Deep Learning for Image Analysis in Kidney Care.

Journal: Advances in kidney disease and health
Published Date:

Abstract

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.

Authors

  • Hanjie Zhang
    Anshun University School of Mathematics and Computer Science, Anshun, Guizhou 561300, China.
  • Max Botler
    Fresenius Medical Care, Berlin, Germany.
  • Jeroen P Kooman
    Department of Internal Medicine, Division of Nephrology, University Hospital Maastricht, Maastricht, The Netherlands.