frontal white matter regions, while the left temporal, bilateral inferior frontal and parahippocampal regions were contributors to the classification of AD. Our results demonstrated that DL-based networks have the ability to solve the enigma of differential diagnosis of diseases without any hypothesis-based preprocessing. Moreover, they may mine the potential patterns that may be different from human clinicians, which may provide new insight into the understanding of FTD and AD.
Copyright © 2021 Hu, Qing, Liu, Zhang, Lv, Wang, Wang, He, Gao and Zhang.

Entities:  

Keywords:  Alzheimer’s disease; MRI; convolutional neural network; deep learning; frontotemporal dementia; visulization

Year:  2021        PMID: 33551735      PMCID: PMC7858673          DOI: 10.3389/fnins.2020.626154

Source DB:  PubMed          Journal:  Front Neurosci        ISSN: 1662-453X            Impact factor:   4.677


  28 in total

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3.  Limits for Reduction of Acquisition Time and Administered Activity in 18F-FDG PET Studies of Alzheimer Dementia and Frontotemporal Dementia.

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Review 4.  Frontotemporal dementia.

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Journal:  J Gerontol B Psychol Sci Soc Sci       Date:  2018-04-16       Impact factor: 4.942

7.  Multiparametric computer-aided differential diagnosis of Alzheimer's disease and frontotemporal dementia using structural and advanced MRI.

Authors:  Esther E Bron; Marion Smits; Janne M Papma; Rebecca M E Steketee; Rozanna Meijboom; Marius de Groot; John C van Swieten; Wiro J Niessen; Stefan Klein
Journal:  Eur Radiol       Date:  2016-12-16       Impact factor: 5.315

8.  Single-subject classification of presymptomatic frontotemporal dementia mutation carriers using multimodal MRI.

Authors:  Rogier A Feis; Mark J R J Bouts; Jessica L Panman; Lize C Jiskoot; Elise G P Dopper; Tijn M Schouten; Frank de Vos; Jeroen van der Grond; John C van Swieten; Serge A R B Rombouts
Journal:  Neuroimage Clin       Date:  2018-07-17       Impact factor: 4.881

9.  Automated classification of Alzheimer's disease and mild cognitive impairment using a single MRI and deep neural networks.

Authors:  Silvia Basaia; Federica Agosta; Luca Wagner; Elisa Canu; Giuseppe Magnani; Roberto Santangelo; Massimo Filippi
Journal:  Neuroimage Clin       Date:  2018-12-18       Impact factor: 4.881

10.  Frontotemporal dementias: a review.

Authors:  Natalie D Weder; Rehan Aziz; Kirsten Wilkins; Rajesh R Tampi
Journal:  Ann Gen Psychiatry       Date:  2007-06-12       Impact factor: 3.455

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Journal:  Sensors (Basel)       Date:  2022-06-18       Impact factor: 3.847

2.  White matter microstructure alterations in frontotemporal dementia: Phenotype-associated signatures and single-subject interpretation.

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Review 3.  Artificial Intelligence Models in the Diagnosis of Adult-Onset Dementia Disorders: A Review.

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4.  A Reproducible Deep-Learning-Based Computer-Aided Diagnosis Tool for Frontotemporal Dementia Using MONAI and Clinica Frameworks.

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Review 5.  A Comprehensive Survey on the Detection, Classification, and Challenges of Neurological Disorders.

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  5 in total

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