Optimal Feature Selection and Classification for Parkinson’s Disease Using Deep Learning and Dynamic Bag of Features Optimization
Parkinson’s Disease (PD) is a neurological condition that worsens with time and is characterized bysymptoms such as cognitive impairment andbradykinesia, stiffness, and tremors. Parkinson’s is attributed to the interference of brain cells responsible for dopamine production, a substance regulating c...
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MDPI AG
2024-11-01
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| Series: | BioMedInformatics |
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| Online Access: | https://www.mdpi.com/2673-7426/4/4/120 |
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| author | Aarti Swathi Gowroju Mst Ismat Ara Begum A. S. M. Sanwar Hosen |
| author_facet | Aarti Swathi Gowroju Mst Ismat Ara Begum A. S. M. Sanwar Hosen |
| author_sort | Aarti |
| collection | DOAJ |
| description | Parkinson’s Disease (PD) is a neurological condition that worsens with time and is characterized bysymptoms such as cognitive impairment andbradykinesia, stiffness, and tremors. Parkinson’s is attributed to the interference of brain cells responsible for dopamine production, a substance regulating communication between brain cells. The brain cells involved in dopamine generation handle adaptation and control, and smooth movement. Convolutional Neural Networks are used to extract distinctive visual characteristics from numerous graphomotor sample representations generated by both PD and control participants. The proposed method presents an optimal feature selection technique based on Deep Learning (DL) and the Dynamic Bag of Features Optimization Technique (DBOFOT). Our method combines neural network-based feature extraction with a strong optimization technique to dynamically choose the most relevant characteristics from biological data. Advanced DL architectures are then used to classify the chosen features, guaranteeing excellent computational efficiency and accuracy. The framework’s adaptability to different datasets further highlights its versatility and potential for further medical applications. With a high accuracy of 0.93, the model accurately identifies 93% of the cases that are categorized as Parkinson’s. Additionally, it has a recall of 0.89, which means that 89% of real Parkinson’s patients are accurately identified. While the recall for Class 0 (Healthy) is 0.75, meaning that 75% of the real healthy cases are properly categorized, the precision decreases to 0.64 for this class, indicating a larger false positive rate. |
| format | Article |
| id | doaj-art-e2c5aee3f0d344d99cd3728714a3bbd2 |
| institution | OA Journals |
| issn | 2673-7426 |
| language | English |
| publishDate | 2024-11-01 |
| publisher | MDPI AG |
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| series | BioMedInformatics |
| spelling | doaj-art-e2c5aee3f0d344d99cd3728714a3bbd22025-08-20T02:00:55ZengMDPI AGBioMedInformatics2673-74262024-11-01442223225010.3390/biomedinformatics4040120Optimal Feature Selection and Classification for Parkinson’s Disease Using Deep Learning and Dynamic Bag of Features OptimizationAarti0Swathi Gowroju1Mst Ismat Ara Begum2A. S. M. Sanwar Hosen3Department of Computer Science and Engineering, Lovely Professional University, Jalandhar 144411, Punjab, IndiaDepartment of Artificial Intelligence and Machine Learning, Sreyas Institute of Engineering and Technology, Hyderabad 500068, Telangana, IndiaDepartment of Biomedical Sciences, Institute for Medical Science, Jeonbuk National University Medical School, Jeonju 54907, Republic of KoreaDepartment of Artificial Intelligence and Big Data, Woosong University, Daejeon 34606, Republic of KoreaParkinson’s Disease (PD) is a neurological condition that worsens with time and is characterized bysymptoms such as cognitive impairment andbradykinesia, stiffness, and tremors. Parkinson’s is attributed to the interference of brain cells responsible for dopamine production, a substance regulating communication between brain cells. The brain cells involved in dopamine generation handle adaptation and control, and smooth movement. Convolutional Neural Networks are used to extract distinctive visual characteristics from numerous graphomotor sample representations generated by both PD and control participants. The proposed method presents an optimal feature selection technique based on Deep Learning (DL) and the Dynamic Bag of Features Optimization Technique (DBOFOT). Our method combines neural network-based feature extraction with a strong optimization technique to dynamically choose the most relevant characteristics from biological data. Advanced DL architectures are then used to classify the chosen features, guaranteeing excellent computational efficiency and accuracy. The framework’s adaptability to different datasets further highlights its versatility and potential for further medical applications. With a high accuracy of 0.93, the model accurately identifies 93% of the cases that are categorized as Parkinson’s. Additionally, it has a recall of 0.89, which means that 89% of real Parkinson’s patients are accurately identified. While the recall for Class 0 (Healthy) is 0.75, meaning that 75% of the real healthy cases are properly categorized, the precision decreases to 0.64 for this class, indicating a larger false positive rate.https://www.mdpi.com/2673-7426/4/4/120Parkinson’s diseasefeature selectiondeep learningdynamic bag of featuresclassificationpredictive modeling |
| spellingShingle | Aarti Swathi Gowroju Mst Ismat Ara Begum A. S. M. Sanwar Hosen Optimal Feature Selection and Classification for Parkinson’s Disease Using Deep Learning and Dynamic Bag of Features Optimization BioMedInformatics Parkinson’s disease feature selection deep learning dynamic bag of features classification predictive modeling |
| title | Optimal Feature Selection and Classification for Parkinson’s Disease Using Deep Learning and Dynamic Bag of Features Optimization |
| title_full | Optimal Feature Selection and Classification for Parkinson’s Disease Using Deep Learning and Dynamic Bag of Features Optimization |
| title_fullStr | Optimal Feature Selection and Classification for Parkinson’s Disease Using Deep Learning and Dynamic Bag of Features Optimization |
| title_full_unstemmed | Optimal Feature Selection and Classification for Parkinson’s Disease Using Deep Learning and Dynamic Bag of Features Optimization |
| title_short | Optimal Feature Selection and Classification for Parkinson’s Disease Using Deep Learning and Dynamic Bag of Features Optimization |
| title_sort | optimal feature selection and classification for parkinson s disease using deep learning and dynamic bag of features optimization |
| topic | Parkinson’s disease feature selection deep learning dynamic bag of features classification predictive modeling |
| url | https://www.mdpi.com/2673-7426/4/4/120 |
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