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      Ensemble learning using traditional machine learning and deep neural network for diagnosis of Alzheimer’s disease

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          Abstract

          In recent years, Alzheimer’s disease (AD) diagnosis using neuroimaging and deep learning has drawn great research attention. However, due to the scarcity of training neuroimaging data, many deep learning models have suffered from severe overfitting. In this study, we propose an ensemble learning framework that combines deep learning and machine learning. The deep learning model was based on a 3D-ResNet to exploit 3D structural features of neuroimaging data. Meanwhile, Extreme Gradient Boosting (XGBoost) machine learning was applied on a voxel-wise basis to draw the most significant voxel groups out of the image. The 3D-ResNet and XGBoost predictions were combined with patient demographics and cognitive test scores (Mini-Mental State Examination (MMSE) and Clinical Dementia Rating (CDR)) to give a final diagnosis prediction. Our proposed method was trained and validated on brain MRI brain images of the Alzheimer’s Disease Neuroimaging Initiative (ADNI) dataset. During the training phase, multiple data augmentation methods were employed to tackle overfitting. Our test set contained only baseline scans, i.e., the first visit scans since we aimed to investigate the ability of our approach in detecting AD during the first visit of AD patients. Our 5-fold cross-validation implementation achieved an average AUC of 100% during training and 96% during testing. Using the same computer, our method was much faster in scoring a prediction, approximately 10 min, than feature extraction-based machine learning methods, which often take many hours to score a prediction. To make the prediction explainable, we visualized the brain MRI image regions that primarily affected the 3D-ResNet model’s prediction via heatmap. Lastly, we observed that proper generation of test sets was critical to avoiding the data leakage issue and ensuring the validity of results.

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          Fast robust automated brain extraction.

          An automated method for segmenting magnetic resonance head images into brain and non-brain has been developed. It is very robust and accurate and has been tested on thousands of data sets from a wide variety of scanners and taken with a wide variety of MR sequences. The method, Brain Extraction Tool (BET), uses a deformable model that evolves to fit the brain's surface by the application of a set of locally adaptive model forces. The method is very fast and requires no preregistration or other pre-processing before being applied. We describe the new method and give examples of results and the results of extensive quantitative testing against "gold-standard" hand segmentations, and two other popular automated methods. Copyright 2002 Wiley-Liss, Inc.
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            PyTorch: An Imperative Style, High-Performance Deep Learning Library

            Deep learning frameworks have often focused on either usability or speed, but not both. PyTorch is a machine learning library that shows that these two goals are in fact compatible: it provides an imperative and Pythonic programming style that supports code as a model, makes debugging easy and is consistent with other popular scientific computing libraries, while remaining efficient and supporting hardware accelerators such as GPUs. In this paper, we detail the principles that drove the implementation of PyTorch and how they are reflected in its architecture. We emphasize that every aspect of PyTorch is a regular Python program under the full control of its user. We also explain how the careful and pragmatic implementation of the key components of its runtime enables them to work together to achieve compelling performance. We demonstrate the efficiency of individual subsystems, as well as the overall speed of PyTorch on several common benchmarks. 12 pages, 3 figures, NeurIPS 2019
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              Stacked generalization

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                Author and article information

                Contributors
                Journal
                IBRO Neurosci Rep
                IBRO Neurosci Rep
                IBRO Neuroscience Reports
                Elsevier
                2667-2421
                03 September 2022
                December 2022
                03 September 2022
                : 13
                : 255-263
                Affiliations
                [a ]School of Biomedical Engineering, International University, Vietnam
                [b ]Vietnam National University, Ho Chi Minh City, Vietnam
                [c ]Department of Electrical Engineering and Computer Science, York University, Toronto, Ontario, Canada
                [d ]Department of Biomedical Science and Engineering, Institute of Integrated Technology, Gwangju Institute of Science and Technology, Gwangju, South Korea
                [e ]Montreal Neurological Institute, McGill University, Montreal, Canada
                Author notes
                [* ]Corresponding authors at: School of Biomedical Engineering, International University, Vietnam. htthuong@ 123456hcmiu.edu.vn nthoan@ 123456hcmiu.edu.vn
                [** ]Corresponding author at: Department of Biomedical Science and Engineering, Institute of Integrated Technology, Gwangju Institute of Science and Technology, Gwangju, South Korea. thanh.duc.nguyen@ 123456mail.mcgill.ca
                [1]

                These authors contributed equally to this work.

                Article
                S2667-2421(22)00062-8
                10.1016/j.ibneur.2022.08.010
                9795286
                36590098
                46950e95-1abe-4655-8690-22a04053925a
                © 2022 The Authors

                This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).

                History
                : 6 June 2022
                : 7 August 2022
                : 31 August 2022
                Categories
                Articles from the Scientific Contributions and Advances by Asia-Pacific IBRO Alumni; Edited by Huong Ha

                machine learning,deep learning,ensemble learning,alzheimer’s disease diagnosis

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