AD-Lite Net: A Lightweight and Concatenated CNN Model for Alzheimer's Detection from MRI Images
Santanu Roy, Archit Gupta, Shubhi Tiwari, Palak Sahu

TL;DR
This paper introduces AD-Lite Net, a lightweight CNN with parallel concatenation and depthwise separable convolutions, achieving superior early Alzheimer's detection accuracy from MRI images compared to existing models.
Contribution
The paper presents a novel lightweight CNN architecture with parallel concatenation and specialized layers for improved Alzheimer's detection from MRI images.
Findings
Outperforms existing CNN and ViT models in accuracy.
Converges faster and mitigates class imbalance.
Validated on multiple MRI datasets with cross-validation.
Abstract
Alzheimer's Disease (AD) is a non-curable progressive neurodegenerative disorder that affects the human brain, leading to a decline in memory, cognitive abilities, and eventually, the ability to carry out daily tasks. Manual diagnosis of Alzheimer's disease from MRI images is fraught with less sensitivity and it is a very tedious process for neurologists. Therefore, there is a need for an automatic Computer Assisted Diagnosis (CAD) system, which can detect AD at early stages with higher accuracy. In this research, we have proposed a novel AD-Lite Net model (trained from scratch), that could alleviate the aforementioned problem. The novelties we bring here in this research are, (I) We have proposed a very lightweight CNN model by incorporating Depth Wise Separable Convolutional (DWSC) layers and Global Average Pooling (GAP) layers. (II) We have leveraged a ``parallel concatenation…
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Taxonomy
TopicsBrain Tumor Detection and Classification · Medical Imaging and Analysis · AI in cancer detection
MethodsByte Pair Encoding · Absolute Position Encodings · Vision Transformer · Average Pooling · Softmax · Label Smoothing · Dropout · Layer Normalization · Balanced Selection · Attention Is All You Need
