| Literature DB >> 33321713 |
Miroslav Jirik1,2, Ivan Gruber1, Vladimira Moulisova2, Claudia Schindler3, Lenka Cervenkova2, Richard Palek2,4, Jachym Rosendorf2,4, Janine Arlt3, Lukas Bolek2, Jiri Dejmek2, Uta Dahmen3, Milos Zelezny1, Vaclav Liska2,4.
Abstract
Decellularized tissue is an important source for biological tissue engineering. Evaluation of the quality of decellularized tissue is performed using scanned images of hematoxylin-eosin stained (H&E) tissue sections and is usually dependent on the observer. The first step in creating a tool for the assessment of the quality of the liver scaffold without observer bias is the automatic segmentation of the whole slide image into three classes: the background, intralobular area, and extralobular area. Such segmentation enables to perform the texture analysis in the intralobular area of the liver scaffold, which is crucial part in the recellularization procedure. Existing semi-automatic methods for general segmentation (i.e., thresholding, watershed, etc.) do not meet the quality requirements. Moreover, there are no methods available to solve this task automatically. Given the low amount of training data, we proposed a two-stage method. The first stage is based on classification of simple hand-crafted descriptors of the pixels and their neighborhoods. This method is trained on partially annotated data. Its outputs are used for training of the second-stage approach, which is based on a convolutional neural network (CNN). Our architecture inspired by U-Net reaches very promising results, despite a very low amount of the training data. We provide qualitative and quantitative data for both stages. With the best training setup, we reach 90.70% recognition accuracy.Entities:
Keywords: H&E; convolutional neural networks; decellularization; liver; semantic segmentation; tissue engineering
Mesh:
Year: 2020 PMID: 33321713 PMCID: PMC7764590 DOI: 10.3390/s20247063
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576