乳腺癌诊断中全幻灯片图像处理的现有分析方法及性能要求

I. Pöllänen, Billy Braithwaite, Keijo Haataja, Tiia Ikonen, Pekka J. Toivanen
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引用次数: 7

摘要

本文对目前乳腺癌诊断中全幻灯片图像分析处理的方法及性能要求进行了综述。wsi提供来自患者病变组织的高分辨率数字图像数据。数字整张幻灯片图像通常非常大,包含大量的信息。数字化组织标本成数字图像的形式允许计算分析算法的发展和应用。生物组织是复杂的,健康个体之间以及同一疾病患者之间的组织结构存在差异。此外,组织制备和数字化通常会产生大量的伪影,并且更加复杂,这给分类带来了挑战。这种差异以及图像的大尺寸使得创建准确可靠的自动化乳腺癌图像分析成为一项挑战。在ALMARVI项目中,我们的目标是在我们的乳腺癌分析方案中生成和实施有效的组织病理学图像分析算法。本文重点讨论组织病理学乳腺癌诊断的相关信息,也可视为向非专家介绍WSI分析的概念。由于WSI大小非常大(未压缩时可达40gb),因此对计算分析提出了挑战,这需要计算效率高的工具和合适的方法来缓解图像大尺寸带来的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Current analysis approaches and performance needs for whole slide image processing in breast cancer diagnostics
In this paper, the current approaches and performance needs for whole slide image (WSI) analysis processing in breast cancer diagnostics are discussed. WSIs provide high resolution digital image data from the patient's diseased tissue. Digital whole slide images are typically very large and contain a high amount of information. Digitizing tissue specimen into the form of digital images allows the development and application of computational analysis algorithms. Biological tissues are complex with variance in tissue structures between healthy individuals as well as between patients with the same disease. Furthermore, the tissue preparation and digitization usually generates a lot of artifacts and more complexity, which causes classification challenges. This variance and also the large size of the images make creating an accurate and reliable automated breast cancer image analysis a challenge. In the ALMARVI project we aim at generating and implementing efficient histopathological image analysis algorithms in our breast cancer analysis scheme. This paper focuses on discussing relevant information concerning histopathological breast cancer diagnosis, and could also be considered as an introduction to the concept of WSI analysis to non-experts. Since the WSI sizes are very large (up to 40 GB with no compression) there are challenges on the computational analysis which requires computationally efficient tools and suitable approaches to relieve the problems caused by the large size of the images.
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