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Dawn of the digital diagnosis assisting system, can it open a new age for pathology?

机译:数字诊断辅助系统的曙光,它可以为病理学开辟一个新的年龄吗?

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Digital pathology is developing based on the improvement and popularization of WSI (whole slide imaging) scanners. WSI scanners are widely expected to be used as the next generation microscope for diagnosis; however, their usage is currently mostly limited to education and archiving. Indeed, there are still many hindrances in using WSI scanners for diagnosis (not research purpose), two of the main reasons being the perceived high cost and small gain in productivity obtained by switching from the microscope to a WSI system and the lack of WSI standardization. We believe that a key factor for advancing digital pathology is the creation of computer assisted diagnosis systems (CAD). Such systems require high-resolution digitization of slides and provide a clear added value to the often costly conversion to WSI. We (NEC Corporation) are creating a CAD system, named e-Pathologist~?. This system is currently used at independent pathology labs for quality control (QC/QA), double-checking pathologists diagnosis and preventing missed cancers. At the end of 2012, about 80,000 slides, 200,000 tissues of gastric and colorectal samples will have been analyzed by e-Pathologist~?. Through the development of e-Pathologist~?, it has become clear that a computer program should be inspired by the pathologist diagnosis process, yet it should not be a mere copy or simulation of it. Indeed pathologists often approach the diagnosis of slides in a "holistic" manner, examining them at various magnifications, panning and zooming in a seemingly haphazard way that they often have a hard time to precisely describe. Hence there has been no clear recipe emerging from numerous interviews with pathologists on how to exactly computer code a diagnosis expert system. Instead, we focused on extracting a small set of histopathological features that were consistently indicated as important by the pathologists and then let the computer figure out how to interpret in a quantitative way the presence or absence of these features over the entire slide. Using the overall pathologists diagnosis (into a class of disease), we train the computer system using advanced machine learning techniques to predict the disease based on the extracted features. By considering the diagnosis of several expert pathologists during the training phase, we insure that the machine is learning a "gold standard" that will be applied consistently and objectively for all subsequent diagnosis, making them more predictable and reliable. Considering the future of digital pathology, it is essential for a CAD system to produce effective and accurate clinical data. To this effect, there remain many hurdles, including standardization as well as more research into seeking clinical evidences from "computer-friendly" objective measurements of histological images. Currently the most commonly used staining method is H&E (Hematoxylin and Eosin), but it is extremely difficult to standardize the H&E staining process. Current pathology criteria, category, definitions, and thresholds are all on based pathologists subjective observations. Digital pathology is an emerging field and researchers should bear responsibility not only for developing new algorithms, but also for understanding the meaning of measured quantitative data.
机译:数字病理学基于WSI(整个幻灯片成像)扫描仪的改进和普及。 WSI扫描仪广泛预期用作诊断的下一代显微镜;但是,他们的用法目前主要限于教育和归档。实际上,使用WSI扫描仪进行诊断(不是研究目的)的许多障碍,这两个主要原因是通过从显微镜切换到WSI系统而获得的高成本和生产率的小增益,以及缺乏WSI标准化而获得的生产率。 。我们认为推进数字病理学的关键因素是建立计算机辅助诊断系统(CAD)。这种系统需要幻灯片的高分辨率数字化,并为WSI的经常昂贵转换提供清晰的附加值。我们(NEC公司)正在创建一个名为电子病理学家的CAD系统〜?该系统目前用于质量控制的独立病理实验室(QC / QA),双重检查病理学家诊断和预防错过癌症。 2012年底,通过电子病理学家分析了大约80,000个载玻片,200,000个胃和结直肠样品组织~~~~~~~~通过开发电子病理学家〜?,已经清楚地清楚的是,计算机程序应该受到病理学家诊断过程的启发,但它不应该是副本或模拟它。实际上病理学家经常以“整体”方式探讨滑块的诊断,以各种放大率,以看似随意的方式检查它们,以至于它们通常具有难以精确描述的困难的方式。因此,由于如何完全计算机代码诊断专家系统,从众多面试中出现了从众多面试中出现的清晰食谱。相反,我们专注于提取一小组组织病理学特征,该特征一致地由病理学家表示重要,然后让计算机弄清楚如何以定量方式解释这些特征在整个载玻片上的存在或不存在。使用整体病理学家诊断(进入一类疾病),我们使用先进的机器学习技术训练计算机系统,以基于提取的特征来预测疾病。通过考虑在训练阶段的诊断过程中,我们确保机器正在学习“黄金标准”,这将一致而客观地应用于所有后续诊断,使其更加可预测和可靠。考虑到数字病理学的未来,CAD系统必须产生有效和准确的临床数据。为了这种效果,仍然存在许多障碍,包括标准化以及更多研究寻求从“计算机友好”的组织学图像的客观测量的临床证据。目前最常用的染色方法是H&E(苏木和曙红),但它是非常困难的规范H&E染色过程。目前的病理学标准,类别,定义和阈值都是基于病理学家的主观观察。数字病理学是一个新兴领域,研究人员不仅应承担开发新算法的责任,而且还要了解测量定量数据的含义。

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