Decoding cognitive health using machine learning: A comprehensive evaluation for diagnosis of significant memory concern

M Sajid, R Sharma, I Beheshti… - … : Data Mining and …, 2024 - Wiley Online Library
The timely identification of significant memory concern (SMC) is crucial for proactive
cognitive health management, especially in an aging population. Detecting SMC early …

[PDF][PDF] Application of Machine Learning to the Process of Crop Selection Based on Land Dataset

SS Rajest, SS Priscila, R Regin, T Shynu… - International Journal on …, 2023 - researchgate.net
Annotation: We are well recognised that the vast majority of Indians work in agriculture. Most
farmers always grow the same thing, always use the same amount of fertilizer, and always …

Classification of Satellite Photographs Utilizing the K-Nearest Neighbor Algorithm

SS Priscila, SS Rajest, R Regin… - … Asian Journal of …, 2023 - cajmtcs.centralasianstudies.org
Categorizing the various components of a satellite image is necessary for producing
thematic maps, which requires the image to be analysed and classified first. We have …

Early detection of dementia using artificial intelligence and multimodal features with a focus on neuroimaging: A systematic literature review

O Grigas, R Maskeliunas, R Damaševičius - Health and Technology, 2024 - Springer
Purpose This paper is a systematic literature review of the use of artificial intelligence
techniques to detect early dementia. It focuses on multi-modal feature analysis in …

[HTML][HTML] Principal Component Analysis for ATM Facial Recognition Security

R Regin, SS Rajest, T Shynu - … Asian Journal of …, 2023 - cajmns.centralasianstudies.org
Abstract The Automated Teller Machine, also known as an ATM, has become the most
common method by which individuals withdraw cash for their own use. The transactions that …

A computational pipeline towards large-scale and multiscale modeling of traumatic axonal injury

C Zhang, L Bartels, A Clansey, J Kloiber… - Computers in Biology …, 2024 - Elsevier
Contemporary biomechanical modeling of traumatic brain injury (TBI) focuses on either the
global brain as an organ or a representative tiny section of a single axon. In addition, while it …

Prior-Guided Adversarial Learning With Hypergraph for Predicting Abnormal Connections in Alzheimer's Disease

Q Zuo, H Wu, CLP Chen, B Lei… - IEEE Transactions on …, 2024 - ieeexplore.ieee.org
Alzheimer's disease (AD) is characterized by alterations of the brain's structural and
functional connectivity during its progressive degenerative processes. Existing auxiliary …

[PDF][PDF] OTP As a Service in the Cloud Allows for Authentication of Multiple Services

T Shynu, SS Rajest, R Regin - International Journal on Orange …, 2023 - researchgate.net
Annotation: Users no longer trust traditional password-based authentication methods since
so many online services now interact with one another. Credentials obtained online are …

[HTML][HTML] Investigating Deep Learning for Early Detection and Decision-Making in Alzheimer's Disease: A Comprehensive Review

G Hcini, I Jdey, H Dhahri - Neural Processing Letters, 2024 - Springer
Alzheimer's disease (AD) is a neurodegenerative disorder that affects millions of people
worldwide, making early detection essential for effective intervention. This review paper …

Using principal component analysis to determine which vestibular stimuli provide best biomarkers for separating Alzheimer's from mixed Alzheimer's disease

S Marzban, Z Dastgheib, B Lithgow… - Medical & Biological …, 2024 - Springer
Alzheimer's disease (AD) is often mixed with cerebrovascular disease (AD-CVD).
Heterogeneity of dementia etiology and the overlapping of neuropathological features of AD …