Medical Data Fusion for Telemedicine

V. Megalooikonomou, D. Kontos
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引用次数: 18

Abstract

In this article, we describe a framework for distributed statistical analysis of medical images that operates under minimal bandwidth requirements. This framework implements a distributed dynamic recursive partitioning algorithm for medical image analysis that integrates medical image data repositories that contain multiple studies and are potentially located at spatially distributed clinical sites. The goal is to detect associations among regions of interest (ROIs) in images and clinical properties such as the progression of a disease. Statistical descriptors are computed from the ROIs in order to assist in medical decision making by facilitating automatic characterization, classification, and similarity searches of ROIs (e.g., lesions, tumors, and regions of morphological variability). The system consists of a central information fusion site that coordinates the analysis by communicating with remotely located processing sites. The described system has the advantage of keeping bandwidth requirements to a minimum by reducing the amount of data that need to be transferred, while medical decision making is not affected by the data reduction. This benefit makes the proposed distributed medical image analysis framework very suitable for deploying effective telemedical applications.
用于远程医疗的医疗数据融合
在本文中,我们描述了一个在最小带宽要求下运行的医学图像分布式统计分析框架。该框架实现了用于医学图像分析的分布式动态递归划分算法,该算法集成了包含多个研究的医学图像数据存储库,并且可能位于空间分布的临床站点。目标是检测图像中感兴趣区域(roi)与临床特征(如疾病进展)之间的关联。从roi中计算统计描述符,以便通过促进roi的自动表征、分类和相似性搜索(例如,病变、肿瘤和形态变异区域)来辅助医疗决策。该系统由一个中央信息融合站点组成,该站点通过与远程处理站点通信来协调分析。所描述的系统的优点是,通过减少需要传输的数据量,将带宽需求保持在最低限度,而医疗决策不受数据减少的影响。这种优点使得所提出的分布式医学图像分析框架非常适合部署有效的远程医疗应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IEEE Engineering in Medicine and Biology Magazine
IEEE Engineering in Medicine and Biology Magazine 工程技术-工程:生物医学
自引率
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发文量
1
审稿时长
>12 weeks
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