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A Holographic Sensor-Integrated Deep Learning Framework for Noninvasive Assessment of Stored Red Blood Cell Quality

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Title
A Holographic Sensor-Integrated Deep Learning Framework for Noninvasive Assessment of Stored Red Blood Cell Quality
Issued Date
2025-12
Citation
Advanced Sensor Research, v.4, no.12
Type
Article
Author Keywords
self-supervised learningstorage lesionsdeep learningdiffusion modelholographic image sensorred blood cells
Keywords
MICROSCOPYSTORAGE
ISSN
2751-1219
Abstract

Prolonged storage of red blood cells (RBCs) induces morphological degradation that can compromise transfusion efficacy. Traditional quality assessment methods are often labor-intensive and time-consuming, limiting their utility in real-time settings. Although deep learning has been applied to RBC imaging, most approaches require large datasets and complex architectures, making them impractical for efficient deployment. This study introduces a holographic sensor-integrated deep learning framework for noninvasive RBC quality assessment using small datasets. A diffusion model is employed to synthetically generate phase images and segmentation masks, augmenting limited data. Self-supervised learning with pre-trained models further enhances classification performance while maintaining a streamlined model architecture. Compared to conventional segmentation methods, the proposed framework achieves higher accuracy and significantly faster inference. It also enables reliable detection of storage-induced morphological changes, providing proportional indicators of transfusion viability. Experimental results validate its effectiveness as a practical tool for real-time, sensor-driven monitoring of RBC quality.

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URI
https://scholar.dgist.ac.kr/handle/20.500.11750/59921
DOI
10.1002/adsr.202500073
Publisher
Wiley
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문인규
Moon, Inkyu문인규

Department of Robotics and Mechatronics Engineering

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