An explainable two-dimensional single model deep learning approach for
Alzheimer's disease diagnosis and brain atrophy localization
- URL: http://arxiv.org/abs/2107.13200v1
- Date: Wed, 28 Jul 2021 07:19:00 GMT
- Title: An explainable two-dimensional single model deep learning approach for
Alzheimer's disease diagnosis and brain atrophy localization
- Authors: Fan Zhang, Bo Pan, Pengfei Shao, Peng Liu (Alzheimer's Disease
Neuroimaging Initiative, the Australian Imaging Biomarkers and Lifestyle
flagship study of ageing), Shuwei Shen, Peng Yao, Ronald X. Xu
- Abstract summary: We propose an end-to-end deep learning approach for automated diagnosis of Alzheimer's disease (AD) and localization of important brain regions related to the disease from sMRI data.
Our approach has been evaluated on two publicly accessible datasets for two classification tasks of AD vs. cognitively normal (CN) and progressive MCI (pMCI) vs. stable MCI (sMCI)
The experimental results indicate that our approach outperforms the state-of-the-art approaches, including those using multi-model and 3D CNN methods.
- Score: 3.9281410693767036
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Early and accurate diagnosis of Alzheimer's disease (AD) and its prodromal
period mild cognitive impairment (MCI) is essential for the delayed disease
progression and the improved quality of patients'life. The emerging
computer-aided diagnostic methods that combine deep learning with structural
magnetic resonance imaging (sMRI) have achieved encouraging results, but some
of them are limit of issues such as data leakage and unexplainable diagnosis.
In this research, we propose a novel end-to-end deep learning approach for
automated diagnosis of AD and localization of important brain regions related
to the disease from sMRI data. This approach is based on a 2D single model
strategy and has the following differences from the current approaches: 1)
Convolutional Neural Network (CNN) models of different structures and
capacities are evaluated systemically and the most suitable model is adopted
for AD diagnosis; 2) a data augmentation strategy named Two-stage Random
RandAugment (TRRA) is proposed to alleviate the overfitting issue caused by
limited training data and to improve the classification performance in AD
diagnosis; 3) an explainable method of Grad-CAM++ is introduced to generate the
visually explainable heatmaps that localize and highlight the brain regions
that our model focuses on and to make our model more transparent. Our approach
has been evaluated on two publicly accessible datasets for two classification
tasks of AD vs. cognitively normal (CN) and progressive MCI (pMCI) vs. stable
MCI (sMCI). The experimental results indicate that our approach outperforms the
state-of-the-art approaches, including those using multi-model and 3D CNN
methods. The resultant localization heatmaps from our approach also highlight
the lateral ventricle and some disease-relevant regions of cortex, coincident
with the commonly affected regions during the development of AD.
Related papers
- Toward Robust Early Detection of Alzheimer's Disease via an Integrated Multimodal Learning Approach [5.9091823080038814]
Alzheimer's Disease (AD) is a complex neurodegenerative disorder marked by memory loss, executive dysfunction, and personality changes.
This study introduces an advanced multimodal classification model that integrates clinical, cognitive, neuroimaging, and EEG data.
arXiv Detail & Related papers (2024-08-29T08:26:00Z) - UniBrain: Universal Brain MRI Diagnosis with Hierarchical
Knowledge-enhanced Pre-training [66.16134293168535]
We propose a hierarchical knowledge-enhanced pre-training framework for the universal brain MRI diagnosis, termed as UniBrain.
Specifically, UniBrain leverages a large-scale dataset of 24,770 imaging-report pairs from routine diagnostics.
arXiv Detail & Related papers (2023-09-13T09:22:49Z) - Deep Reinforcement Learning Framework for Thoracic Diseases
Classification via Prior Knowledge Guidance [49.87607548975686]
The scarcity of labeled data for related diseases poses a huge challenge to an accurate diagnosis.
We propose a novel deep reinforcement learning framework, which introduces prior knowledge to direct the learning of diagnostic agents.
Our approach's performance was demonstrated using the well-known NIHX-ray 14 and CheXpert datasets.
arXiv Detail & Related papers (2023-06-02T01:46:31Z) - Patched Diffusion Models for Unsupervised Anomaly Detection in Brain MRI [55.78588835407174]
We propose a method that reformulates the generation task of diffusion models as a patch-based estimation of healthy brain anatomy.
We evaluate our approach on data of tumors and multiple sclerosis lesions and demonstrate a relative improvement of 25.1% compared to existing baselines.
arXiv Detail & Related papers (2023-03-07T09:40:22Z) - Deep grading for MRI-based differential diagnosis of Alzheimer's disease
and Frontotemporal dementia [0.0]
Alzheimer's disease and Frontotemporal dementia are common forms of neurodegenerative dementia.
Current structural imaging methods mainly focus on the detection of each disease but rarely on their differential diagnosis.
We propose a deep learning based approach for both problems of disease detection and differential diagnosis.
arXiv Detail & Related papers (2022-11-25T13:25:18Z) - SpineOne: A One-Stage Detection Framework for Degenerative Discs and
Vertebrae [54.751251046196494]
We propose a one-stage detection framework termed SpineOne to simultaneously localize and classify degenerative discs and vertebrae from MRI slices.
SpineOne is built upon the following three key techniques: 1) a new design of the keypoint heatmap to facilitate simultaneous keypoint localization and classification; 2) the use of attention modules to better differentiate the representations between discs and vertebrae; and 3) a novel gradient-guided objective association mechanism to associate multiple learning objectives at the later training stage.
arXiv Detail & Related papers (2021-10-28T12:59:06Z) - Deep Joint Learning of Pathological Region Localization and Alzheimer's
Disease Diagnosis [4.5484714814315685]
BrainBagNet is a framework for jointly learning pathological region localization and Alzheimer's disease diagnosis.
The proposed method represents the patch-level response from whole-brain MRI scans and discriminative brain-region from position information.
In five-fold cross-validation, the classification performance of the proposed method outperformed that of the state-of-the-art methods in both AD diagnosis and mild cognitive impairment prediction tasks.
arXiv Detail & Related papers (2021-08-10T10:06:54Z) - Many-to-One Distribution Learning and K-Nearest Neighbor Smoothing for
Thoracic Disease Identification [83.6017225363714]
deep learning has become the most powerful computer-aided diagnosis technology for improving disease identification performance.
For chest X-ray imaging, annotating large-scale data requires professional domain knowledge and is time-consuming.
In this paper, we propose many-to-one distribution learning (MODL) and K-nearest neighbor smoothing (KNNS) methods to improve a single model's disease identification performance.
arXiv Detail & Related papers (2021-02-26T02:29:30Z) - Deep Convolutional Neural Network based Classification of Alzheimer's
Disease using MRI data [8.609787905151563]
Alzheimer's disease (AD) is a progressive and incurable neurodegenerative disease which destroys brain cells and causes loss to patient's memory.
In this paper, we have proposed a smart and accurate way of diagnosing AD based on a two-dimensional deep convolutional neural network (2D-DCNN) using imbalanced three-dimensional MRI dataset.
The model classifies MRI into three categories: AD, mild cognitive impairment, and normal control: and has achieved 99.89% classification accuracy with imbalanced classes.
arXiv Detail & Related papers (2021-01-08T06:51:08Z) - An Explainable 3D Residual Self-Attention Deep Neural Network FOR Joint
Atrophy Localization and Alzheimer's Disease Diagnosis using Structural MRI [22.34325971680329]
We have proposed a novel computer-aided approach for early diagnosis of Alzheimer's disease by introducing an explainable 3D Residual Attention Deep Neural Network (3D ResAttNet) for end-to-end learning from sMRI scans.
The experimental results show that the proposed approach has a competitive advantage over the state-of-the-art models in terms of accuracy performance and generalizability.
arXiv Detail & Related papers (2020-08-10T11:08:55Z) - A Graph Gaussian Embedding Method for Predicting Alzheimer's Disease
Progression with MEG Brain Networks [59.15734147867412]
Characterizing the subtle changes of functional brain networks associated with Alzheimer's disease (AD) is important for early diagnosis and prediction of disease progression.
We developed a new deep learning method, termed multiple graph Gaussian embedding model (MG2G)
We used MG2G to detect the intrinsic latent dimensionality of MEG brain networks, predict the progression of patients with mild cognitive impairment (MCI) to AD, and identify brain regions with network alterations related to MCI.
arXiv Detail & Related papers (2020-05-08T02:29:24Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.