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组织病理学中的人工智能——从图像分析到自动诊断。

AI (artificial intelligence) in histopathology--from image analysis to automated diagnosis.

作者信息

Kayser Klaus, Görtler Jürgen, Bogovac Milica, Bogovac Aleksandar, Goldmann Torsten, Vollmer Ekkehard, Kayser Gian

机构信息

UICC-TPCC, Institute of Pathology, Charite, Berlin, Germany.

出版信息

Folia Histochem Cytobiol. 2009 Jan;47(3):355-61. doi: 10.2478/v10042-009-0087-y.

Abstract

The technological progress in digitalization of complete histological glass slides has opened a new door in tissue--based diagnosis. The presentation of microscopic images as a whole in a digital matrix is called virtual slide. A virtual slide allows calculation and related presentation of image information that otherwise can only be seen by individual human performance. The digital world permits attachments of several (if not all) fields of view and the contemporary visualization on a screen. The presentation of all microscopic magnifications is possible if the basic pixel resolution is less than 0.25 microns. To introduce digital tissue--based diagnosis into the daily routine work of a surgical pathologist requires a new setup of workflow arrangement and procedures. The quality of digitized images is sufficient for diagnostic purposes; however, the time needed for viewing virtual slides exceeds that of viewing original glass slides by far. The reason lies in a slower and more difficult sampling procedure, which is the selection of information containing fields of view. By application of artificial intelligence, tissue--based diagnosis in routine work can be managed automatically in steps as follows: 1. The individual image quality has to be measured, and corrected, if necessary. 2. A diagnostic algorithm has to be applied. An algorithm has be developed, that includes both object based (object features, structures) and pixel based (texture) measures. 3. These measures serve for diagnosis classification and feedback to order additional information, for example in virtual immunohistochemical slides. 4. The measures can serve for automated image classification and detection of relevant image information by themselves without any labeling. 5. The pathologists' duty will not be released by such a system; to the contrary, it will manage and supervise the system, i.e., just working at a "higher level". Virtual slides are already in use for teaching and continuous education in anatomy and pathology. First attempts to introduce them into routine work have been reported. Application of AI has been established by automated immunohistochemical measurement systems (EAMUS, www.diagnomX.eu). The performance of automated diagnosis has been reported for a broad variety of organs at sensitivity and specificity levels >85%). The implementation of a complete connected AI supported system is in its childhood. Application of AI in digital tissue--based diagnosis will allow the pathologists to work as supervisors and no longer as primary "water carriers". Its accurate use will give them the time needed to concentrating on difficult cases for the benefit of their patients.

摘要

完整组织学玻璃切片数字化的技术进步为基于组织的诊断打开了一扇新的大门。在数字矩阵中以整体形式呈现微观图像被称为虚拟切片。虚拟切片允许对图像信息进行计算和相关呈现,而这些信息原本只能通过个人操作才能看到。数字世界允许附加多个(如果不是全部)视野并在屏幕上同时显示。如果基本像素分辨率小于0.25微米,就可以呈现所有微观放大倍数。要将基于数字组织的诊断引入外科病理学家的日常工作,需要重新设置工作流程安排和程序。数字化图像的质量足以用于诊断目的;然而,查看虚拟切片所需的时间远远超过查看原始玻璃切片的时间。原因在于采样过程更慢且更困难,即选择包含信息的视野。通过应用人工智能,基于组织的日常诊断工作可以按以下步骤自动管理:1. 必须测量并在必要时校正单个图像质量。2. 必须应用诊断算法。已经开发了一种算法,该算法包括基于对象(对象特征、结构)和基于像素(纹理)的测量。3. 这些测量用于诊断分类并反馈以订购额外信息,例如在虚拟免疫组织化学切片中。4. 这些测量本身可以用于自动图像分类和检测相关图像信息,无需任何标记。5. 这样的系统不会免除病理学家的职责;相反,它将管理和监督系统,即只是在“更高层面”工作。虚拟切片已经用于解剖学和病理学的教学和继续教育。已经有将它们引入日常工作的首次尝试的报道。人工智能的应用已通过自动免疫组织化学测量系统(EAMUS,www.diagnomX.eu)得以确立。已经报道了在多种器官上自动化诊断的性能,灵敏度和特异性水平均>85%)。完整的连接人工智能支持系统的实施尚处于起步阶段。人工智能在基于数字组织的诊断中的应用将使病理学家能够担任监督者,而不再是主要的“送水工”。其准确使用将为他们提供专注于疑难病例所需的时间,从而造福患者。

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