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An end-to-end implicit neural representation architecture for medical volume data.

Sheibanifard, A., Yu, H., Ruan, Z. and Zhang, J. J., 2025. An end-to-end implicit neural representation architecture for medical volume data. PLoS ONE, 20 (1), e0314944.

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DOI: 10.1371/journal.pone.0314944

Abstract

Medical volume data are rapidly increasing, growing from gigabytes to petabytes, which presents significant challenges in organisation, storage, transmission, manipulation, and rendering. To address the challenges, we propose an end-to-end architecture for data compression, leveraging advanced deep learning technologies. This architecture consists of three key modules: downsampling, implicit neural representation (INR), and super-resolution (SR). We employ a trade-off point method to optimise each module's performance and achieve the best balance between high compression rates and reconstruction quality. Experimental results on multi-parametric MRI data demonstrate that our method achieves a high compression rate of up to 97.5% while maintaining superior reconstruction accuracy, with a Peak Signal-to-Noise Ratio (PSNR) of 40.05 dB and Structural Similarity Index (SSIM) of 0.96. This approach significantly reduces GPU memory requirements and processing time, making it a practical solution for handling large medical datasets.

Item Type:Article
ISSN:1932-6203
Uncontrolled Keywords:Humans; Magnetic Resonance Imaging; Data Compression; Neural Networks, Computer; Deep Learning; Signal-To-Noise Ratio; Image Processing, Computer-Assisted; Algorithms
Group:Faculty of Media & Communication
ID Code:40676
Deposited By: Symplectic RT2
Deposited On:08 Jan 2025 12:12
Last Modified:08 Jan 2025 12:12

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