Automatic segmentation of histopathological slides of renal tissue using deep learning

Diagnoses in kidney disease often depend on quantification and presence of specific structures in the tissue. The progress in the field of whole-slide imaging and deep learning has opened up new possibilities for automatic analysis of histopathological slides. An initial step for renal tissue assessment is the differentiation and segmentation of relevant tissue structures in kidney specimens. We propose a method for segmentation of renal tissue using convolutional neural networks. Nine structures found in (pathological) renal tissue are included in the segmentation task: glomeruli, proximal tubuli, distal tubuli, arterioles, capillaries, sclerotic glomeruli, atrophic tubuli, in ammatory infiltrate and fibrotic tissue. Fifteen whole slide images of normal cortex originating from tumor nephrectomies were collected at the Radboud University Medical Center, Nijmegen, The Netherlands. The nine classes were sparsely annotated by a PhD student, experienced in the field of renal histopathology (MH). Experiments were performed with three different network architectures: a fully convolutional network, a multi-scale fully convolutional network and a U-net. We assessed the added benefit of combining the networks into an ensemble. We performed four-fold cross validation and report the average pixel accuracy per annotation for each class. Results show that convolutional neural net- works are able to accurately perform segmentation tasks in renal tissue, with accuracies of 90% for most classes.

[1]  Trevor Darrell,et al.  Fully Convolutional Networks for Semantic Segmentation , 2017, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[2]  A. Madabhushi,et al.  Histopathological Image Analysis: A Review , 2009, IEEE Reviews in Biomedical Engineering.

[3]  Thomas Brox,et al.  U-Net: Convolutional Networks for Biomedical Image Segmentation , 2015, MICCAI.

[4]  A. Ruifrok,et al.  Quantification of histochemical staining by color deconvolution. , 2001, Analytical and quantitative cytology and histology.

[5]  Patrice Y. Simard,et al.  Best practices for convolutional neural networks applied to visual document analysis , 2003, Seventh International Conference on Document Analysis and Recognition, 2003. Proceedings..

[6]  Hao Chen,et al.  Gland segmentation in colon histology images: The glas challenge contest , 2016, Medical Image Anal..

[7]  Bram van Ginneken,et al.  A survey on deep learning in medical image analysis , 2017, Medical Image Anal..