Classification of Alzheimer's Disease Structural MRI Data by Deep Learning Convolutional Neural Networks
Saman Sarraf, Ghassem Tofighi

TL;DR
This paper demonstrates that convolutional neural networks, specifically LeNet-5, can effectively classify Alzheimer's disease from normal brain MRI data with high accuracy, aiding early diagnosis and disease staging.
Contribution
The study applies CNNs to Alzheimer's MRI classification, achieving high accuracy and showcasing the potential of deep learning for medical diagnosis.
Findings
Achieved 98.84% accuracy in classifying Alzheimer's from healthy brains.
CNN features are effective in distinguishing clinical MRI data.
Method can be extended to more complex disease prediction tasks.
Abstract
Recently, machine learning techniques especially predictive modeling and pattern recognition in biomedical sciences from drug delivery system to medical imaging has become one of the important methods which are assisting researchers to have deeper understanding of entire issue and to solve complex medical problems. Deep learning is a powerful machine learning algorithm in classification while extracting low to high-level features. In this paper, we used convolutional neural network to classify Alzheimer's brain from normal healthy brain. The importance of classifying this kind of medical data is to potentially develop a predict model or system in order to recognize the type disease from normal subjects or to estimate the stage of the disease. Classification of clinical data such as Alzheimer's disease has been always challenging and most problematic part has been always selecting the…
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Taxonomy
TopicsBrain Tumor Detection and Classification · Functional Brain Connectivity Studies · Medical Image Segmentation Techniques
