Quanvolutional Neural Networks for Pneumonia Detection: An Efficient Quantum-Assisted Feature Extraction Paradigm
Gazi Tanbhir, Md. Farhan Shahriyar, Abdullah Md Raihan Chy

TL;DR
This paper introduces a quantum-classical hybrid neural network for pneumonia detection that outperforms traditional CNNs in accuracy and efficiency by leveraging quantum feature extraction techniques.
Contribution
It presents a novel quantum-assisted feature extraction method using quanvolutional layers, improving accuracy and sample efficiency in medical image classification.
Findings
QNN achieved 83.33% validation accuracy, surpassing classical CNN's 73.33%.
Quantum feature extraction enhances convergence and data efficiency.
The approach demonstrates potential for quantum computing in medical diagnostics.
Abstract
Pneumonia poses a significant global health challenge, demanding accurate and timely diagnosis. While deep learning, particularly Convolutional Neural Networks (CNNs), has shown promise in medical image analysis for pneumonia detection, CNNs often suffer from high computational costs, limitations in feature representation, and challenges in generalizing from smaller datasets. To address these limitations, we explore the application of Quanvolutional Neural Networks (QNNs), leveraging quantum computing for enhanced feature extraction. This paper introduces a novel hybrid quantum-classical model for pneumonia detection using the PneumoniaMNIST dataset. Our approach utilizes a quanvolutional layer with a parameterized quantum circuit (PQC) to process 2x2 image patches, employing rotational Y-gates for data encoding and entangling layers to generate non-classical feature representations.…
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