Stacked Model-Based Classification of Parkinson’s Disease Patients Using Imaging Biomarker Data
Abstract
:1. Introduction
1.1. Motivation
1.2. Contributions
- We have used neuroimaging biomarkers to extract the deficiency level of dopamine inside the brain and measure the disease progression at every subsequent visit to the hospital.
- We proposed a stacked ML-based classification model to identify the HC and PSD subjects from the dataset.
- We evaluated the performance of the proposed stacked model using various evaluation metrics, such as accuracy, precision, specificity, and sensitivity.
1.3. Organization
2. Related Work
3. System Model and Mathematical Problem Formulation
System Model
4. The Proposed Approach
4.1. Dataset Description
4.2. Data Preprocessing and Proposed Stacked Model
- Three individual machine learning models were used to classify the patients based on the biomarkers available using the PPMI dataset in the form of comma-separated-values files.
- Then, a meta learner was created to combine the results of each individual learner, and we used that to predict the stacked model.
- Finally, we evaluated the performance of each of the models on both training and testing sets.
4.3. Gaussian Naive Bayes
4.4. Random Forest Classifier
4.5. K-Nearest Neighbor Classifier
4.6. Proposed Stacked Model
4.7. Training Algorithm for Stacked Model
Algorithm 1 Meta learning from base-level classifiers and the final ensemble classifier for prediction |
Input: Training data DA = {ai, bi} Output: Ensemble classifier E
|
4.8. Proposed Algorithm
Algorithm 2 Execution process of the proposed model |
Input: Imaging biomarkers dataset is collected from PPMI Output: Classification of PSD and HC subject
|
5. Performance Evaluation
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Author | Year | Objective | Algorithm | Result | Pros | Cons |
---|---|---|---|---|---|---|
Nunes et al. [12] | 2019 | To discriminate PSD, HC and Alzheimer’s disease data using retina texture biomarkers | SVM | Classification of PSD, HC, and Alzheimer’s disease accuracy = 82.9% | Classify PSD, AD and HC from the data | Lower Accuracy |
Pereira et al. [13] | 2019 | To classify the PSD patient using medical imaging | AI algorithms | Classification accuracy of PSD and HC subject accuracy = 65.7% | Classify PD, and HC subject from SPECT and MRI images | Lower accuracy |
Mangesius et al. [14] | 2020 | Proposed decision algorithm to classify parkinsonism with imaging biomarkers | Decision tree algorithm | Classification of parkinsonism accuracy = 83.7% | Classify PD, MSA and PSP from MRI imaging biomarker | Does not given the classification of HC subject |
Lin et al. [15] | 2020 | To detect the disease progression of PSD patient | Biomedical method to extract the data | - | Provide a disease progression of 3-year data of PSD patient | Does not given a classification of HC subject |
Kathuria et al. [16] | 2021 | To classify and diagnosis of PSD patient from atypical parkinsonism and HC using MRI and F-DOPA PET imaging | Biomedical method to extract the features from imaging modality | MRI_VenoBOLD Accuracy: 95% Sensitivity: 88.4% Specificity: 66.7%, MRI_SWI Sensitivity: 93% Specificity: 80% | Diagnosis of idiopathic PSD and atypical parkinsonism with nigrosome imaging | Small sample size of atypical parkinsonism subject. |
The proposed scheme | 2021 | Classification of PSD and HC patients using imaging biomarkers data | Stacked ML model | Accuracy = 92.5%, F1_score = 98%, Precision = 98% and Recall = 97% | Diagnosis of PSD and HC using imaging biomarkers, Measures the disease progression of PSD patient | - |
Visit Code | Visit Description | Number of Subjects | Visit Code | Visit Description | Number of Subjects |
---|---|---|---|---|---|
SC | Screening | 1844 | V12 | Month 60 | 6 |
BL | Baseline | 1435 | V13 | Month 72 | 4 |
V01 | Month 3 | 4 | V14 | Month 84 | 0 |
V02 | Month 6 | 19 | V15 | Month 96 | 0 |
V03 | Month 9 | 0 | V16 | Month 108 | 0 |
V04 | Month 12 | 570 | V17 | Month 120 | 0 |
V05 | Month 18 | 6 | V18 | Month 132 | 0 |
V06 | Month 24 | 891 | V19 | Month 144 | 0 |
V07 | Month 30 | 0 | ST | Symptomatic Therapy | 44 |
V08 | Month 36 | 84 | PW | Premature Withdrawal | 2 |
V09 | Month 42 | 0 | U01 | Unscheduled Visit 01 | 94 |
V10 | Month 48 | 608 | U02 | Unscheduled Visit 02 | 29 |
V11 | Month 54 | 0 | U03 | Unscheduled Visit 03 | 8 |
Fold | Accuracy | F1_Score | ||||||
---|---|---|---|---|---|---|---|---|
GANB | RFA | KNN | Stacked | GANB | RFA | KNN | Stacked | |
1st Fold | 91.1 | 90.3 | 75.1 | 91.0 | 0.977 | 0.947 | 0.781 | 0.980 |
2nd Fold | 92.3 | 89.5 | 79.2 | 94.3 | 0.983 | 0.960 | 0.803 | 0.984 |
3rd Fold | 92.6 | 89.9 | 79.7 | 92.2 | 0.984 | 0.967 | 0.801 | 0.985 |
Average | 92.2 | 89.9 | 78.5 | 92.5 | 0.982 | 0.958 | 0.795 | 0.983 |
Model | Accuracy | Deviation |
---|---|---|
GANB | 92.2% | +/−2.6% |
RFA classifier | 89.9% | +/−6.6% |
KNN | 78.5% | +/−2.9% |
Proposed stacked model | 92.5% | +/−2.0% |
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Hathaliya, J.; Modi, H.; Gupta, R.; Tanwar, S.; Alqahtani, F.; Elghatwary, M.; Neagu, B.-C.; Raboaca, M.S. Stacked Model-Based Classification of Parkinson’s Disease Patients Using Imaging Biomarker Data. Biosensors 2022, 12, 579. https://doi.org/10.3390/bios12080579
Hathaliya J, Modi H, Gupta R, Tanwar S, Alqahtani F, Elghatwary M, Neagu B-C, Raboaca MS. Stacked Model-Based Classification of Parkinson’s Disease Patients Using Imaging Biomarker Data. Biosensors. 2022; 12(8):579. https://doi.org/10.3390/bios12080579
Chicago/Turabian StyleHathaliya, Jigna, Hetav Modi, Rajesh Gupta, Sudeep Tanwar, Fayez Alqahtani, Magdy Elghatwary, Bogdan-Constantin Neagu, and Maria Simona Raboaca. 2022. "Stacked Model-Based Classification of Parkinson’s Disease Patients Using Imaging Biomarker Data" Biosensors 12, no. 8: 579. https://doi.org/10.3390/bios12080579
APA StyleHathaliya, J., Modi, H., Gupta, R., Tanwar, S., Alqahtani, F., Elghatwary, M., Neagu, B. -C., & Raboaca, M. S. (2022). Stacked Model-Based Classification of Parkinson’s Disease Patients Using Imaging Biomarker Data. Biosensors, 12(8), 579. https://doi.org/10.3390/bios12080579