Zhang Hanjie, Botler Max, Kooman Jeroen P
Renal Research Institute, New York, NY.
Fresenius Medical Care, Berlin, Germany.
Adv Kidney Dis Health. 2023 Jan;30(1):25-32. doi: 10.1053/j.akdh.2022.11.003. Epub 2022 Dec 14.
Analysis of medical images, such as radiological or tissue specimens, is an indispensable part of medical diagnostics. Conventionally done manually, the process may sometimes be time-consuming and prone to interobserver variability. Image classification and segmentation by deep learning strategies, predominantly convolutional neural networks, may provide a significant advance in the diagnostic process. In renal medicine, most evidence has been generated around the radiological assessment of renal abnormalities and histological analysis of renal biopsy specimens' segmentation. In this article, the basic principles of image analysis by convolutional neural networks, brief descriptions of convolutional neural networks, and their system architecture for image analysis are discussed, in combination with examples regarding their use in image analysis in nephrology.
医学图像分析,如放射学图像或组织标本分析,是医学诊断中不可或缺的一部分。传统上,该过程是手动完成的,有时可能耗时且容易出现观察者间的差异。通过深度学习策略,主要是卷积神经网络进行图像分类和分割,可能会在诊断过程中取得重大进展。在肾脏医学领域,大多数证据来自于肾脏异常的放射学评估以及肾活检标本分割的组织学分析。本文结合卷积神经网络在肾脏病图像分析中的应用实例,讨论了卷积神经网络图像分析的基本原理、卷积神经网络的简要描述及其图像分析系统架构。