J. M. S. Serrano, M. A. C. Quevedo, M. de la Iglesia-Vaya, L. Martí-Bonmatí, R. Valenzuela
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引用次数: 2
摘要
bioimaging管理和知识提取系统的云(云CEIB R & D),本文提出了将使用提供的服务集中bioimaging通过瓦伦西亚生物医学成像(GIMC)为基础管理和从bioimaging银行获取知识,为知识服务的形式提供高附加值和专业知识的电子病历系统(HSE),从而使R & D病人的结果,提高其中所含信息的质量。研发云中欧国际工商学院有四大通用模块:搜索引擎(SE)、临床试验管理器(GEBID)、匿名器(ANON)和生物图像知识引擎(BIKE)。BIKE是中心模块,通过其子模块分析和生成知识,通过服务提供给HSE。中欧国际工商学院研发云采用的技术完全基于开源。在BIKE中,我们专注于分类器模块(BIKE- classifier)的开发,该模块旨在建立一种提取生物成像和后续分析的生物标记物的方法,从而根据GIMC诊断经验在生物成像可用池中获得分类。
R and D Cloud CEIB: Management and Knowledge Extraction System for Bioimaging in the Cloud
The management and knowledge extraction system for bioimaging in the cloud (R & D Cloud CEIB) which is proposed in this article will use the services offered by the centralization of bioimaging through Valencian Biobank Medical Imaging (GIMC) as a basis for managing and extracting knowledge from a bioimaging bank, providing that knowledge in the form of services with high added value and expertise to the Electronic Patient History System (HSE), thus bringing the results of R & D to the patient, improving the quality of the information contained therein. R & D Cloud CEIB has four general modules: Search engine (SE), manager of clinical trials (GEBID), anonymizer (ANON) and bioimage knowledge engine (BIKE). The BIKE is the central module and through its sub modules analyzes and generates knowledge to provide to the HSE through services. The technology used in R & D Cloud CEIB is completely based on Open Source. Within the BIKE, we focus on the development of the classifier module (BIKE-Classifier), which aims to establish a method for the extraction of biomarkers for bioimaging and subsequent analysis to obtain a classification in bioimaging available pools following GIMC diagnostic experiences.