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A parallel solution for high resolution histological image analysis

机译:高分辨率组织学图像分析的并行解决方案

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摘要

This paper describes a general methodology for developing parallel image processing algorithms based on message passing for high resolution images (on the order of several Gigabytes). These algorithms have been applied to histological images and must be executed on massively parallel processing architectures. Advances in new technologies for complete slide digitalization in pathology have been combined with developments in biomedical informatics. However, the efficient use of these digital slide systems is still a challenge. The image processing that these slides are subject to is still limited both in terms of data processed and processing methods. The work presented here focuses on the need to design and develop parallel image processing tools capable of obtaining and analyzing the entire gamut of information included in digital slides. Tools have been developed to assist pathologists in image analysis and diagnosis, and they cover low and high-level image processing methods applied to histological images. Code portability, reusability and scalability have been tested by using the following parallel computing architectures: distributed memory with massive parallel processors and two networks, INFINIBAND and Myrinet, composed of 17 and 1024 nodes respectively. The parallel framework proposed is flexible, high performance solution and it shows that the efficient processing of digital microscopic images is possible and may offer important benefits to pathology laboratories.
机译:本文介绍了一种基于高分辨率图像的消息传递来开发并行图像处理算法的通用方法(几千兆字节的数量级)。这些算法已应用于组织学图像,并且必须在大规模并行处理体系结构上执行。病理学完全幻灯片数字化的新技术的进步与生物医学信息学的发展相结合。但是,有效利用这些数字幻灯片系统仍然是一个挑战。这些幻灯片所经受的图像处理在数据处理和处理方法上仍然受到限制。本文介绍的工作重点在于设计和开发并行图像处理工具的需求,这些工具能够获取和分析数字幻灯片中包含的全部信息。已经开发了可帮助病理学家进行图像分析和诊断的工具,这些工具涵盖了应用于组织学图像的低级和高级图像处理方法。通过使用以下并行计算体系结构,测试了代码的可移植性,可重用性和可伸缩性:具有大型并行处理器和两个网络的分布式内存INFINIBAND和Myrinet,分别由17个和1024个节点组成。提出的并行框架是灵活的高性能解决方案,它表明数字显微图像的有效处理是可能的,并且可能为病理实验室提供重要的好处。

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