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一种基于 QR 码的框架,用于在医学诊断中使用深度学习进行快速生物医学图像处理。

A QR code-enabled framework for fast biomedical image processing in medical diagnosis using deep learning.

机构信息

Faculty of Computing & Information Technology, King Abdulaziz University, P. O. Box 344, 21911, Rabigh, Saudi Arabia.

出版信息

BMC Med Imaging. 2024 Aug 1;24(1):198. doi: 10.1186/s12880-024-01351-z.

DOI:10.1186/s12880-024-01351-z
PMID:39090546
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11295324/
Abstract

In the realm of disease prognosis and diagnosis, a plethora of medical images are utilized. These images are typically stored either within the local on-premises servers of healthcare providers or within cloud storage infrastructures. However, this conventional storage approach often incurs high infrastructure costs and results in sluggish information retrieval, ultimately leading to delays in diagnosis and consequential wastage of valuable time for patients. The methodology proposed in this paper offers a pioneering solution to expedite the diagnosis of medical conditions while simultaneously reducing infrastructure costs associated with data storage. Through this study, a high-speed biomedical image processing approach is designed to facilitate rapid prognosis and diagnosis. The proposed framework includes Deep learning QR code technique using an optimized database design aimed at alleviating the burden of intensive on-premises database requirements. The work includes medical dataset from Crawford Image and Data Archive and Duke CIVM for evaluating the proposed work suing different performance metrics, The work has also been compared from the previous research further enhancing the system's efficiency. By providing healthcare providers with high-speed access to medical records, this system enables swift retrieval of comprehensive patient details, thereby improving accuracy in diagnosis and supporting informed decision-making.

摘要

在疾病预测和诊断领域,大量的医学图像被使用。这些图像通常存储在医疗服务提供商的本地内部服务器或云存储基础设施中。然而,这种传统的存储方法通常会产生高昂的基础设施成本,并导致信息检索缓慢,最终导致诊断延误和患者宝贵时间的浪费。本文提出的方法为加速疾病诊断提供了一个开创性的解决方案,同时降低了与数据存储相关的基础设施成本。通过这项研究,我们设计了一种高速生物医学图像处理方法,以促进快速预测和诊断。所提出的框架包括使用优化数据库设计的深度学习 QR 码技术,旨在减轻密集型本地数据库需求的负担。这项工作还包括来自 Crawford Image 和 Data Archive 以及 Duke CIVM 的医学数据集,使用不同的性能指标来评估所提出的工作,并且还与之前的研究进行了比较,进一步提高了系统的效率。通过为医疗服务提供商提供高速访问医疗记录的途径,该系统能够快速检索全面的患者详细信息,从而提高诊断的准确性,并支持明智的决策。

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