Literature DB >> 34207145

An Improved Deep Residual Network Prediction Model for the Early Diagnosis of Alzheimer's Disease.

Haijing Sun1,2, Anna Wang1, Wenhui Wang1, Chen Liu1.   

Abstract

The early diagnosis of Alzheimer's disease (AD) can allow patients to take preventive measures before irreversible brain damage occurs. It can be seen from cross-sectional imaging studies of AD that the features of the lesion areas in AD patients, as observed by magnetic resonance imaging (MRI), show significant variation, and these features are distributed throughout the image space. Since the convolutional layer of the general convolutional neural network (CNN) cannot satisfactorily extract long-distance correlation in the feature space, a deep residual network (ResNet) model, based on spatial transformer networks (STN) and the non-local attention mechanism, is proposed in this study for the early diagnosis of AD. In this ResNet model, a new Mish activation function is selected in the ResNet-50 backbone to replace the Relu function, STN is introduced between the input layer and the improved ResNet-50 backbone, and a non-local attention mechanism is introduced between the fourth and the fifth stages of the improved ResNet-50 backbone. This ResNet model can extract more information from the layers by deepening the network structure through deep ResNet. The introduced STN can transform the spatial information in MRI images of Alzheimer's patients into another space and retain the key information. The introduced non-local attention mechanism can find the relationship between the lesion areas and normal areas in the feature space. This model can solve the problem of local information loss in traditional CNN and can extract the long-distance correlation in feature space. The proposed method was validated using the ADNI (Alzheimer's disease neuroimaging initiative) experimental dataset, and compared with several models. The experimental results show that the classification accuracy of the algorithm proposed in this study can reach 97.1%, the macro precision can reach 95.5%, the macro recall can reach 95.3%, and the macro F1 value can reach 95.4%. The proposed model is more effective than other algorithms.

Entities:  

Keywords:  Alzheimer’s disease; Mish; non-local attention mechanism; residual network; spatial transformer networks

Year:  2021        PMID: 34207145     DOI: 10.3390/s21124182

Source DB:  PubMed          Journal:  Sensors (Basel)        ISSN: 1424-8220            Impact factor:   3.576


  3 in total

1.  MPC-STANet: Alzheimer's Disease Recognition Method Based on Multiple Phantom Convolution and Spatial Transformation Attention Mechanism.

Authors:  Yujian Liu; Kun Tang; Weiwei Cai; Aibin Chen; Guoxiong Zhou; Liujun Li; Runmin Liu
Journal:  Front Aging Neurosci       Date:  2022-06-10       Impact factor: 5.702

2.  Semi-Supervised Deep Learning Semantic Segmentation for 3D Volumetric Computed Tomographic Scoring of Chronic Rhinosinusitis: Clinical Correlations and Comparison with Lund-Mackay Scoring.

Authors:  Chung-Feng Jeffrey Kuo; Yu-Shu Liao; Jagadish Barman; Shao-Cheng Liu
Journal:  Tomography       Date:  2022-03-07

3.  A Novel Deep Learning Model to Distinguish Malignant Versus Benign Solid Lung Nodules.

Authors:  Shuwen Wang; Leilei Zhou; Xiaoran Li; Jie Tang; Jing Wu; Xindao Yin; Yu-Chen Chen; Lingquan Lu
Journal:  Med Sci Monit       Date:  2022-07-29
  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.