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Implementing Deep Learning Algorithms in Anatomic Pathology Using Open-source Deep Learning Libraries

机译:利用开源深度学习库实现解剖病理学中的深度学习算法

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The application of artificial intelligence technologies to anatomic pathology has the potential to transform the practice of pathology, but, despite this, many pathologists are unfamiliar with how these models are created, trained, and evaluated. In addition, many pathologists may feel that they do not possess the necessary skills to allow them to embark on research into this field. This article aims to act as an introductory tutorial to illustrate how to create, train, and evaluate simple artificial learning models (neural networks) on histopathology data sets in the programming languagePythonusing the popular freely available, open-source librariesKeras,TensorFlow,PyTorch, andDetecto. Furthermore, it aims to introduce pathologists to commonly used terms and concepts used in artificial intelligence.
机译:人工智能技术在解剖病理学中的应用有可能改变病理学的实践,但尽管如此,许多病理学家不熟悉这些模型是如何创建,培训和评估的。 此外,许多病理学家可能会觉得他们没有必要的技能,让他们踏上研究这个领域。 本文旨在充当介绍性教程,以说明如何在编程的语言自由,开源Librarieskeras,Tensorflow,Pytorch,Anddetecto的编程语言类型中创建,列车和评估简单的人工学习模型(神经网络)上的简单人工学习模型(神经网络) 。 此外,它旨在向人工智能中使用的常用条款和概念引入病理学家。

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