UICC-TPCC, Charite, Berlin, Germany.
Diagn Pathol. 2011;6 Suppl 1(Suppl 1):S12. doi: 10.1186/1746-1596-6-s1-s12.
Diagnostic surgical pathology or tissue–based diagnosis still remains the most reliable and specific diagnostic medical procedure. The development of whole slide scanners permits the creation of virtual slides and to work on so-called virtual microscopes. In addition to interactive work on virtual slides approaches have been reported that introduce automated virtual microscopy, which is composed of several tools focusing on quite different tasks. These include evaluation of image quality and image standardization, analysis of potential useful thresholds for object detection and identification (segmentation), dynamic segmentation procedures, adjustable magnification to optimize feature extraction, and texture analysis including image transformation and evaluation of elementary primitives. Grid technology seems to possess all features to efficiently target and control the specific tasks of image information and detection in order to obtain a detailed and accurate diagnosis. Grid technology is based upon so-called nodes that are linked together and share certain communication rules in using open standards. Their number and functionality can vary according to the needs of a specific user at a given point in time. When implementing automated virtual microscopy with Grid technology, all of the five different Grid functions have to be taken into account, namely 1) computation services, 2) data services, 3) application services, 4) information services, and 5) knowledge services. Although all mandatory tools of automated virtual microscopy can be implemented in a closed or standardized open system, Grid technology offers a new dimension to acquire, detect, classify, and distribute medical image information, and to assure quality in tissue–based diagnosis.
诊断外科病理学或基于组织的诊断仍然是最可靠和最特异的诊断医疗程序。全切片扫描仪的发展允许创建虚拟幻灯片,并在所谓的虚拟显微镜上进行操作。除了交互式的虚拟幻灯片操作方法外,还报道了引入自动化虚拟显微镜的方法,该方法由几个专注于截然不同任务的工具组成。这些工具包括评估图像质量和图像标准化、分析对象检测和识别(分割)的潜在有用阈值、动态分割程序、可调节的放大倍数以优化特征提取,以及包括图像变换和基本元分析的纹理分析。网格技术似乎具有所有特征,可有效地针对和控制图像信息和检测的特定任务,以获得详细和准确的诊断。网格技术基于所谓的节点,这些节点通过使用开放标准链接在一起并共享某些通信规则。它们的数量和功能可以根据特定用户在特定时间点的需求而变化。在使用网格技术实现自动化虚拟显微镜时,必须考虑到所有五个不同的网格功能,即 1)计算服务、2)数据服务、3)应用服务、4)信息服务和 5)知识服务。尽管自动化虚拟显微镜的所有强制性工具都可以在封闭或标准化的开放系统中实现,但网格技术提供了一个新的维度,可以获取、检测、分类和分发医学图像信息,并保证基于组织的诊断的质量。