The 10th International Conference on Next Generation Computing 2024 (2024.11)바로가기
페이지
pp.258-260
저자
Faizaan Fazal Khan, Ji-In Kim, Jae-Young Pyun, Goo-Rak Kwon
언어
영어(ENG)
URL
https://www.earticle.net/Article/A468856
원문정보
초록
영어
The best defenses against AD are early detection and treatment. Recent developments in magnetic resonance imaging (MRI)-based computer-aided diagnostics have demonstrated promise in precisely classifying AD. To investigate these methods, this study makes use of the OASIS MRI dataset, which consists of 80,000 brain MRI pictures. Resampling was required in order to prevent bias towards the majority class when convolutional neural network (CNN) models were applied for classification due to the large imbalance of the dataset. The image slices obtained from 3D OASIS dataset's were examined for this study utilizing the EfficientNetV2B0 with customized classification layers and a condensed custom CNN model. There are four categories: nondemented, very mild demented, mild demented, and moderately demented. We covered multiclass as well as binary classification. Using various dataset sizes, the study evaluated two models: EfficientNetV2B0 and a customized sequential CNN model, with 98% and 96% accuracy, respectively. The findings address the disparity in different class sizes and demonstrate the promise of sophisticated CNN architectures for Alzheimer's disease classification and early detection.
목차
Abstract 1. INTRODUCTION 2. MATERIALS AND METHODS A. Data B. Data Acquisition C. Proposed Model 3. RESULT AND DISCUSSION 4. DISCUSSION 5. CONCLUSION ACKNOWLEDGMENT CONFLICT OF INTEREST REFERENCES