Nayef Alqahtani
Deep Belief Networks (DBN) with IoT-Based Alzheimer’s Disease Detection and Classification
Alqahtani, Nayef; Alam, Shadab; Aqeel, Ibrahim; Shuaib, Mohammed; Mohsen Khormi, Ibrahim; Khan, Surbhi Bhatia; Malibari, Areej A.
Authors
Shadab Alam
Ibrahim Aqeel
Mohammed Shuaib
Ibrahim Mohsen Khormi
Dr Surbhi Khan S.Khan138@salford.ac.uk
Lecturer in Data Science
Areej A. Malibari
Abstract
Dementias that develop in older people test the limits of modern medicine. As far as dementia in older people goes, Alzheimer’s disease (AD) is by far the most prevalent form. For over fifty years, medical and exclusion criteria were used to diagnose AD, with an accuracy of only 85 per cent. This did not allow for a correct diagnosis, which could be validated only through postmortem examination. Diagnosis of AD can be sped up, and the course of the disease can be predicted by applying machine learning (ML) techniques to Magnetic Resonance Imaging (MRI) techniques. Dementia in specific seniors could be predicted using data from AD screenings and ML classifiers. Classifier performance for AD subjects can be enhanced by including demographic information from the MRI and the patient’s preexisting conditions. In this article, we have used the Alzheimer’s Disease Neuroimaging Initiative (ADNI) dataset. In addition, we proposed a framework for the AD/non-AD classification of dementia patients using longitudinal brain MRI features and Deep Belief Network (DBN) trained with the Mayfly Optimization Algorithm (MOA). An IoT-enabled portable MR imaging device is used to capture real-time patient MR images and identify anomalies in MRI scans to detect and classify AD. Our experiments validate that the predictive power of all models is greatly enhanced by including early information about comorbidities and medication characteristics. The random forest model outclasses other models in terms of precision. This research is the first to examine how AD forecasting can benefit from using multimodal time-series data. The ability to distinguish between healthy and diseased patients is demonstrated by the DBN-MOA accuracy of 97.456%, f-Score of 93.187 %, recall of 95.789 % and precision of 94.621% achieved by the proposed technique. The experimental results of this research demonstrate the efficacy, superiority, and applicability of the DBN-MOA algorithm developed for the purpose of AD diagnosis.
Citation
Alqahtani, N., Alam, S., Aqeel, I., Shuaib, M., Mohsen Khormi, I., Khan, S. B., & Malibari, A. A. (in press). Deep Belief Networks (DBN) with IoT-Based Alzheimer’s Disease Detection and Classification. Applied Sciences, 13(13), 7833. https://doi.org/10.3390/app13137833
Journal Article Type | Article |
---|---|
Acceptance Date | Jun 28, 2023 |
Online Publication Date | Jul 3, 2023 |
Deposit Date | Aug 15, 2023 |
Publicly Available Date | Aug 15, 2023 |
Journal | Applied Sciences |
Publisher | MDPI |
Peer Reviewed | Peer Reviewed |
Volume | 13 |
Issue | 13 |
Pages | 7833 |
DOI | https://doi.org/10.3390/app13137833 |
Keywords | Fluid Flow and Transfer Processes, Computer Science Applications, Process Chemistry and Technology, General Engineering, Instrumentation, General Materials Science |
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Publisher Licence URL
http://creativecommons.org/licenses/by/4.0/
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