Literature DB >> 31765915

Single-slice Alzheimer's disease classification and disease regional analysis with Supervised Switching Autoencoders.

Ricardo Mendoza-Léon1, John Puentes2, Luis Felipe Uriza3, Marcela Hernández Hoyos4.   

Abstract

BACKGROUND: Alzheimer's disease (AD) is a difficult to diagnose pathology of the brain that progressively impairs cognitive functions. Computer-assisted diagnosis of AD based on image analysis is an emerging tool to support AD diagnosis. In this article, we explore the application of Supervised Switching Autoencoders (SSAs) to perform AD classification using only one structural Magnetic Resonance Imaging (sMRI) slice. SSAs are revised supervised autoencoder architectures, combining unsupervised representation and supervised classification as one unified model. In this work, we study the capabilities of SSAs to capture complex visual neurodegeneration patterns, and fuse disease semantics simultaneously. We also examine how regions associated to disease state can be discovered by SSAs following a local patch-based approach.
METHODS: Patch-based SSAs models are trained on individual patches extracted from a single 2D slice, independently for Axial, Coronal, and Sagittal anatomical planes of the brain at selected informative locations, exploring different patch sizes and network parameterizations. Then, models perform binary class prediction - healthy (CDR = 0) or AD-demented (CDR > 0) - on test data at patch level. The final subject classification is performed employing a majority rule from the ensemble of patch predictions. In addition, relevant regions are identified, by computing accuracy densities from patch-level predictions, and analyzed, supported by Atlas-based regional definitions.
RESULTS: Our experiments employing a single 2D T1-w sMRI slice per subject show that SSAs perform similarly to previous proposals that rely on full volumetric information and feature-engineered representations. SSAs classification accuracy on slices extracted along the Axial, Coronal, and Sagittal anatomical planes from a balanced cohort of 40 independent test subjects was 87.5%, 90.0%, and 90.0%, respectively. A top sensitivity of 95.0% on both Coronal and Sagittal planes was also obtained.
CONCLUSIONS: SSAs provided well-ranked accuracy performance among previous classification proposals, including feature-engineered and feature learning based methods, using only one scan slice per subject, instead of the whole 3D volume, as it is conventionally done. In addition, regions identified as relevant by SSAs' were, in most part, coherent or partially coherent in regard to relevant regions reported on previous works. These regions were also associated with findings from medical knowledge, which gives value to our methodology as a potential analytical aid for disease understanding.
Copyright © 2019 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Alzheimer disease; Convolutional neural networks; Magnetic resonance imaging; Representation learning; Supervised autoencoder; Supervised switching autoencoder

Year:  2019        PMID: 31765915     DOI: 10.1016/j.compbiomed.2019.103527

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  3 in total

1.  Brain Mitochondrial Dysfunction: A Possible Mechanism Links Early Life Anxiety to Alzheimer's Disease in Later Life.

Authors:  Qixue Wang; Mengna Lu; Xinyu Zhu; Xinyi Gu; Ting Zhang; Chenyi Xia; Li Yang; Ying Xu; Mingmei Zhou
Journal:  Aging Dis       Date:  2022-07-11       Impact factor: 9.968

2.  Structural MRI-Based Schizophrenia Classification Using Autoencoders and 3D Convolutional Neural Networks in Combination with Various Pre-Processing Techniques.

Authors:  Roman Vyškovský; Daniel Schwarz; Vendula Churová; Tomáš Kašpárek
Journal:  Brain Sci       Date:  2022-05-09

3.  Diagnosis of Alzheimer's Disease in Developed and Developing Countries: Systematic Review and Meta-Analysis of Diagnostic Test Accuracy.

Authors:  Miguel A Chávez-Fumagalli; Pallavi Shrivastava; Jorge A Aguilar-Pineda; Rita Nieto-Montesinos; Gonzalo Davila Del-Carpio; Antero Peralta-Mestas; Claudia Caracela-Zeballos; Guillermo Valdez-Lazo; Victor Fernandez-Macedo; Alejandro Pino-Figueroa; Karin J Vera-Lopez; Christian L Lino Cardenas
Journal:  J Alzheimers Dis Rep       Date:  2021-01-11
  3 in total

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