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首页> 外文期刊>Histopathology: Official Journal of the British Division of the International Academy of Pathology >Artificial intelligence and algorithmic computational pathology: an introduction with renal allograft examples
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Artificial intelligence and algorithmic computational pathology: an introduction with renal allograft examples

机译:人工智能和算法计算病理:肾同种异体移植例的介绍

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Whole slide imaging, which is an important technique in the field of digital pathology, has recently been the subject of increased interest and avenues for utilisation, and with more widespread whole slide image (WSI) utilisation, there will also be increased interest in and implementation of image analysis (IA) techniques. IA includes artificial intelligence (AI) and targeted or hypothesis-driven algorithms. In the overall pathology field, the number of citations related to these topics has increased in recent years. Renal pathology is one anatomical pathology subspecialty that has utilised WSIs and IA algorithms; it can be argued that renal transplant pathology could be particularly suited for whole slide imaging and IA, as renal transplant pathology is frequently classified by use of the semiquantitative Banff classification of renal allograft pathology. Hypothesis-driven/targeted algorithms have been used in the past for the assessment of a variety of features in the kidney (e.g. interstitial fibrosis, tubular atrophy, inflammation); in recent years, the amount of research has particularly increased in the area of AI/machine learning for the identification of glomeruli, for histological segmentation, and for other applications. Deep learning is the form of machine learning that is most often used for such AI approaches to the 'big data' of pathology WSIs, and deep learning methods such as artificial neural networks (ANNs)/convolutional neural networks (CNNs) are utilised. Unsupervised and supervised AI algorithms can be employed to accomplish image or semantic classification. In this review, AI and other IA algorithms applied to WSIs are discussed, and examples from renal pathology are covered, with an emphasis on renal transplant pathology.
机译:全玻片成像是数字病理学领域的一项重要技术,最近已成为人们越来越感兴趣的主题和使用途径,随着全玻片图像(WSI)的使用越来越广泛,图像分析(IA)技术的应用也将越来越受关注。IA包括人工智能(AI)和目标或假设驱动的算法。在整个病理学领域,与这些主题相关的引文数量近年来有所增加。肾脏病理学是利用WSIs和IA算法的解剖学病理学子专业;可以认为,肾移植病理学可能特别适合于全玻片成像和IA,因为肾移植病理学通常通过肾移植病理学的半定量Banff分类进行分类。假设驱动/靶向算法过去曾用于评估肾脏的各种特征(例如间质纤维化、肾小管萎缩、炎症);近年来,人工智能/机器学习在肾小球识别、组织学分割和其他应用领域的研究尤其增多。深度学习是机器学习的一种形式,最常用于病理学WSIs的“大数据”人工智能方法,并使用人工神经网络(ANN)/卷积神经网络(CNN)等深度学习方法。无监督和有监督的人工智能算法可以用来完成图像或语义分类。在这篇综述中,我们讨论了应用于WSIs的AI和其他IA算法,并介绍了肾脏病理学的例子,重点介绍了肾移植病理学。

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