MULTforAD: Multimodal MRI Neuroimaging for Alzheimer’s Disease Detection Based on a 3D Convolution Model
Abstract
:1. Introduction
- A robust three-dimensional CNN is proposed with three distinct classifiers (Softmax, SVM, and RF) for detecting multimodal-fused features for the prediction of AD;
- A new method of image fusion, MULTforAD, is presented and evaluated for brain MRI information preprocessing and fusing, which has improved network classification and performance in AD diagnosis;
- Multiple features and details for patients who are MCI or AD were collected and analyzed using the MULTforAD method, making the results easier to interpret.
2. Literature Review
3. Proposed MULTforAD Image Fusion
3.1. Multimodal MRI Data Collection
3.2. Image Fusing and Preprocessing
3.3. 3D-Convolutional Neural Network
3.3.1. Softmax
3.3.2. SVM
3.3.3. Random Forest
4. Experimental Result
4.1. Experimental Setup
4.2. Performance Evaluation Metrics
4.3. Experiments and Results
4.3.1. Image Fusion Performance
4.3.2. 3D-CNN Network Performance
4.3.3. Comparison with the State-of-the-Art Models
4.4. Discussions
- (1)
- The method fused 5982 MRI neuroimages, allowing the model to learn all the features needed to distinguish AD from CN samples accurately and quickly accurately;
- (2)
- The suggested method provides anatomical and metabolic information without pre-trained models or transfers learning. In addition, it reduces noise with the scanned brain patterns based on the multimodal image fusion method and 3D-CNN;
- (3)
- Using lite models that comprise a smaller number of convolutional blocks and training parameters, the suggested model achieved the highest classification accuracy among the recent multimodal-based AD classification methods with 98.8593% accuracy.
- (1)
- Increasing the size of the input neuroimaging raises the proposed model’s computational complexity, and storage costs increase as well;
- (2)
- Designing an unbiased neuroimaging dataset is tricky and generates sensitivity and specificity artifacts. Therefore, incorporating additional tissue filters for neuroimaging could help overcome this limitation.
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Reference | Method | Pros | Cons |
---|---|---|---|
Liu et al. [21] | A pre-trained 2D-CNN deep learning model ResNet50 used to extract FDG-PET 3D image features. |
|
|
Biswas et al. [24]. | An MRI 3D segmentation method using a 3D fully convolutional neural network. | A lightweight 3D convolutional model that has improved performance considerably. |
|
Li et al. [17]. | An X-shaped network structure (X-Net) to segment the AD medical images. | The devised network structure enhances the classification task compared to pure convolutional networks. |
|
Ren et al. [18] | A faster RCNN for AD detection based on a supervised region proposal network (RPN) that predicts the important regions in the input medical image. | The model achieves an excellent result for local and global features extraction from the fused images. |
|
Baghdadi [27] | MRI scans from an Alzheimer’s patient are analyzed using CNN architectures and solved as an optimization problem by gorilla troops optimizers. | Automatic accurate classification using transfer learning and artificial gorilla troops optimizer. |
|
Kang et al. [25] | Brain magnetic resonance images (MR) are analyzed using several pre-trained deep convolutional neural networks. Afterwards, several machine learning classifiers are used to evaluate them. | The performance of the system has been significantly improved by an ensemble of deep features. |
|
Ullah et al. [26] | Multiscale residual attention-UNet (MRA-UNet) is proposed as a new fully automatic segmentation technique for brain tumor regions using Cascade multiscale residual attention CNNs. |
| Attention-based models take longer training times as they become more complex (in terms of parameters). |
Dataset | Dataset Link | Number of Samples |
---|---|---|
Kaggle | https://www.kaggle.com/datasets/sachinkumar413/alzheimer-mri-dataset (accessed on 12 January 2022) | 897 |
ADNI | https://ida.loni.usc.edu/login.jsp?project=ADNI&page=HOME (accessed on 30 January 2022) | 4296 |
OASIS | https://www.oasis-brains.org/#data (accessed on 5 February 2022) | 789 |
Total | 5982 |
Layer (Type) | Output Shape | Parameters (Sum of Weights and Biases) |
---|---|---|
Image Input layer | ([208, 176, 3]) | 2688 |
conv3d_1(conv3D) | (None, 46, 45, 28, 128) | 331,904 |
maxPooling3d _1 (MaxPooling3D) | (None, 21, 21, 13, 256) | 0 |
conv3d_2(conv3D) | (None, 19, 19, 11, 324) | 2,239,812 |
maxPooling3d_2 (MaxPooling3D) | (None, 47, 47, 30, 96) | |
conv3d _3 (conv3D) | (None, 17, 17, 0, 324) | 2,834,676 |
max_pooling3d _3 (MaxPooling3D) | (None, 8, 8, 4, 324) | 0 |
Flatten | 5184 | |
Dense_1 | 512 | 2,645,720 |
Dropout_1 | 0 | |
Dense_2 | 256 | 1,313,230 |
Dropout_2 | ||
Batch Normalization | 512 | |
Dense_3 | 128 | 32,890 |
Dropout_3 | 0 | |
Dense_4 | 64 | 8206 |
Dropout_4 | 0 |
Modalities | Softmax Layer | SVM Layer | RF Layer | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
ACC | SPE | SEN | F1 | ACC | SPE | SEN | F1 | ACC | SPE | SEN | F1 | |
Unimodal MRI | 92.10 ± 5.8 | 89.13 ± 9.7 | 94.27 ± 4.1 | 92.10 ± 2.8 | 89.80 ± 4.7 | 86.31 ± 12.0 | 91.97 ± 5.5 | 84.28 ± 2.7 | 79.46 ± 9.4 | 80.32 ± 7.1 | 69.15 ± 10.7 | 79.00 ± 1.4 |
Proposed image fusion MRI | 93.21 ± 5.0 | 91.43 ± 4.9 | 95.42 ± 2.5 | 98 ± 1.2 | 87.67 ± 3.1 | 85.63 ± 7.8 | 89.97 ± 3 | 88.1± 1.4 | 81.21 ± 4.8 | 83.67 ± 2.1 | 79.2 ± 6.1 | 83 ± 2.2 |
K = 100 | Fold 1 | Fold 2 | Fold 3 | Fold 4 | Fold 5 | Fold 6 | Fold 7 | Fold 8 | Fold 9 | Fold 10 |
---|---|---|---|---|---|---|---|---|---|---|
Performance | ||||||||||
ACC | 100% | 98.2% | 98.6% | 99% | 97% | 98% | 99.1% | 97.4% | 100% | 100% |
SEN | 99% | 100% | 88% | 100% | 95% | 97% | 98% | 97% | 95% | 94% |
SPE | 85.9% | 88.5% | 79.2% | 84% | 85.9% | 88.5% | 79.2% | 84% | 85.9% | 88.5% |
F1 | 98.2% | 98% | 97.1% | 99.2% | 98% | 96.8% | 94.7% | 100% | 100% | 98.9% |
K = 100 | Fold 1 | Fold 2 | Fold 3 | Fold 4 | Fold 5 | Fold 6 | Fold 7 | Fold 8 | Fold 9 | Fold 10 |
---|---|---|---|---|---|---|---|---|---|---|
Performance | ||||||||||
ACC | 97% | 95.8% | 94% | 97.3% | 99.7% | 96% | 97% | 98% | 95.5% | 100% |
SEN | 100% | 82% | 92.7% | 89.% | 91% | 92% | 78.8% | 88% | 91% | 92% |
SPE | 85.9% | 88.5% | 79.2% | 84% | 85.9% | 88.5% | 79.2% | 100% | 85.9% | 88.5% |
F1 | 98.2% | 97.1% | 96.1% | 99.2% | 98% | 96.8% | 94.4% | 79.1% | 100% | 98.9% |
K = 100 | Fold 1 | Fold 2 | Fold 3 | Fold 4 | Fold 5 | Fold 6 | Fold 7 | Fold 8 | Fold 9 | Fold 10 |
---|---|---|---|---|---|---|---|---|---|---|
Performance | ||||||||||
ACC | 97% | 98.2% | 88.7% | 89% | 87% | 96% | 88% | 98% | 91% | 92% |
SEN | 98% | 92% | 98% | 88% | 91% | 97% | 91% | 92% | 88% | 88% |
SPE | 85.9% | 88.5% | 79.2% | 84% | 85.9% | 88.5% | 85.9% | 88.5% | 79.2% | 84% |
F1 | 81% | 92% | 98% | 88% | 98% | 92% | 91% | 92% | 98% | 88% |
Ref | Sample Size | Methodology | Experimental Materials | AD:NC Classification Accuracy |
---|---|---|---|---|
[28] | Themes for AD, MCI, and NC are 111, 129, and 130, respectively | 3D-CNN | Multimodal MRI + PET | 93.21 |
Single-source MRI images | 94.5 | |||
[35] | Themes for [AD, NC] are 741 [427, 314] + 708 [466, 243] | ResNet50-Softmax, ResNet50-SVM, and ResNet50-RF | Single-source MRI images | 85.7% to 99% |
[36] | 758 MR, including 180 AD, 160 cMCI, 214 ncMCI subjects, and 204 normal | Pre-Training Stacked Auto-Encoders | MRI + PET | 91.4 |
Single-source MRI images | 93.67 | |||
[37] | 37 AD, 35 NC, 75 MCI with (239,304 features | Manifold learning techniques | MRI + PET + CSF + Genetic | 91.8 |
Single-source MRI images | 91 | |||
[38] | 626 FDG-PET scans and 2402 MRI | Multimodal and Multiscale stacked-autoencoder (SAE) | MRI + PET | 92.51% |
Single-source MRI images | 75.44 (7.74) | |||
[27] | 17,976 AD, 138,105 NC, and 70,076 MCI | Hybrid (GTO + DL) pre-trained CNNs | Alzheimer’s Dataset +Neuroimaging Initiative (ADNI) | 96.25–96.65% |
[39] | 46 MCI, 25 AD, and 40 Normal NC | 3D-DNN models and SVM | Single-source MRI images | 80–90% |
[40] | 179 AD, 254 MCI, and 182 NC | An ensemble learning method with three base classifiers, eResNet50, eNASNet, and eMobileNet | Single-source MRI images | 98.59 |
Proposed method | 5982 (1896 AD and 4086 NC) | 3D-CNN + Softmax | Multimodal MRI | 98.21% |
3D-CNN + SVM | 91% | |||
3D-CNN + RF | 85.9% |
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Ismail, W.N.; Rajeena P.P, F.; Ali, M.A.S. MULTforAD: Multimodal MRI Neuroimaging for Alzheimer’s Disease Detection Based on a 3D Convolution Model. Electronics 2022, 11, 3893. https://doi.org/10.3390/electronics11233893
Ismail WN, Rajeena P.P F, Ali MAS. MULTforAD: Multimodal MRI Neuroimaging for Alzheimer’s Disease Detection Based on a 3D Convolution Model. Electronics. 2022; 11(23):3893. https://doi.org/10.3390/electronics11233893
Chicago/Turabian StyleIsmail, Walaa N., Fathimathul Rajeena P.P, and Mona A. S. Ali. 2022. "MULTforAD: Multimodal MRI Neuroimaging for Alzheimer’s Disease Detection Based on a 3D Convolution Model" Electronics 11, no. 23: 3893. https://doi.org/10.3390/electronics11233893
APA StyleIsmail, W. N., Rajeena P.P, F., & Ali, M. A. S. (2022). MULTforAD: Multimodal MRI Neuroimaging for Alzheimer’s Disease Detection Based on a 3D Convolution Model. Electronics, 11(23), 3893. https://doi.org/10.3390/electronics11233893